Current research is primarily dedicated to advancing the accuracy of camera-only 3D object detectors (apprentice) through the knowledge transferred from LiDAR- or multi-modal-based counterparts (expert). However, the presence of the domain gap between LiDAR and camera features, coupled with the inherent incompatibility in temporal fusion, significantly hinders the effectiveness of distillation-based enhancements for apprentices. Motivated by the success of uni-modal distillation, an apprentice-friendly expert model would predominantly rely on camera features, while still achieving comparable performance to multi-modal models. To this end, we introduce VCD, a framework to improve the camera-only apprentice model, including an apprentice-friendly multi-modal expert and temporal-fusion-friendly distillation supervision. The multi-modal expert VCD-E adopts an identical structure as that of the camera-only apprentice in order to alleviate the feature disparity, and leverages LiDAR input as a depth prior to reconstruct the 3D scene, achieving the performance on par with other heterogeneous multi-modal experts. Additionally, a fine-grained trajectory-based distillation module is introduced with the purpose of individually rectifying the motion misalignment for each object in the scene. With those improvements, our camera-only apprentice VCD-A sets new state-of-the-art on nuScenes with a score of 63.1% NDS.
Leveraging Vision-Centric Multi-Modal Expertise for 3D Object Detection
The VCD framework improves camera-only 3D object detection by using an apprentice-friendly multi-modal expert and a trajectory-based distillation module, achieving state-of-the-art performance on nuScenes.
- Year
- 2023
- Venue
- leveraging-vision-centric-multi-modal
- Authors
- 7
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- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2310.15670ARXIV-DEFAULT
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