source_code
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function_name
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messages
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def x(pattern): return pattern[0, 0] * 2 ** 0 + pattern[0, 1] * 2 ** 1 + pattern[0, 2 ] * 2 ** 2 + pattern[1, 0] * 2 ** 3 + pattern[1, 1] * 2 ** 4 + pattern[ 1, 2] * 2 ** 5 + pattern[2, 0] * 2 ** 6 + pattern[2, 1 ] * 2 ** 7 + pattern[2, 2] * 2 ** 8
index_of
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(pattern):\n return pattern[0, 0] * 2 ** 0 + pattern[0, 1] * 2 ** 1 + pattern[0, 2\n ] * 2 ** 2 + pattern[1, 0] * 2 ** 3 + pattern[1, 1] * 2 ** 4 + pa...
def x(value, pattern, care=np.ones((3, 3), bool)): def x(index, p, i, j): return (index & 2 ** p > 0) == pattern[i, j] or not care[i, j] return np.array([(value if fn(i, 0, 0, 0) and fn(i, 1, 0, 1) and fn(i, 2, 0, 2) and fn(i, 3, 1, 0) and fn(i, 4, 1, 1) and fn(i, 5, 1, 2) and fn(i, 6,...
make_table
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(value, pattern, care=np.ones((3, 3), bool)):\n\n def x(index, p, i, j):\n return (index & 2 ** p > 0) == pattern[i, j] or not care[i, j]\n return ...
def x(image, mask=None): global branchpoints_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, branchpoints_table, False, 1) if not mask is None: result[~mask] = i...
branchpoints
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n global branchpoints_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(bool).cop...
def x(image, mask=None): global branchings_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False kernel = np.array([[1, 2, 4], [8, 16, 32], [64, 128, 256]]) indexer = scind.convolve(masked_image.astype(int), ker...
branchings
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n global branchings_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(bool).copy(...
def x(image, mask=None, iterations=1): global bridge_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, bridge_table, False, iterations) if not mask is None: result...
bridge
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global bridge_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(b...
def x(image, mask=None, iterations=1): global clean_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, clean_table, False, iterations) if not mask is None: result[~...
clean
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global clean_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(bo...
def x(image, mask=None, iterations=1): global diag_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, diag_table, False, iterations) if not mask is None: result[~ma...
diag
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global diag_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(boo...
def x(image, mask=None): global endpoints_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, endpoints_table, False, 1) if not mask is None: result[~mask] = image[~...
endpoints
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n global endpoints_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(bool).copy()...
def x(image, mask=None, iterations=1): global fill_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = True result = table_lookup(masked_image, fill_table, True, iterations) if not mask is None: result[~mask...
fill
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global fill_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(boo...
def x(image, mask=None, iterations=1): global fill4_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = True result = table_lookup(masked_image, fill4_table, True, iterations) if not mask is None: result[~ma...
fill4
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global fill4_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(bo...
def x(image, mask=None, iterations=1): global hbreak_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, hbreak_table, False) if not mask is None: result[~mask] = im...
hbreak
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global hbreak_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(b...
def x(image, mask=None, iterations=1): global vbreak_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, vbreak_table, False) if not mask is None: result[~mask] = im...
vbreak
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global vbreak_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(b...
def x(image, mask=None, iterations=1): global majority_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, majority_table, False, iterations) if not mask is None: re...
majority
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global majority_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype...
def x(image, mask=None, iterations=1): global remove_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, remove_table, False) if not mask is None: result[~mask] = im...
remove
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global remove_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(b...
def x(image, mask=None, iterations=1): global spur_table_1, spur_table_2 if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False index_i, index_j, masked_image = prepare_for_index_lookup(masked_image, False) if ...
spur
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global spur_table_1, spur_table_2\n if mask is None:\n masked_image = image\n else:\n masked_image = ...
def x(image, mask=None, iterations=1): global thicken_table if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False result = table_lookup(masked_image, thicken_table, False, iterations) if not mask is None: resu...
thicken
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global thicken_table\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype(...
def x(image, mask=None, iterations=1): global thin_table, eight_connect if thin_table is None: thin_table = np.zeros((2, 512), bool) for i in range(512): if i & 16 == 0: continue pat = pattern_of(i & ~16) ipat = pat.astype(int) if s...
thin
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, iterations=1):\n global thin_table, eight_connect\n if thin_table is None:\n thin_table = np.zeros((2, 512), bool)\n for ...
def x(labels): max_label = np.max(labels) new_labels = np.zeros(np.array(labels.shape) + 2, labels.dtype) new_labels[1:-1, 1:-1] = labels labels = new_labels adjacent_mask = adjacent(labels) adjacent_i, adjacent_j = np.argwhere(adjacent_mask).transpose() count = len(adjacent_i) if count ...
find_neighbors
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels):\n max_label = np.max(labels)\n new_labels = np.zeros(np.array(labels.shape) + 2, labels.dtype)\n new_labels[1:-1, 1:-1] = labels\n labels ...
def x(labels): colors = color_labels(labels, True) rlabels = labels.ravel() order = np.lexsort((rlabels, colors.ravel())) different = np.hstack([[rlabels[order[0]] > 0], rlabels[order[1:]] != rlabels[order[:-1]]]) rcolor = colors.ravel() rcolor[order] = np.cumsum(different).astype(colors...
distance_color_labels
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels):\n colors = color_labels(labels, True)\n rlabels = labels.ravel()\n order = np.lexsort((rlabels, colors.ravel()))\n different = np.hstack([...
def x(labels, distance_transform=False): if distance_transform: i, j = scind.distance_transform_edt(labels == 0, return_distances= False, return_indices=True) dt_labels = labels[i, j] else: dt_labels = labels v_count, v_index, v_neighbor = find_neighbors(dt_labels) v_...
