PointSlice: Accurate and Efficient Slice-Based Representation for 3D Object Detection from Point Clouds
- URL: http://arxiv.org/abs/2509.01487v1
- Date: Mon, 01 Sep 2025 14:08:21 GMT
- Title: PointSlice: Accurate and Efficient Slice-Based Representation for 3D Object Detection from Point Clouds
- Authors: Liu Qifeng, Zhao Dawei, Dong Yabo, Xiao Liang, Wang Juan, Min Chen, Li Fuyang, Jiang Weizhong, Lu Dongming, Nie Yiming,
- Abstract summary: 3D object detection from point clouds plays a critical role in autonomous driving.<n>Currently, the primary methods for point cloud processing are voxel-based and pillarbased approaches.<n>We propose PointSlice, which slices point clouds along the horizontal plane and includes a dedicated detection network.
- Score: 3.570883876209093
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 3D object detection from point clouds plays a critical role in autonomous driving. Currently, the primary methods for point cloud processing are voxel-based and pillarbased approaches. Voxel-based methods offer high accuracy through fine-grained spatial segmentation but suffer from slower inference speeds. Pillar-based methods enhance inference speed but still fall short of voxel-based methods in accuracy. To address these issues, we propose a novel point cloud processing method, PointSlice, which slices point clouds along the horizontal plane and includes a dedicated detection network. The main contributions of PointSlice are: (1) A new point cloud processing technique that converts 3D point clouds into multiple sets of 2D (x-y) data slices. The model only learns 2D data distributions, treating the 3D point cloud as separate batches of 2D data, which reduces the number of model parameters and enhances inference speed; (2) The introduction of a Slice Interaction Network (SIN). To maintain vertical relationships across slices, we incorporate SIN into the 2D backbone network, which improves the model's 3D object perception capability. Extensive experiments demonstrate that PointSlice achieves high detection accuracy and inference speed. On the Waymo dataset, PointSlice is 1.13x faster and has 0.79x fewer parameters than the state-of-the-art voxel-based method (SAFDNet), with only a 1.2 mAPH accuracy reduction. On the nuScenes dataset, we achieve a state-of-the-art detection result of 66.74 mAP. On the Argoverse 2 dataset, PointSlice is 1.10x faster, with 0.66x fewer parameters and a 1.0 mAP accuracy reduction. The code will be available at https://github.com/qifeng22/PointSlice2.
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