English

3M3D: Multi-view, Multi-path, Multi-representation for 3D Object Detection

Computer Vision and Pattern Recognition 2023-07-31 v3 Artificial Intelligence

Abstract

3D visual perception tasks based on multi-camera images are essential for autonomous driving systems. Latest work in this field performs 3D object detection by leveraging multi-view images as an input and iteratively enhancing object queries (object proposals) by cross-attending multi-view features. However, individual backbone features are not updated with multi-view features and it stays as a mere collection of the output of the single-image backbone network. Therefore we propose 3M3D: A Multi-view, Multi-path, Multi-representation for 3D Object Detection where we update both multi-view features and query features to enhance the representation of the scene in both fine panoramic view and coarse global view. Firstly, we update multi-view features by multi-view axis self-attention. It will incorporate panoramic information in the multi-view features and enhance understanding of the global scene. Secondly, we update multi-view features by self-attention of the ROI (Region of Interest) windows which encodes local finer details in the features. It will help exchange the information not only along the multi-view axis but also along the other spatial dimension. Lastly, we leverage the fact of multi-representation of queries in different domains to further boost the performance. Here we use sparse floating queries along with dense BEV (Bird's Eye View) queries, which are later post-processed to filter duplicate detections. Moreover, we show performance improvements on nuScenes benchmark dataset on top of our baselines.

Keywords

Cite

@article{arxiv.2302.08231,
  title  = {3M3D: Multi-view, Multi-path, Multi-representation for 3D Object Detection},
  author = {Jongwoo Park and Apoorv Singh and Varun Bankiti},
  journal= {arXiv preprint arXiv:2302.08231},
  year   = {2023}
}
R2 v1 2026-06-28T08:41:42.817Z