color_labels
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels, distance_transform=False):\n if distance_transform:\n i, j = scind.distance_transform_edt(labels == 0, return_distances=\n False, ...
def x(image, mask=None, ordering=None): global eight_connect if mask is None: masked_image = image else: masked_image = image.astype(bool).copy() masked_image[~mask] = False table = make_table(True, np.array([[0, 0, 0], [0, 1, 0], [0, 0, 0]], bool), np.array([[0, 0, 0], [...
skeletonize
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, ordering=None):\n global eight_connect\n if mask is None:\n masked_image = image\n else:\n masked_image = image.astype...
def x(labels): colors = color_labels(labels) max_color = np.max(colors) if max_color == 0: return labels result = np.zeros(labels.shape, labels.dtype) for i in range(1, max_color + 1): mask = skeletonize(colors == i) result[mask] = labels[mask] return result
skeletonize_labels
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels):\n colors = color_labels(labels)\n max_color = np.max(colors)\n if max_color == 0:\n return labels\n result = np.zeros(labels.shape,...
def x(skeleton): bpts = branchpoints(skeleton) neighbors = scind.convolve(skeleton.astype(int), np.ones((3, 3), int), mode='constant').astype(int) neighbors[~skeleton] = 0 neighbors[skeleton] -= 1 i, j = np.mgrid[0:skeleton.shape[0], 0:skeleton.shape[1]] skeleton_minus_bpts = skeleton & ...
label_skeleton
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(skeleton):\n bpts = branchpoints(skeleton)\n neighbors = scind.convolve(skeleton.astype(int), np.ones((3, 3), int),\n mode='constant').astype(int)...
def x(labels, indices=None): global __skel_length_table if __skel_length_table is None: tbl = np.zeros(512, np.float32) for ii in range(-1, 2): for jj in range(-1, 2): if ii == 0 and jj == 0: continue idx = 2 ** (ii + 1 + (jj + 1) *...
skeleton_length
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels, indices=None):\n global __skel_length_table\n if __skel_length_table is None:\n tbl = np.zeros(512, np.float32)\n for ii in range(-...
def x(labels): colors = color_labels(labels) max_color = np.max(colors) result = np.zeros(labels.shape) if max_color == 0: return result for i in range(1, max_color + 1): mask = colors == i result[mask] = scind.distance_transform_edt(mask)[mask] return result
distance_to_edge
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels):\n colors = color_labels(labels)\n max_color = np.max(colors)\n result = np.zeros(labels.shape)\n if max_color == 0:\n return result...
def x(image, mask=None, structure=None, ties_are_ok=False): global eight_connect if not ties_are_ok: result = regional_maximum(image, mask, structure, True) if not np.any(result): return result distance = scind.distance_transform_edt(result) labels, label_count = scin...
regional_maximum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None, structure=None, ties_are_ok=False):\n global eight_connect\n if not ties_are_ok:\n result = regional_maximum(image, mask, struct...
def x(i, j): if len(i) == 0: return i i1 = np.hstack((i, j)) j1 = np.hstack((j, i)) order = np.lexsort((j1, i1)) i = np.ascontiguousarray(i1[order], np.uint32) j = np.ascontiguousarray(j1[order], np.uint32) counts = np.ascontiguousarray(np.bincount(i.astype(int)), np.uint32) inde...
all_connected_components
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(i, j):\n if len(i) == 0:\n return i\n i1 = np.hstack((i, j))\n j1 = np.hstack((j, i))\n order = np.lexsort((j1, i1))\n i = np.ascontiguou...
def x(i, j): if len(i) == 0: return np.array([], int), np.array([], j.dtype), np.array([], j.dtype) index = np.lexsort((j, i)) i = i[index] j = j[index] r_to_i = np.sort(np.unique(i)) i_to_r_off = np.min(i) i_to_r = np.zeros(np.max(i) + 1 - i_to_r_off, int) i_to_r[r_to_i - i_to_r...
pairwise_permutations
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(i, j):\n if len(i) == 0:\n return np.array([], int), np.array([], j.dtype), np.array([], j.dtype)\n index = np.lexsort((j, i))\n i = i[index]\n...
def x(image, labels, footprint): assert np.all(footprint.shape) & 1 == 1 footprint = footprint != 0 footprint_extent = (np.array(footprint.shape) - 1) // 2 if np.all(footprint_extent == 0): return labels > 0 result = (labels > 0).copy() big_labels = np.zeros(np.array(labels.shape) + foot...
is_local_maximum
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, labels, footprint):\n assert np.all(footprint.shape) & 1 == 1\n footprint = footprint != 0\n footprint_extent = (np.array(footprint.shape) - 1)...
def x(labels, resolution=100, weights=None): if weights is None: weights = np.ones(labels.shape) maxlabel = labels.max() ci, cj = centers_of_labels(labels) j, i = np.meshgrid(np.arange(labels.shape[0]), np.arange(labels.shape[1])) di = i[labels > 0] - ci[labels[labels > 0] - 1] dj = j[la...
angular_distribution
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels, resolution=100, weights=None):\n if weights is None:\n weights = np.ones(labels.shape)\n maxlabel = labels.max()\n ci, cj = centers_of_...
def x(chulls, counts, indexes): if len(counts) == 0: return np.zeros(0) save_counts = counts counts = np.atleast_1d(counts) indexes = np.atleast_1d(indexes) chull_idx = np.hstack(([0], np.cumsum(counts[:-1]))) save_chull_idx = chull_idx chull_pts = chulls[:, 1:].astype(float) ant...
feret_diameter
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(chulls, counts, indexes):\n if len(counts) == 0:\n return np.zeros(0)\n save_counts = counts\n counts = np.atleast_1d(counts)\n indexes = np...
