| |
|
|
| import torch |
| import torch.nn.functional as F |
| import numpy as np |
| import numba |
|
|
|
|
| def gaussian_radius(height, width, min_overlap=0.5): |
| """ |
| Args: |
| height: (N) |
| width: (N) |
| min_overlap: |
| Returns: |
| """ |
| a1 = 1 |
| b1 = (height + width) |
| c1 = width * height * (1 - min_overlap) / (1 + min_overlap) |
| sq1 = (b1 ** 2 - 4 * a1 * c1).sqrt() |
| r1 = (b1 + sq1) / 2 |
|
|
| a2 = 4 |
| b2 = 2 * (height + width) |
| c2 = (1 - min_overlap) * width * height |
| sq2 = (b2 ** 2 - 4 * a2 * c2).sqrt() |
| r2 = (b2 + sq2) / 2 |
|
|
| a3 = 4 * min_overlap |
| b3 = -2 * min_overlap * (height + width) |
| c3 = (min_overlap - 1) * width * height |
| sq3 = (b3 ** 2 - 4 * a3 * c3).sqrt() |
| r3 = (b3 + sq3) / 2 |
| ret = torch.min(torch.min(r1, r2), r3) |
| return ret |
|
|
|
|
| def gaussian2D(shape, sigma=1): |
| m, n = [(ss - 1.) / 2. for ss in shape] |
| y, x = np.ogrid[-m:m + 1, -n:n + 1] |
|
|
| h = np.exp(-(x * x + y * y) / (2 * sigma * sigma)) |
| h[h < np.finfo(h.dtype).eps * h.max()] = 0 |
| return h |
|
|
|
|
| def draw_gaussian_to_heatmap(heatmap, center, radius, k=1, valid_mask=None): |
| diameter = 2 * radius + 1 |
| gaussian = gaussian2D((diameter, diameter), sigma=diameter / 6) |
|
|
| x, y = int(center[0]), int(center[1]) |
|
|
| height, width = heatmap.shape[0:2] |
|
|
| left, right = min(x, radius), min(width - x, radius + 1) |
| top, bottom = min(y, radius), min(height - y, radius + 1) |
|
|
| masked_heatmap = heatmap[y - top:y + bottom, x - left:x + right] |
| masked_gaussian = torch.from_numpy( |
| gaussian[radius - top:radius + bottom, radius - left:radius + right] |
| ).to(heatmap.device).float() |
|
|
| if min(masked_gaussian.shape) > 0 and min(masked_heatmap.shape) > 0: |
| if valid_mask is not None: |
| cur_valid_mask = valid_mask[y - top:y + bottom, x - left:x + right] |
| masked_gaussian = masked_gaussian * cur_valid_mask.float() |
|
|
| torch.max(masked_heatmap, masked_gaussian * k, out=masked_heatmap) |
| return heatmap |
|
|
|
|
| def _nms(heat, kernel=3): |
| pad = (kernel - 1) // 2 |
|
|
| hmax = F.max_pool2d(heat, (kernel, kernel), stride=1, padding=pad) |
| keep = (hmax == heat).float() |
| return heat * keep |
|
|
|
|
| def gaussian3D(shape, sigma=1): |
| m, n = [(ss - 1.) / 2. for ss in shape] |
| y, x = np.ogrid[-m:m + 1, -n:n + 1] |
|
|
| h = np.exp(-(x * x + y * y) / (2 * sigma * sigma)) |
| h[h < np.finfo(h.dtype).eps * h.max()] = 0 |
| return h |
|
|
|
|
| def draw_gaussian_to_heatmap_voxels(heatmap, distances, radius, k=1): |
| diameter = 2 * radius + 1 |
| sigma = diameter / 6 |
| masked_gaussian = torch.exp(- distances / (2 * sigma * sigma)) |
|
|
| torch.max(heatmap, masked_gaussian, out=heatmap) |
|
|
| return heatmap |
|
|
|
|
| @numba.jit(nopython=True) |
| def circle_nms(dets, thresh): |
| x1 = dets[:, 0] |
| y1 = dets[:, 1] |
| scores = dets[:, 2] |
| order = scores.argsort()[::-1].astype(np.int32) |
| ndets = dets.shape[0] |
| suppressed = np.zeros((ndets), dtype=np.int32) |
| keep = [] |
| for _i in range(ndets): |
| i = order[_i] |
| if suppressed[i] == 1: |
| continue |
| keep.append(i) |
| for _j in range(_i + 1, ndets): |
| j = order[_j] |
| if suppressed[j] == 1: |
| continue |
| |
| dist = (x1[i] - x1[j]) ** 2 + (y1[i] - y1[j]) ** 2 |
|
|
| |
| if dist <= thresh: |
| suppressed[j] = 1 |
| return keep |
|
|
|
|
| def _circle_nms(boxes, min_radius, post_max_size=83): |
| """ |
| NMS according to center distance |
