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Papers/Cylinder3D: An Effective 3D Framework for Driving-scene Li...

Cylinder3D: An Effective 3D Framework for Driving-scene LiDAR Semantic Segmentation

Hui Zhou, Xinge Zhu, Xiao Song, Yuexin Ma, Zhe Wang, Hongsheng Li, Dahua Lin

2020-08-04Semantic Segmentation3D Semantic SegmentationLIDAR Semantic Segmentation
PaperPDFCode(official)CodeCode

Abstract

State-of-the-art methods for large-scale driving-scene LiDAR semantic segmentation often project and process the point clouds in the 2D space. The projection methods includes spherical projection, bird-eye view projection, etc. Although this process makes the point cloud suitable for the 2D CNN-based networks, it inevitably alters and abandons the 3D topology and geometric relations. A straightforward solution to tackle the issue of 3D-to-2D projection is to keep the 3D representation and process the points in the 3D space. In this work, we first perform an in-depth analysis for different representations and backbones in 2D and 3D spaces, and reveal the effectiveness of 3D representations and networks on LiDAR segmentation. Then, we develop a 3D cylinder partition and a 3D cylinder convolution based framework, termed as Cylinder3D, which exploits the 3D topology relations and structures of driving-scene point clouds. Moreover, a dimension-decomposition based context modeling module is introduced to explore the high-rank context information in point clouds in a progressive manner. We evaluate the proposed model on a large-scale driving-scene dataset, i.e. SematicKITTI. Our method achieves state-of-the-art performance and outperforms existing methods by 6% in terms of mIoU.

Results

TaskDatasetMetricValueModel
Semantic SegmentationWildScenesmIoU40.07Cylinder3D
Object DetectionnuScenesNDS0.59Reconfig PP v3
Object DetectionnuScenesmAAE0.24Reconfig PP v3
Object DetectionnuScenesmAOE0.44Reconfig PP v3
Object DetectionnuScenesmAP0.49Reconfig PP v3
Object DetectionnuScenesmASE0.24Reconfig PP v3
Object DetectionnuScenesmATE0.33Reconfig PP v3
Object DetectionnuScenesmAVE0.27Reconfig PP v3
3DnuScenesNDS0.59Reconfig PP v3
3DnuScenesmAAE0.24Reconfig PP v3
3DnuScenesmAOE0.44Reconfig PP v3
3DnuScenesmAP0.49Reconfig PP v3
3DnuScenesmASE0.24Reconfig PP v3
3DnuScenesmATE0.33Reconfig PP v3
3DnuScenesmAVE0.27Reconfig PP v3
3D Semantic SegmentationWildScenesmIoU40.07Cylinder3D
3D Object DetectionnuScenesNDS0.59Reconfig PP v3
3D Object DetectionnuScenesmAAE0.24Reconfig PP v3
3D Object DetectionnuScenesmAOE0.44Reconfig PP v3
3D Object DetectionnuScenesmAP0.49Reconfig PP v3
3D Object DetectionnuScenesmASE0.24Reconfig PP v3
3D Object DetectionnuScenesmATE0.33Reconfig PP v3
3D Object DetectionnuScenesmAVE0.27Reconfig PP v3
LIDAR Semantic SegmentationnuScenestest mIoU0.78Cylinder3D++
2D ClassificationnuScenesNDS0.59Reconfig PP v3
2D ClassificationnuScenesmAAE0.24Reconfig PP v3
2D ClassificationnuScenesmAOE0.44Reconfig PP v3
2D ClassificationnuScenesmAP0.49Reconfig PP v3
2D ClassificationnuScenesmASE0.24Reconfig PP v3
2D ClassificationnuScenesmATE0.33Reconfig PP v3
2D ClassificationnuScenesmAVE0.27Reconfig PP v3
2D Object DetectionnuScenesNDS0.59Reconfig PP v3
2D Object DetectionnuScenesmAAE0.24Reconfig PP v3
2D Object DetectionnuScenesmAOE0.44Reconfig PP v3
2D Object DetectionnuScenesmAP0.49Reconfig PP v3
2D Object DetectionnuScenesmASE0.24Reconfig PP v3
2D Object DetectionnuScenesmATE0.33Reconfig PP v3
2D Object DetectionnuScenesmAVE0.27Reconfig PP v3
10-shot image generationWildScenesmIoU40.07Cylinder3D
16knuScenesNDS0.59Reconfig PP v3
16knuScenesmAAE0.24Reconfig PP v3
16knuScenesmAOE0.44Reconfig PP v3
16knuScenesmAP0.49Reconfig PP v3
16knuScenesmASE0.24Reconfig PP v3
16knuScenesmATE0.33Reconfig PP v3
16knuScenesmAVE0.27Reconfig PP v3

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