def x(p1, v, p2): p1x = p1[:, 1] p1y = p1[:, 0] p2x = p2[:, 1] p2y = p2[:, 0] vx = v[:, 1] vy = v[:, 0] Dx = vx - p2x Dy = vy - p2y Dvp1x = p1x - vx Dvp1y = p1y - vy return Dvp1x * Dx + Dvp1y * Dy > 0
is_obtuse
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(p1, v, p2):\n p1x = p1[:, 1]\n p1y = p1[:, 0]\n p2x = p2[:, 1]\n p2y = p2[:, 0]\n vx = v[:, 1]\n vy = v[:, 0]\n Dx = vx - p2x\n Dy = vy...
def x(labels, idxs): idxs = np.atleast_1d(idxs) if len(idxs) == 0: return np.zeros((0, 2), int), np.zeros(0, int), np.zeros(0, int) end_label = max(np.max(labels), np.max(idxs)) + 1 chosen_labels = np.zeros(int(end_label), bool) chosen_labels[idxs] = True traversal_order = np.array(((1, ...
get_outline_pts
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels, idxs):\n idxs = np.atleast_1d(idxs)\n if len(idxs) == 0:\n return np.zeros((0, 2), int), np.zeros(0, int), np.zeros(0, int)\n end_label...
def x(x): M, N = x.shape Mean = x.mean(0) y = x - Mean cov = numpy.dot(y.transpose(), y) / (M - 1) V, PC = numpy.linalg.eig(cov) order = (-V).argsort() coeff = PC[:, order] return coeff
princomp
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x):\n M, N = x.shape\n Mean = x.mean(0)\n y = x - Mean\n cov = numpy.dot(y.transpose(), y) / (M - 1)\n V, PC = numpy.linalg.eig(cov)\n order ...
def x(n): i, j = [x.flatten() for x in np.mgrid[0:n, 0:n]] i, j = [x[i != j] for x in (i, j)] order = np.lexsort((j, i, np.maximum(i, j))) return np.column_stack((i[order], j[order]))
all_pairs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(n):\n i, j = [x.flatten() for x in np.mgrid[0:n, 0:n]]\n i, j = [x[i != j] for x in (i, j)]\n order = np.lexsort((j, i, np.maximum(i, j)))\n return...
def x(image, mask=None): image = np.array(image, float) if np.product(image.shape) == 0: return image if mask is None: minval = np.min(image) maxval = np.max(image) if minval == maxval: if minval < 0: return np.zeros_like(image) elif mi...
stretch
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n image = np.array(image, float)\n if np.product(image.shape) == 0:\n return image\n if mask is None:\n minval = np.m...
def x(data, mask, radius, percent=50): if mask is None: mask = np.ones(data.shape, dtype=bool) if np.all(~mask): return data.copy() if not np.issubdtype(data.dtype, np.int) or np.min(data) < 0 or np.max(data ) > 255: ranked_data, translation = rank_order(data[mask], nbins=255...
median_filter
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(data, mask, radius, percent=50):\n if mask is None:\n mask = np.ones(data.shape, dtype=bool)\n if np.all(~mask):\n return data.copy()\n ...
def x(image, mask, sigma_spatial, sigma_range, sampling_spatial=None, sampling_range=None): if sampling_spatial is None: sampling_spatial = sigma_spatial / 2.0 if sampling_range is None: sampling_range = sigma_range / 2.0 if np.all(np.logical_not(mask)): return image masked_i...
bilateral_filter
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask, sigma_spatial, sigma_range, sampling_spatial=None,\n sampling_range=None):\n if sampling_spatial is None:\n sampling_spatial = sigma_...
def x(image, mask, size, sigma): half_size = size // 2 i, j = np.mgrid[-half_size:half_size + 1, -half_size:half_size + 1].astype( float) / float(sigma) distance = (i ** 2 + j ** 2) / 2 gaussian = np.exp(-distance) gaussian = gaussian / np.sum(gaussian) log = (distance - 1) * gaussian ...
laplacian_of_gaussian
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask, size, sigma):\n half_size = size // 2\n i, j = np.mgrid[-half_size:half_size + 1, -half_size:half_size + 1].astype(\n float) / float(...
def x(image, mask, sigma, low_threshold, high_threshold): fsmooth = lambda x: gaussian_filter(x, sigma, mode='constant') smoothed = smooth_with_function_and_mask(image, fsmooth, mask) jsobel = convolve(smoothed, [[-1, 0, 1], [-2, 0, 2], [-1, 0, 1]]) isobel = convolve(smoothed, [[-1, -2, -1], [0, 0, 0], ...
canny
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask, sigma, low_threshold, high_threshold):\n fsmooth = lambda x: gaussian_filter(x, sigma, mode='constant')\n smoothed = smooth_with_function_an...
def x(image, mask=None): result = np.zeros(image.shape) if mask is None: mask = np.ones(image.shape, bool) big_mask = binary_erosion(mask, generate_binary_structure(2, 2), border_value=0) result[big_mask == False] = 0 q00 = image[:, :][big_mask] q11 = image[1:, 1:][big_mask[:-1, ...
roberts
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n result = np.zeros(image.shape)\n if mask is None:\n mask = np.ones(image.shape, bool)\n big_mask = binary_erosion(mask, ge...
def x(image, mask=None): return np.sqrt(hsobel(image, mask) ** 2 + vsobel(image, mask) ** 2)
sobel
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n return np.sqrt(hsobel(image, mask) ** 2 + vsobel(image, mask) ** 2)\n", "role": "user" }, { "content": "sobel", "role":...
def x(image, mask=None): return np.sqrt(hprewitt(image, mask) ** 2 + vprewitt(image, mask) ** 2)
prewitt
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n return np.sqrt(hprewitt(image, mask) ** 2 + vprewitt(image, mask) ** 2)\n", "role": "user" }, { "content": "prewitt", "...