| """ |
| keep = np.array(circle_nms(boxes.cpu().numpy(), thresh=min_radius))[:post_max_size] |
|
|
| keep = torch.from_numpy(keep).long().to(boxes.device) |
|
|
| return keep |
|
|
|
|
| def _gather_feat(feat, ind, mask=None): |
| dim = feat.size(2) |
| ind = ind.unsqueeze(2).expand(ind.size(0), ind.size(1), dim) |
| feat = feat.gather(1, ind) |
| if mask is not None: |
| mask = mask.unsqueeze(2).expand_as(feat) |
| feat = feat[mask] |
| feat = feat.view(-1, dim) |
| return feat |
|
|
|
|
| def _transpose_and_gather_feat(feat, ind): |
| feat = feat.permute(0, 2, 3, 1).contiguous() |
| feat = feat.view(feat.size(0), -1, feat.size(3)) |
| feat = _gather_feat(feat, ind) |
| return feat |
|
|
|
|
| def _topk(scores, K=40): |
| batch, num_class, height, width = scores.size() |
|
|
| topk_scores, topk_inds = torch.topk(scores.flatten(2, 3), K) |
|
|
| topk_inds = topk_inds % (height * width) |
| topk_ys = (topk_inds // width).float() |
| topk_xs = (topk_inds % width).int().float() |
|
|
| topk_score, topk_ind = torch.topk(topk_scores.view(batch, -1), K) |
| topk_classes = (topk_ind // K).int() |
| topk_inds = _gather_feat(topk_inds.view(batch, -1, 1), topk_ind).view(batch, K) |
| topk_ys = _gather_feat(topk_ys.view(batch, -1, 1), topk_ind).view(batch, K) |
| topk_xs = _gather_feat(topk_xs.view(batch, -1, 1), topk_ind).view(batch, K) |
|
|
| return topk_score, topk_inds, topk_classes, topk_ys, topk_xs |
|
|
|
|
| def decode_bbox_from_heatmap(heatmap, rot_cos, rot_sin, center, center_z, dim, |
| point_cloud_range=None, voxel_size=None, feature_map_stride=None, vel=None, iou=None, K=100, |
| circle_nms=False, score_thresh=None, post_center_limit_range=None): |
| batch_size, num_class, _, _ = heatmap.size() |
|
|
| if circle_nms: |
| |
| assert False, 'not checked yet' |
| heatmap = _nms(heatmap) |
|
|
| scores, inds, class_ids, ys, xs = _topk(heatmap, K=K) |
| center = _transpose_and_gather_feat(center, inds).view(batch_size, K, 2) |
| rot_sin = _transpose_and_gather_feat(rot_sin, inds).view(batch_size, K, 1) |
| rot_cos = _transpose_and_gather_feat(rot_cos, inds).view(batch_size, K, 1) |
| center_z = _transpose_and_gather_feat(center_z, inds).view(batch_size, K, 1) |
| dim = _transpose_and_gather_feat(dim, inds).view(batch_size, K, 3) |
|
|
| angle = torch.atan2(rot_sin, rot_cos) |
| xs = xs.view(batch_size, K, 1) + center[:, :, 0:1] |
| ys = ys.view(batch_size, K, 1) + center[:, :, 1:2] |
|
|
| xs = xs * feature_map_stride * voxel_size[0] + point_cloud_range[0] |
| ys = ys * feature_map_stride * voxel_size[1] + point_cloud_range[1] |
|
|
| box_part_list = [xs, ys, center_z, dim, angle] |
| if vel is not None: |
| vel = _transpose_and_gather_feat(vel, inds).view(batch_size, K, 2) |
| box_part_list.append(vel) |
|
|
| if iou is not None: |
| iou = _transpose_and_gather_feat(iou, inds).view(batch_size, K) |
|
|
| final_box_preds = torch.cat((box_part_list), dim=-1) |
| final_scores = scores.view(batch_size, K) |
| final_class_ids = class_ids.view(batch_size, K) |
|
|
| assert post_center_limit_range is not None |
| mask = (final_box_preds[..., :3] >= post_center_limit_range[:3]).all(2) |
| mask &= (final_box_preds[..., :3] <= post_center_limit_range[3:]).all(2) |
|
|
| if score_thresh is not None: |
| mask &= (final_scores > score_thresh) |
|
|
| ret_pred_dicts = [] |
| for k in range(batch_size): |
| cur_mask = mask[k] |
| cur_boxes = final_box_preds[k, cur_mask] |
| cur_scores = final_scores[k, cur_mask] |
