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Haoxi Ran; Jun Liu; Chengjie Wang

Abstract
Most prior work represents the shapes of point clouds by coordinates. However, it is insufficient to describe the local geometry directly. In this paper, we present \textbf{RepSurf} (representative surfaces), a novel representation of point clouds to \textbf{explicitly} depict the very local structure. We explore two variants of RepSurf, Triangular RepSurf and Umbrella RepSurf inspired by triangle meshes and umbrella curvature in computer graphics. We compute the representations of RepSurf by predefined geometric priors after surface reconstruction. RepSurf can be a plug-and-play module for most point cloud models thanks to its free collaboration with irregular points. Based on a simple baseline of PointNet++ (SSG version), Umbrella RepSurf surpasses the previous state-of-the-art by a large margin for classification, segmentation and detection on various benchmarks in terms of performance and efficiency. With an increase of around \textbf{0.008M} number of parameters, \textbf{0.04G} FLOPs, and \textbf{1.12ms} inference time, our method achieves \textbf{94.7\%} (+0.5\%) on ModelNet40, and \textbf{84.6\%} (+1.8\%) on ScanObjectNN for classification, while \textbf{74.3\%} (+0.8\%) mIoU on S3DIS 6-fold, and \textbf{70.0\%} (+1.6\%) mIoU on ScanNet for segmentation. For detection, previous state-of-the-art detector with our RepSurf obtains \textbf{71.2\%} (+2.1\%) mAP$\mathit{{25}}$, \textbf{54.8\%} (+2.0\%) mAP$\mathit{{50}}$ on ScanNetV2, and \textbf{64.9\%} (+1.9\%) mAP$\mathit{{25}}$, \textbf{47.7\%} (+2.5\%) mAP$\mathit{{50}}$ on SUN RGB-D. Our lightweight Triangular RepSurf performs its excellence on these benchmarks as well. The code is publicly available at \url{https://github.com/hancyran/RepSurf}.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| 3d-object-detection-on-scannetv2 | RepSurf-U | mAP@0.25: 71.2 mAP@0.5: 54.8 |
| 3d-object-detection-on-sun-rgbd-val | RepSurf-U | mAP@0.25: 64.9 mAP@0.5: 47.7 |
| 3d-point-cloud-classification-on-modelnet40 | RepSurf-U | FLOPs: 0.81G Number of params: 1.48M Overall Accuracy: 94.7 |
| 3d-point-cloud-classification-on-scanobjectnn | RepSurf-U | FLOPs: 0.81G Number of params: 1.48M Overall Accuracy: 84.6 |
| 3d-point-cloud-classification-on-scanobjectnn | RepSurf-U (2x) | FLOPs: 2.43G Number of params: 6.80M Overall Accuracy: 86.0 |
| semantic-segmentation-on-s3dis | RepSurf-U | FLOPs: 1.04G Mean IoU: 74.3 Number of params: 0.97M Params (M): 0.97 mAcc: 82.6 oAcc: 90.8 |
| semantic-segmentation-on-s3dis-area5 | RepSurf-U | FLOPs: 1.04G Number of params: 0.97M mAcc: 76.0 mIoU: 68.9 oAcc: 90.2 |
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