def x(image, mask=None): if mask is None: mask = np.ones(image.shape, bool) big_mask = binary_erosion(mask, generate_binary_structure(2, 2), border_value=0) result = np.abs(convolve(image, np.array([[1, 1, 1], [0, 0, 0], [-1, -1, -1]]).astype(float) / 3.0)) result[big_mask == Fal...
hprewitt
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, mask=None):\n if mask is None:\n mask = np.ones(image.shape, bool)\n big_mask = binary_erosion(mask, generate_binary_structure(2, 2),\n ...
def x(image, labels, frequency, theta): nobjects = np.max(labels) if nobjects == 0: return image centers = centers_of_labels(labels) areas = fix(scind.sum(np.ones(image.shape), labels, np.arange(nobjects, dtype=np.int32) + 1)) mask = labels > 0 i, j = np.mgrid[0:image.shape[0], 0...
gabor
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, labels, frequency, theta):\n nobjects = np.max(labels)\n if nobjects == 0:\n return image\n centers = centers_of_labels(labels)\n are...
def x(image, min_radius, max_radius, mask=None): se = np.array([[False, True, False], [True, True, True], [False, True, False]]) inverted_image = image.max() - image previous_reconstructed_image = inverted_image eroded_image = inverted_image smoothed_image = np.zeros(image.shape) for i ...
enhance_dark_holes
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, min_radius, max_radius, mask=None):\n se = np.array([[False, True, False], [True, True, True], [False, True, \n False]])\n inverted_image =...
def x(image, min_radius, max_radius, mask=None): se = np.array([[False, True, False], [True, True, True], [False, True, False]]) inverted_image = image.max() - image previous_opened_image = image eroded_image = image selected_granules_image = np.zeros(image.shape) for i in range(max_rad...
granulometry_filter
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, min_radius, max_radius, mask=None):\n se = np.array([[False, True, False], [True, True, True], [False, True, \n False]])\n inverted_image =...
def x(image, radius, mask=None): crad = int(np.ceil(radius - 0.5)) x, y = np.mgrid[-crad:crad + 1, -crad:crad + 1].astype(float) maxxy = np.maximum(abs(x), abs(y)) minxy = np.minimum(abs(x), abs(y)) m1 = (radius ** 2 < (maxxy + 0.5) ** 2 + (minxy - 0.5) ** 2) * (minxy - 0.5 ) + (radius ** 2 ...
circular_average_filter
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, radius, mask=None):\n crad = int(np.ceil(radius - 0.5))\n x, y = np.mgrid[-crad:crad + 1, -crad:crad + 1].astype(float)\n maxxy = np.maximum(ab...
def x(): om = np.array([[1, 0, 0, 0], [0, 1, 0, 0]]) tm = np.array([[1, 0, 1, 0], [0, 1, 0, 1], [0, 0, 1, 0], [0, 0, 0, 1]]) return KalmanState(om, tm)
velocity_kalman_model
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x():\n om = np.array([[1, 0, 0, 0], [0, 1, 0, 0]])\n tm = np.array([[1, 0, 1, 0], [0, 1, 0, 1], [0, 0, 1, 0], [0, 0, 0, 1]])\n return KalmanState(om, tm...
def x(): om = np.array([[1, 0, 0, 0], [0, 1, 0, 0]]) tm = np.array([[1, 0, -1, 0], [0, 1, 0, -1], [0, 0, 1, 0], [0, 0, 0, 1]]) return KalmanState(om, tm)
reverse_velocity_kalman_model
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x():\n om = np.array([[1, 0, 0, 0], [0, 1, 0, 0]])\n tm = np.array([[1, 0, -1, 0], [0, 1, 0, -1], [0, 0, 1, 0], [0, 0, 0, 1]])\n return KalmanState(om, ...
def x(kalman_state, old_indices, coordinates, q, r): assert isinstance(kalman_state, KalmanState) old_indices = np.array(old_indices) if len(old_indices) == 0: return KalmanState(kalman_state.observation_matrix, kalman_state. translation_matrix) matching = old_indices != -1 new_i...
kalman_filter
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(kalman_state, old_indices, coordinates, q, r):\n assert isinstance(kalman_state, KalmanState)\n old_indices = np.array(old_indices)\n if len(old_indic...
def x(image, angle, decay, sigma): normalized = image - np.mean(image) rotated = scind.rotate(normalized, -angle) smoothed = scind.gaussian_filter1d(rotated, sigma ) if sigma > 0 else rotated result_fwd = smoothed.copy() for i in range(1, result_fwd.shape[0]): result_fwd[i] += result...
line_integration
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, angle, decay, sigma):\n normalized = image - np.mean(image)\n rotated = scind.rotate(normalized, -angle)\n smoothed = scind.gaussian_filter1d(r...
def x(img, sigma, mask=None): if mask is None: mask = np.ones(img.shape, bool) else: img = img.copy() img[~mask] = 0 gmask = scind.gaussian_filter(mask.astype(float), sigma, mode='constant') img_mean = scind.gaussian_filter(img, sigma, mode='constant') / gmask img_squared = s...
variance_transform
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(img, sigma, mask=None):\n if mask is None:\n mask = np.ones(img.shape, bool)\n else:\n img = img.copy()\n img[~mask] = 0\n gmask ...
def x(x): assert x.ndim == 3 assert x.shape[1] == x.shape[2] c = np.array([[(cofactor_n(x, j, i) * (1 - (i + j) % 2 * 2)) for j in range(x.shape[1])] for i in range(x.shape[1])]).transpose(2, 0, 1) return c / det_n(x)[:, np.newaxis, np.newaxis]
inv_n
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x):\n assert x.ndim == 3\n assert x.shape[1] == x.shape[2]\n c = np.array([[(cofactor_n(x, j, i) * (1 - (i + j) % 2 * 2)) for j in\n range(x.sh...