| cur_labels = final_class_ids[k, cur_mask] |
|
|
| if circle_nms: |
| assert False, 'not checked yet' |
| centers = cur_boxes[:, [0, 1]] |
| boxes = torch.cat((centers, scores.view(-1, 1)), dim=1) |
| keep = _circle_nms(boxes, min_radius=min_radius, post_max_size=nms_post_max_size) |
|
|
| cur_boxes = cur_boxes[keep] |
| cur_scores = cur_scores[keep] |
| cur_labels = cur_labels[keep] |
|
|
| ret_pred_dicts.append({ |
| 'pred_boxes': cur_boxes, |
| 'pred_scores': cur_scores, |
| 'pred_labels': cur_labels |
| }) |
|
|
| if iou is not None: |
| ret_pred_dicts[-1]['pred_iou'] = iou[k, cur_mask] |
| return ret_pred_dicts |
|
|
| def _topk_1d(scores, batch_size, batch_idx, obj, K=40, nuscenes=False): |
| |
| topk_score_list = [] |
| topk_inds_list = [] |
| topk_classes_list = [] |
|
|
| for bs_idx in range(batch_size): |
| batch_inds = batch_idx==bs_idx |
| if obj.shape[-1] == 1 and not nuscenes: |
| score = scores[batch_inds].permute(1, 0) |
| topk_scores, topk_inds = torch.topk(score, K) |
| topk_score, topk_ind = torch.topk(obj[topk_inds.view(-1)].squeeze(-1), K) |
| else: |
| score = obj[batch_inds].permute(1, 0) |
| topk_scores, topk_inds = torch.topk(score, min(K, score.shape[-1])) |
| topk_score, topk_ind = torch.topk(topk_scores.view(-1), min(K, topk_scores.view(-1).shape[-1])) |
| |
|
|
| topk_classes = (topk_ind // K).int() |
| topk_inds = topk_inds.view(-1).gather(0, topk_ind) |
| |
|
|
| if not obj is None and obj.shape[-1] == 1: |
| topk_score_list.append(obj[batch_inds][topk_inds]) |
| else: |
| topk_score_list.append(topk_score) |
| topk_inds_list.append(topk_inds) |
| topk_classes_list.append(topk_classes) |
|
|
| topk_score = torch.stack(topk_score_list) |
| topk_inds = torch.stack(topk_inds_list) |
| topk_classes = torch.stack(topk_classes_list) |
|
|
| return topk_score, topk_inds, topk_classes |
|
|
| def gather_feat_idx(feats, inds, batch_size, batch_idx): |
| feats_list = [] |
| dim = feats.size(-1) |
| _inds = inds.unsqueeze(-1).expand(inds.size(0), inds.size(1), dim) |
|
|
| for bs_idx in range(batch_size): |
| batch_inds = batch_idx==bs_idx |
| feat = feats[batch_inds] |
| feats_list.append(feat.gather(0, _inds[bs_idx])) |
| feats = torch.stack(feats_list) |
| return feats |
|
|
| def decode_bbox_from_voxels_nuscenes(batch_size, indices, obj, rot_cos, rot_sin, |
| center, center_z, dim, vel=None, iou=None, point_cloud_range=None, voxel_size=None, voxels_3d=None, |
| feature_map_stride=None, K=100, score_thresh=None, post_center_limit_range=None, add_features=None): |
| batch_idx = indices[:, 0] |
| spatial_indices = indices[:, 1:] |
| scores, inds, class_ids = _topk_1d(None, batch_size, batch_idx, obj, K=K, nuscenes=True) |
|
|
| center = gather_feat_idx(center, inds, batch_size, batch_idx) |
| rot_sin = gather_feat_idx(rot_sin, inds, batch_size, batch_idx) |
| rot_cos = gather_feat_idx(rot_cos, inds, batch_size, batch_idx) |
| center_z = gather_feat_idx(center_z, inds, batch_size, batch_idx) |
| dim = gather_feat_idx(dim, inds, batch_size, batch_idx) |
| spatial_indices = gather_feat_idx(spatial_indices, inds, batch_size, batch_idx) |
|
|
| if not add_features is None: |
| add_features = [gather_feat_idx(add_feature, inds, batch_size, batch_idx) for add_feature in add_features] |
|
|
| if not isinstance(feature_map_stride, int): |
| feature_map_stride = gather_feat_idx(feature_map_stride.unsqueeze(-1), inds, batch_size, batch_idx) |
|
|
| angle = torch.atan2(rot_sin, rot_cos) |
