RadarPillars β€” View-of-Delft (radar-only 3D object detection)

Radar-only 3D object detection on the View-of-Delft (VoD) dataset β€” an OpenPCDet-based reproduction of RadarPillars (Musiat et al., IROS 2024). This checkpoint reproduces and exceeds the published result using 4D radar point clouds only (no camera, no LiDAR).

Results (mAP_3D, R11)

Method Car @ 0.50 Ped @ 0.25 Cyc @ 0.25 mAP_3D
This checkpoint (best seed, s3) 41.58 44.78 71.31 52.56
3-seed mean 41.02 43.15 70.12 51.43 Β± 0.99
RadarPillars (paper) 41.10 38.60 72.60 50.70

+1.86 mAP_3D over the paper (best seed). Checkpoint: seed s3 @ epoch 60 (eval-best).

Usage

git clone https://github.com/fthbng77/RadarPillar
cd RadarPillar
python setup.py develop

# download this checkpoint
huggingface-cli download fthbng77/radarpillars-vod radarpillar_vod_best_map52.56.pth --local-dir weights

# evaluate
python tools/test.py \
  --cfg_file tools/cfgs/vod_models/vod_radarpillar_rot.yaml \
  --ckpt weights/radarpillar_vod_best_map52.56.pth

Architecture

PillarVFE (radial-velocity decomposition) β†’ PillarAttention (masked self-attention) β†’ PointPillarScatter β†’ BaseBEVBackbone β†’ AnchorHeadSingle (Car / Pedestrian / Cyclist). ~0.27M params. See the GitHub repo for full details.

Citation

@inproceedings{radarpillars2024,
  title     = {RadarPillars: Efficient Object Detection from 4D Radar Point Clouds},
  author    = {Musiat, Alexander and Reichardt, Laurenz and Schulze, Michael and Wasenm{\"u}ller, Oliver},
  booktitle = {Proc. IEEE/RSJ Int. Conf. Intelligent Robots and Systems (IROS)},
  year      = {2024}
}

License: Apache-2.0. Built on OpenPCDet.

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Paper for Fatihbin/radarpillars-vod