def x(x): assert x.ndim == 3 assert x.shape[1] == x.shape[2] if x.shape[1] == 1: return x[:, 0, 0] result = np.zeros(x.shape[0]) for permutation in permutations(np.arange(x.shape[1])): sign = parity(permutation) result += np.prod([x[:, i, permutation[i]] for i in range(x.shap...
det_n
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x):\n assert x.ndim == 3\n assert x.shape[1] == x.shape[2]\n if x.shape[1] == 1:\n return x[:, 0, 0]\n result = np.zeros(x.shape[0])\n fo...
def x(x): order = np.lexsort((x,)) hit = np.zeros(len(x), bool) p = 0 for j in range(len(x)): if not hit[j]: cycle = 1 i = order[j] while i != j: hit[i] = True i = order[i] cycle += 1 p += cycle - 1 ...
parity
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x):\n order = np.lexsort((x,))\n hit = np.zeros(len(x), bool)\n p = 0\n for j in range(len(x)):\n if not hit[j]:\n cycle = 1\n ...
def x(x, i, j): m = x.shape[1] mr = np.arange(m) i_idx = mr[mr != i] j_idx = mr[mr != j] return det_n(x[:, i_idx[:, np.newaxis], j_idx[np.newaxis, :]])
cofactor_n
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, i, j):\n m = x.shape[1]\n mr = np.arange(m)\n i_idx = mr[mr != i]\n j_idx = mr[mr != j]\n return det_n(x[:, i_idx[:, np.newaxis], j_idx[np.ne...
def x(x, y): if x.ndim == 2: if y.ndim == 2: return np.dot(x, y) x3 = False y3 = True nlen = y.shape[0] elif y.ndim == 2: nlen = x.shape[0] x3 = True y3 = False else: assert x.shape[0] == y.shape[0] nlen = x.shape[0] ...
dot_n
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, y):\n if x.ndim == 2:\n if y.ndim == 2:\n return np.dot(x, y)\n x3 = False\n y3 = True\n nlen = y.shape[0]\n el...
def x(x): yield list(x) x = np.array(x) a = np.arange(len(x)) while True: ak_lt_ak_next = np.argwhere(a[:-1] < a[1:]) if len(ak_lt_ak_next) == 0: raise StopIteration() k = ak_lt_ak_next[-1, 0] ak_lt_al = np.argwhere(a[k] < a) l = ak_lt_al[-1, 0] ...
permutations
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x):\n yield list(x)\n x = np.array(x)\n a = np.arange(len(x))\n while True:\n ak_lt_ak_next = np.argwhere(a[:-1] < a[1:])\n if len(ak...
def x(image, levels=256, mask=None, chunksize=CONVEX_HULL_CHUNKSIZE, pass_cutoff=16): if mask is None: img_min = np.min(image) img_max = np.max(image) else: unmasked_pixels = image[mask] if len(unmasked_pixels) == 0: return np.zeros(image.shape, image.dtype) ...
convex_hull_transform
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, levels=256, mask=None, chunksize=CONVEX_HULL_CHUNKSIZE,\n pass_cutoff=16):\n if mask is None:\n img_min = np.min(image)\n img_max = ...
def x(img, radius, nangles=None, mask=None): a = np.zeros(img.shape) m = np.zeros(img.shape) if nangles is None: nangles = int(np.pi * radius + 3.5) & ~3 for i in range(nangles): theta = 2 * np.pi * float(i) / float(nangles) x = int(np.round(radius * np.cos(theta))) y = i...
circular_hough
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(img, radius, nangles=None, mask=None):\n a = np.zeros(img.shape)\n m = np.zeros(img.shape)\n if nangles is None:\n nangles = int(np.pi * radius...
def x(image, return_hessian=True, return_eigenvalues=True, return_eigenvectors=True): hessian = np.zeros((image.shape[0], image.shape[1], 2, 2)) hessian[1:-1, :, 0, 0] = image[:-2, :] - 2 * image[1:-1, :] + image[2:, :] hessian[1:-1, 1:-1, 0, 1] = hessian[1:-1, 1:-1, 0, 1] = (image[2:, 2:] + ima...
hessian
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, return_hessian=True, return_eigenvalues=True,\n return_eigenvectors=True):\n hessian = np.zeros((image.shape[0], image.shape[1], 2, 2))\n hessi...
def x(image, gradient=1, max_iter=100, convergence=0.01, percentile=90.0): pe = np.zeros((image.shape[0] + 2, image.shape[1] + 2)) if image.shape[0] > 64 and image.shape[1] > 64: sub_image = image[::2, ::2] sub_pe = poisson_equation(sub_image, gradient=gradient * 2, max_iter=max_iter...
poisson_equation
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, gradient=1, max_iter=100, convergence=0.01, percentile=90.0):\n pe = np.zeros((image.shape[0] + 2, image.shape[1] + 2))\n if image.shape[0] > 64 a...
def x(self): if not self.has_cached_predicted_state_vec: self.p_state_vec = dot_n(self.translation_matrix, self.state_vec[:, :, np.newaxis])[:, :, 0] return self.p_state_vec
predicted_state_vec
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if not self.has_cached_predicted_state_vec:\n self.p_state_vec = dot_n(self.translation_matrix, self.state_vec[:,\n :, np.newaxis...
def x(self): if not self.has_cached_obs_vec: self.obs_vec = dot_n(self.observation_matrix, self. predicted_state_vec[:, :, np.newaxis])[:, :, 0] return self.obs_vec
predicted_obs_vec
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if not self.has_cached_obs_vec:\n self.obs_vec = dot_n(self.observation_matrix, self.\n predicted_state_vec[:, :, np.newaxis])[:,...
def x(self, old_indices): nfeatures = len(old_indices) noldfeatures = len(self.state_vec) if nfeatures > 0: self.state_vec = self.state_vec[old_indices] self.state_cov = self.state_cov[old_indices] self.noise_var = self.noise_var[old_indices] if self.has_cached_obs_vec: ...