| xs = (spatial_indices[:, :, -1:] + center[:, :, 0:1]) * feature_map_stride * voxel_size[0] + point_cloud_range[0] |
| ys = (spatial_indices[:, :, -2:-1] + center[:, :, 1:2]) * feature_map_stride * voxel_size[1] + point_cloud_range[1] |
| |
|
|
| box_part_list = [xs, ys, center_z, dim, angle] |
|
|
| if not vel is None: |
| vel = gather_feat_idx(vel, inds, batch_size, batch_idx) |
| box_part_list.append(vel) |
|
|
| if not iou is None: |
| iou = gather_feat_idx(iou, inds, batch_size, batch_idx) |
| iou = torch.clamp(iou, min=0, max=1.) |
|
|
| final_box_preds = torch.cat((box_part_list), dim=-1) |
| final_scores = scores.view(batch_size, K) |
| final_class_ids = class_ids.view(batch_size, K) |
| if not add_features is None: |
| add_features = [add_feature.view(batch_size, K, add_feature.shape[-1]) for add_feature in add_features] |
|
|
| assert post_center_limit_range is not None |
| mask = (final_box_preds[..., :3] >= post_center_limit_range[:3]).all(2) |
| mask &= (final_box_preds[..., :3] <= post_center_limit_range[3:]).all(2) |
|
|
| if score_thresh is not None: |
| mask &= (final_scores > score_thresh) |
|
|
| ret_pred_dicts = [] |
| for k in range(batch_size): |
| cur_mask = mask[k] |
| cur_boxes = final_box_preds[k, cur_mask] |
| cur_scores = final_scores[k, cur_mask] |
| cur_labels = final_class_ids[k, cur_mask] |
| cur_add_features = [add_feature[k, cur_mask] for add_feature in add_features] if not add_features is None else None |
| cur_iou = iou[k, cur_mask] if not iou is None else None |
|
|
| ret_pred_dicts.append({ |
| 'pred_boxes': cur_boxes, |
| 'pred_scores': cur_scores, |
| 'pred_labels': cur_labels, |
| 'pred_ious': cur_iou, |
| 'add_features': cur_add_features, |
| }) |
| return ret_pred_dicts |
|
|
|
|
| def decode_bbox_from_pred_dicts(pred_dict, point_cloud_range=None, voxel_size=None, feature_map_stride=None): |
| batch_size, _, H, W = pred_dict['center'].shape |
|
|
| batch_center = pred_dict['center'].permute(0, 2, 3, 1).contiguous().view(batch_size, H*W, 2) |
| batch_center_z = pred_dict['center_z'].permute(0, 2, 3, 1).contiguous().view(batch_size, H*W, 1) |
| batch_dim = pred_dict['dim'].exp().permute(0, 2, 3, 1).contiguous().view(batch_size, H*W, 3) |
| batch_rot_cos = pred_dict['rot'][:, 0].unsqueeze(dim=1).permute(0, 2, 3, 1).contiguous().view(batch_size, H*W, 1) |
| batch_rot_sin = pred_dict['rot'][:, 1].unsqueeze(dim=1).permute(0, 2, 3, 1).contiguous().view(batch_size, H*W, 1) |
| batch_vel = pred_dict['vel'].permute(0, 2, 3, 1).contiguous().view(batch_size, H*W, 2) if 'vel' in pred_dict.keys() else None |
|
|
| angle = torch.atan2(batch_rot_sin, batch_rot_cos) |
|
|
| ys, xs = torch.meshgrid([torch.arange(0, H, device=batch_center.device, dtype=batch_center.dtype), |
| torch.arange(0, W, device=batch_center.device, dtype=batch_center.dtype)]) |
| ys = ys.view(1, H, W).repeat(batch_size, 1, 1) |
| xs = xs.view(1, H, W).repeat(batch_size, 1, 1) |
| xs = xs.view(batch_size, -1, 1) + batch_center[:, :, 0:1] |
| ys = ys.view(batch_size, -1, 1) + batch_center[:, :, 1:2] |
|
|
| xs = xs * feature_map_stride * voxel_size[0] + point_cloud_range[0] |
| ys = ys * feature_map_stride * voxel_size[1] + point_cloud_range[1] |
|
|
| box_part_list = [xs, ys, batch_center_z, batch_dim, angle] |
| if batch_vel is not None: |
| box_part_list.append(batch_vel) |
|
|
| box_preds = torch.cat((box_part_list), dim=-1).view(batch_size, H, W, -1) |
|
|
| return box_preds |
|
|