Generative Zero-Shot Learning for Semantic Segmentation of 3D Point Clouds
About
While there has been a number of studies on Zero-Shot Learning (ZSL) for 2D images, its application to 3D data is still recent and scarce, with just a few methods limited to classification. We present the first generative approach for both ZSL and Generalized ZSL (GZSL) on 3D data, that can handle both classification and, for the first time, semantic segmentation. We show that it reaches or outperforms the state of the art on ModelNet40 classification for both inductive ZSL and inductive GZSL. For semantic segmentation, we created three benchmarks for evaluating this new ZSL task, using S3DIS, ScanNet and SemanticKITTI. Our experiments show that our method outperforms strong baselines, which we additionally propose for this task.
Bj\"orn Michele, Alexandre Boulch, Gilles Puy, Maxime Bucher, Renaud Marlet• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Semantic Segmentation | ScanNet V2 (val) | mIoU7.7 | 171 | |
| Semantic segmentation | S3DIS | -- | 88 | |
| 3D Object Classification | ModelNet40 | -- | 62 | |
| Semantic segmentation | ScanNet | -- | 59 | |
| 3D Semantic Segmentation | ScanNet B12 N7 | hIoU1.98e+3 | 20 | |
| 3D Semantic Segmentation | ScanNet B10/N9 | hIoU12 | 20 | |
| 3D Semantic Segmentation | S3DIS (B8/N4) | hIoU880 | 19 | |
| 3D Semantic Segmentation | S3DIS B6 N6 | hIoU9.4 | 19 | |
| 3D Semantic Segmentation | ScanNet B15 N4 | hIoU20.6 | 13 | |
| Semantic segmentation | SemanticKITTI | mIoU (Overall)35 | 13 |
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