Unsupervised Multi-Task Feature Learning on Point Clouds
About
We introduce an unsupervised multi-task model to jointly learn point and shape features on point clouds. We define three unsupervised tasks including clustering, reconstruction, and self-supervised classification to train a multi-scale graph-based encoder. We evaluate our model on shape classification and segmentation benchmarks. The results suggest that it outperforms prior state-of-the-art unsupervised models: In the ModelNet40 classification task, it achieves an accuracy of 89.1% and in ShapeNet segmentation task, it achieves an mIoU of 68.2 and accuracy of 88.6%.
Kaveh Hassani, Mike Haley• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Shape Classification | ModelNet40 (test) | Accuracy89.1 | 227 | |
| Object Classification | ModelNet40 (test) | -- | 180 | |
| 3D Object Part Segmentation | ShapeNet Part (test) | -- | 114 | |
| 3D Domain Adaptation | PointDA-10 | Accuracy (Model -> Shape)83.5 | 36 |
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