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One for All: Multi-Domain Joint Training for Point Cloud Based 3D Object Detection

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The current trend in computer vision is to utilize one universal model to address all various tasks. Achieving such a universal model inevitably requires incorporating multi-domain data for joint training to learn across multiple problem scenarios. In point cloud based 3D object detection, however, such multi-domain joint training is highly challenging, because large domain gaps among point clouds from different datasets lead to the severe domain-interference problem. In this paper, we propose \textbf{OneDet3D}, a universal one-for-all model that addresses 3D detection across different domains, including diverse indoor and outdoor scenes, within the \emph{same} framework and only \emph{one} set of parameters. We propose the domain-aware partitioning in scatter and context, guided by a routing mechanism, to address the data interference issue, and further incorporate the text modality for a language-guided classification to unify the multi-dataset label spaces and mitigate the category interference issue. The fully sparse structure and anchor-free head further accommodate point clouds with significant scale disparities. Extensive experiments demonstrate the strong universal ability of OneDet3D to utilize only one trained model for addressing almost all 3D object detection tasks.

Zhenyu Wang, Yali Li, Hengshuang Zhao, Shengjin Wang• 2024

Related benchmarks

TaskDatasetResultRank
3D Object DetectionScanNet
mAP@0.2570.9
123
3D Object DetectionSUN RGB-D
mAP@0.2565
104
3D Object DetectionKITTI
AP (Easy)92.8
14
3D Object DetectionnuScenes
AP81
11
3D Object DetectionS3DIS (unseen)
AP@0.2553.5
8
3D Object DetectionWaymo
AP3D41.1
8
Open-Vocabulary 3D Object DetectionSUN RGB-D (test)
AP Novel12.59
6
Open-Vocabulary 3D Object DetectionScanNet (test)
AP Novel15.52
6
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