map_frames
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, old_indices):\n nfeatures = len(old_indices)\n noldfeatures = len(self.state_vec)\n if nfeatures > 0:\n self.state_vec = self.state_vec[o...
def x(self, kept_indices, new_indices, new_state_vec, new_state_cov, new_noise_var): assert len(kept_indices) == len(self.state_vec) assert len(new_indices) == len(new_state_vec) assert len(new_indices) == len(new_state_cov) assert len(new_indices) == len(new_noise_var) if self.has_cached_obs_ve...
add_features
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kept_indices, new_indices, new_state_vec, new_state_cov,\n new_noise_var):\n assert len(kept_indices) == len(self.state_vec)\n assert len(new_in...
def x(self): c = KalmanState(self.observation_matrix, self.translation_matrix) c.state_vec = self.state_vec.copy() c.state_cov = self.state_cov.copy() c.noise_var = self.noise_var.copy() c.state_noise = self.state_noise.copy() c.state_noise_idx = self.state_noise_idx.copy() return c
deep_copy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n c = KalmanState(self.observation_matrix, self.translation_matrix)\n c.state_vec = self.state_vec.copy()\n c.state_cov = self.state_cov.copy()...
def x(x, percents): x = np.array(x).flatten() listx = np.sort(x) xpcts = [] lenlistx = len(listx) refs = [] for i in range(0, lenlistx): r = 100 * ((0.5 + i) / lenlistx) refs.append(r) rpcts = [] for p in percents: if p < refs[0]: rpcts.append(listx[0]...
prcntiles
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, percents):\n x = np.array(x).flatten()\n listx = np.sort(x)\n xpcts = []\n lenlistx = len(listx)\n refs = []\n for i in range(0, lenlistx)...
def x(data): pct = prcntiles(np.array(data), [1, 20, 80, 99]) upper = pct[3] - pct[2] mid = pct[2] - pct[1] lower = pct[1] - pct[0] if upper > mid: uo = 1 else: uo = 0 if lower > mid: lo = 1 else: lo = 0 if uo == 1: if lo == 1: mode...
automode
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(data):\n pct = prcntiles(np.array(data), [1, 20, 80, 99])\n upper = pct[3] - pct[2]\n mid = pct[2] - pct[1]\n lower = pct[1] - pct[0]\n if upper...
def x(u): X = np.array([(1.0 - u) ** 3, 4 - 6.0 * u ** 2 + 3.0 * u ** 3, 1.0 + 3.0 * u + 3.0 * u ** 2 - 3.0 * u ** 3, u ** 3]) * (1.0 / 6) return X
spline_factors
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(u):\n X = np.array([(1.0 - u) ** 3, 4 - 6.0 * u ** 2 + 3.0 * u ** 3, 1.0 + \n 3.0 * u + 3.0 * u ** 2 - 3.0 * u ** 3, u ** 3]) * (1.0 / 6)\n return...
def x(picklist, val): assert np.all(np.sort(picklist) == picklist ), 'pick list is not ordered correctly' val = np.array(val) i_pick, i_val = np.mgrid[0:len(picklist), 0:len(val)] is_not_larger = picklist[i_pick] <= val[i_val] p = np.sum(is_not_larger, 0) return p
pick
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(picklist, val):\n assert np.all(np.sort(picklist) == picklist\n ), 'pick list is not ordered correctly'\n val = np.array(val)\n i_pick, i_val =...
def x(x, low, high): y = x.copy() y[y < low] = low y[y > high] = high return y
confine
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, low, high):\n y = x.copy()\n y[y < low] = low\n y[y > high] = high\n return y\n", "role": "user" }, { "content": "confine", "rol...
def x(x, m_y, sigma): e_y = [np.exp(1.0 / (2 * float(sigma) ** 2) * -(n - m_y) ** 2) for n in np.array(x)] y = [(1.0 / (float(sigma) * np.sqrt(2 * np.pi)) * e) for e in e_y] return np.array(y)
gauss
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, m_y, sigma):\n e_y = [np.exp(1.0 / (2 * float(sigma) ** 2) * -(n - m_y) ** 2) for n in\n np.array(x)]\n y = [(1.0 / (float(sigma) * np.sqrt(2 *...
def x(x, m_y, sigma): return gauss(x, m_y, sigma) * [(-1 / sigma ** 2 + (n - m_y) ** 2 / sigma ** 4) for n in x]
d2gauss
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, m_y, sigma):\n return gauss(x, m_y, sigma) * [(-1 / sigma ** 2 + (n - m_y) ** 2 / \n sigma ** 4) for n in x]\n", "role": "user" }, { "...
def x(x, y, px, py, mask=None): V = np.kron(spline_matrix(x, px), spline_matrix(y, py)) lenV = len(V) if mask is not None: indices = np.nonzero(mask.T.flatten()) if len(indices) > 1: indices = np.nonzero(mask.T.flatten())[1][0] newV = V.T[indices] V = newV.T ...
spline_matrix2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, y, px, py, mask=None):\n V = np.kron(spline_matrix(x, px), spline_matrix(y, py))\n lenV = len(V)\n if mask is not None:\n indices = np.nonze...
def x(x, y, z, px, py, mask=None): if mask is None: V = np.array(spline_matrix2d(x, y, px, py)) a = np.array(z.T.flatten()) pz = np.linalg.lstsq(V.T, a.T)[0].T else: V = np.array(spline_matrix2d(x, y, px, py, mask)) indices = np.nonzero(np.array(mask).T.flatten()) ...
splinefit2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x, y, z, px, py, mask=None):\n if mask is None:\n V = np.array(spline_matrix2d(x, y, px, py))\n a = np.array(z.T.flatten())\n pz = np.l...
