DSGN++: Exploiting Visual-Spatial Relation for Stereo-based 3D Detectors

6 Apr 2022  ·  Yilun Chen, Shijia Huang, Shu Liu, Bei Yu, Jiaya Jia ·

Camera-based 3D object detectors are welcome due to their wider deployment and lower price than LiDAR sensors. We first revisit the prior stereo detector DSGN for its stereo volume construction ways for representing both 3D geometry and semantics. We polish the stereo modeling and propose the advanced version, DSGN++, aiming to enhance effective information flow throughout the 2D-to-3D pipeline in three main aspects. First, to effectively lift the 2D information to stereo volume, we propose depth-wise plane sweeping (DPS) that allows denser connections and extracts depth-guided features. Second, for grasping differently spaced features, we present a novel stereo volume -- Dual-view Stereo Volume (DSV) that integrates front-view and top-view features and reconstructs sub-voxel depth in the camera frustum. Third, as the foreground region becomes less dominant in 3D space, we propose a multi-modal data editing strategy -- Stereo-LiDAR Copy-Paste, which ensures cross-modal alignment and improves data efficiency. Without bells and whistles, extensive experiments in various modality setups on the popular KITTI benchmark show that our method consistently outperforms other camera-based 3D detectors for all categories. Code is available at https://github.com/chenyilun95/DSGN2.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
3D Object Detection From Stereo Images KITTI Cars Moderate DSGN++ AP75 67.37 # 1
3D Object Detection From Stereo Images KITTI Cyclists Moderate DSGN++ AP50 43.90 # 1
3D Object Detection From Stereo Images KITTI Pedestrians Moderate DSGN++ AP50 32.74 # 1

Methods