def x(img, mask=None, mode=MODE_AUTO, thresh=2, splinepoints=5, scale=1, maxiter=40, convergence=0.001): assert img.ndim == 2, 'Image must be 2-d' assert splinepoints >= 3, 'The minimum grid size is 3x3' assert maxiter >= 1 assert mode in [MODE_AUTO, MODE_BRIGHT, MODE_DARK, MODE_GRAY ], mode...
backgr
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(img, mask=None, mode=MODE_AUTO, thresh=2, splinepoints=5, scale=1,\n maxiter=40, convergence=0.001):\n assert img.ndim == 2, 'Image must be 2-d'\n ass...
def x(img, sigma, splinepoints, scale): from PIL import Image import pylab from matplotlib.image import pil_to_array from centrosome.filter import canny import matplotlib img = Image.open(img) if img.mode == 'I;16': imgdata = np.fromstring(img.tostring(), np.uint8) imgdata.sh...
bg_compensate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(img, sigma, splinepoints, scale):\n from PIL import Image\n import pylab\n from matplotlib.image import pil_to_array\n from centrosome.filter impor...
def x(a): a = np.asanyarray(a) if a.size == 0: return np.zeros(0, a.dtype) aa = a.flatten() aa.sort() indices = np.hstack([[0], np.where(aa[:-1] != aa[1:])[0] + 1, [aa.size]]) counts = indices[1:] - indices[:-1] best_indices = indices[:-1][counts == np.max(counts)] return aa[best...
mode
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a):\n a = np.asanyarray(a)\n if a.size == 0:\n return np.zeros(0, a.dtype)\n aa = a.flatten()\n aa.sort()\n indices = np.hstack([[0], np....
def x(data, min_threshold=None, max_threshold=None, bins=256): assert min_threshold is None or max_threshold is None or min_threshold < max_threshold def x(threshold): if not min_threshold is None and threshold < min_threshold: threshold = min_threshold if not max_threshold is None ...
otsu
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(data, min_threshold=None, max_threshold=None, bins=256):\n assert min_threshold is None or max_threshold is None or min_threshold < max_threshold\n\n def...
def x(data, bins=256): data = np.atleast_1d(data) data = data[~np.isnan(data)] if len(data) == 0: return 0 elif len(data) == 1: return data[0] if bins > len(data): bins = len(data) data.sort() var = running_variance(data) + 1.0 / 512.0 rvar = np.flipud(running_var...
entropy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(data, bins=256):\n data = np.atleast_1d(data)\n data = data[~np.isnan(data)]\n if len(data) == 0:\n return 0\n elif len(data) == 1:\n ...
def x(data, min_threshold=None, max_threshold=None, bins=128): assert min_threshold is None or max_threshold is None or min_threshold < max_threshold data = np.atleast_1d(data) data = data[~np.isnan(data)] data.sort() if len(data) == 0: return 0 var = running_variance(data) rvar = np...
otsu3
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(data, min_threshold=None, max_threshold=None, bins=128):\n assert min_threshold is None or max_threshold is None or min_threshold < max_threshold\n data ...
def x(var, bins, w=None, decimate=True): if w is None: n = len(var) w = np.arange(0, n, n // bins) / float(n) if decimate: n = len(var) var = var[0:n:n // bins] score = w * np.log(var * w * np.sqrt(2 * np.pi * np.exp(1))) score[np.isnan(score)] = np.Inf return score
entropy_score
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(var, bins, w=None, decimate=True):\n if w is None:\n n = len(var)\n w = np.arange(0, n, n // bins) / float(n)\n if decimate:\n n = l...
def x(x): n = len(x) m = x.cumsum() / np.arange(1, n + 1) x_minus_mprev = x[1:] - m[:-1] x_minus_m = x[1:] - m[1:] s = (x_minus_mprev * x_minus_m).cumsum() var = s / np.arange(1, n) return np.hstack(([0], var))
running_variance
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x):\n n = len(x)\n m = x.cumsum() / np.arange(1, n + 1)\n x_minus_mprev = x[1:] - m[:-1]\n x_minus_m = x[1:] - m[1:]\n s = (x_minus_mprev * x_mi...
def x(labels): output = numpy.zeros(labels.shape, labels.dtype) lr_different = labels[1:, :] != labels[:-1, :] ud_different = labels[:, 1:] != labels[:, :-1] d1_different = labels[1:, 1:] != labels[:-1, :-1] d2_different = labels[1:, :-1] != labels[:-1, 1:] different = numpy.zeros(labels.shape, ...
outline
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels):\n output = numpy.zeros(labels.shape, labels.dtype)\n lr_different = labels[1:, :] != labels[:-1, :]\n ud_different = labels[:, 1:] != labels[...
def x(point1, point2): x1, y1 = point1 x2, y2 = point2 return math.sqrt((x1 - x2) ** 2 + (y1 - y2) ** 2)
euclidean_dist
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(point1, point2):\n x1, y1 = point1\n x2, y2 = point2\n return math.sqrt((x1 - x2) ** 2 + (y1 - y2) ** 2)\n", "role": "user" }, { "content"...
def x(labels): labels = labels.astype(int) areas = scipy.ndimage.measurements.sum(labels != 0, labels, list(range( 1, numpy.max(labels) + 1))) existing_labels = [i for i, a in enumerate(areas, 1) if a > 0] existing_areas = [a for a in areas if a > 0] existing_centers = scipy.ndimage.measurem...
from_labels
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(labels):\n labels = labels.astype(int)\n areas = scipy.ndimage.measurements.sum(labels != 0, labels, list(range(\n 1, numpy.max(labels) + 1)))\n ...
def x(detections_1, detections_2, assignments): traces = [] for d1n, d2n in six.iteritems(assignments): if d1n < len(detections_1) and d2n < len(detections_2): traces.append(Trace(detections_1[d1n], detections_2[d2n])) return traces
from_detections_assignment
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(detections_1, detections_2, assignments):\n traces = []\n for d1n, d2n in six.iteritems(assignments):\n if d1n < len(detections_1) and d2n < len(d...
def x(self, label_image_1, label_image_2): self.scale = self.parameters_tracking['avgCellDiameter'] / 35.0 detections_1 = self.derive_detections(label_image_1) detections_2 = self.derive_detections(label_image_2) traces = self.find_initials_traces(detections_1, detections_2) for _ in range(int(self....
run_tracking
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, label_image_1, label_image_2):\n self.scale = self.parameters_tracking['avgCellDiameter'] / 35.0\n detections_1 = self.derive_detections(label_imag...
def x(self, cell_detection): return cell_detection.area > self.parameters_tracking['big_size' ] * self.scale * self.scale
is_cell_big
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, cell_detection):\n return cell_detection.area > self.parameters_tracking['big_size'\n ] * self.scale * self.scale\n", "role": "user" }, ...
def x(cell, all_cells, k, max_dist): all_cells = [c for c in all_cells if c != cell] sorted_cells = sorted([(cell.distance(c), c) for c in all_cells]) return [sc[1] for sc in sorted_cells[:k] if sc[0] <= max_dist]
find_closest_neighbours
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cell, all_cells, k, max_dist):\n all_cells = [c for c in all_cells if c != cell]\n sorted_cells = sorted([(cell.distance(c), c) for c in all_cells])\n ...
def x(self, d1, d2): distance = euclidean_dist(d1.center, d2.center) / self.scale area_change = 1 - min(d1.area, d2.area) / max(d1.area, d2.area) return distance + self.parameters_cost_initial['area_weight'] * area_change
calculate_basic_cost
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, d1, d2):\n distance = euclidean_dist(d1.center, d2.center) / self.scale\n area_change = 1 - min(d1.area, d2.area) / max(d1.area, d2.area)\n retu...
def x(self, d1, d2, neighbours, motions): my_nbrs_with_motion = [n for n in neighbours[d1] if n in motions] my_motion = d1.center[0] - d2.center[0], d1.center[1] - d2.center[1] if my_nbrs_with_motion == []: distance = euclidean_dist(d1.center, d2.center) / self.scale else: distance = min...
calculate_localised_cost
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, d1, d2, neighbours, motions):\n my_nbrs_with_motion = [n for n in neighbours[d1] if n in motions]\n my_motion = d1.center[0] - d2.center[0], d1.cen...
def x(self, detections_1, detections_2, calculate_match_cost, params): global invalid_match size_sum = len(detections_1) + len(detections_2) cost_matrix = numpy.zeros((size_sum, size_sum)) cost_matrix[0:len(detections_1), len(detections_2):size_sum] = params[ 'default_empty_cost'] + (1 - numpy.e...
calculate_costs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, detections_1, detections_2, calculate_match_cost, params):\n global invalid_match\n size_sum = len(detections_1) + len(detections_2)\n cost_matr...
def x(self, costs): if costs is None or len(costs) == 0: return dict() n = costs.shape[0] pairs = [(i, j) for i in range(0, n) for j in range(0, n) if costs[i, j ] < invalid_match] costs_list = [costs[i, j] for i, j in pairs] assignment = lapjv.lapjv(list(zip(*pairs))[0], list(zip(*p...
solve_assignement
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, costs):\n if costs is None or len(costs) == 0:\n return dict()\n n = costs.shape[0]\n pairs = [(i, j) for i in range(0, n) for j in range...
def x(image, bits): rr = np.random.RandomState() rr.seed(0) r = rr.normal(size=image.shape) delta = pow(2.0, -bits) image_copy = np.clip(image, delta, 1) result = np.exp2(np.log2(image_copy + delta) * r + (1 - r) * np.log2( image_copy)) result[result > 1] = 1 result[result < 0] =...
smooth_with_noise
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, bits):\n rr = np.random.RandomState()\n rr.seed(0)\n r = rr.normal(size=image.shape)\n delta = pow(2.0, -bits)\n image_copy = np.clip(ima...
def x(image, function, mask): not_mask = np.logical_not(mask) bleed_over = function(mask.astype(float)) masked_image = np.zeros(image.shape, image.dtype) masked_image[mask] = image[mask] smoothed_image = function(masked_image) output_image = smoothed_image / (bleed_over + np.finfo(float).eps) ...
smooth_with_function_and_mask
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, function, mask):\n not_mask = np.logical_not(mask)\n bleed_over = function(mask.astype(float))\n masked_image = np.zeros(image.shape, image.dty...
def x(sd, radius): i, j = np.mgrid[-radius:radius + 1, -radius:radius + 1].astype(float ) / radius mask = i ** 2 + j ** 2 <= 1 i = i * radius / sd j = j * radius / sd kernel = np.zeros((2 * radius + 1, 2 * radius + 1)) kernel[mask] = np.e ** (-(i[mask] ** 2 + j[mask] ** 2) / (2 * sd ** 2...
circular_gaussian_kernel
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(sd, radius):\n i, j = np.mgrid[-radius:radius + 1, -radius:radius + 1].astype(float\n ) / radius\n mask = i ** 2 + j ** 2 <= 1\n i = i * radius...
def x(pixel_data, mask, clip=True): mask = np.logical_and(mask, pixel_data > 0) if not np.any(mask): return pixel_data x, y = np.mgrid[0:pixel_data.shape[0], 0:pixel_data.shape[1]] x2 = x * x y2 = y * y xy = x * y o = np.ones(pixel_data.shape) a = np.array([x[mask], y[mask], x2[m...
fit_polynomial
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(pixel_data, mask, clip=True):\n mask = np.logical_and(mask, pixel_data > 0)\n if not np.any(mask):\n return pixel_data\n x, y = np.mgrid[0:pixe...