Back to Search Start Over

Rethinking IoU-based Optimization for Single-stage 3D Object Detection

Authors :
Sheng, Hualian
Cai, Sijia
Zhao, Na
Deng, Bing
Huang, Jianqiang
Hua, Xian-Sheng
Zhao, Min-Jian
Lee, Gim Hee
Publication Year :
2022

Abstract

Since Intersection-over-Union (IoU) based optimization maintains the consistency of the final IoU prediction metric and losses, it has been widely used in both regression and classification branches of single-stage 2D object detectors. Recently, several 3D object detection methods adopt IoU-based optimization and directly replace the 2D IoU with 3D IoU. However, such a direct computation in 3D is very costly due to the complex implementation and inefficient backward operations. Moreover, 3D IoU-based optimization is sub-optimal as it is sensitive to rotation and thus can cause training instability and detection performance deterioration. In this paper, we propose a novel Rotation-Decoupled IoU (RDIoU) method that can mitigate the rotation-sensitivity issue, and produce more efficient optimization objectives compared with 3D IoU during the training stage. Specifically, our RDIoU simplifies the complex interactions of regression parameters by decoupling the rotation variable as an independent term, yet preserving the geometry of 3D IoU. By incorporating RDIoU into both the regression and classification branches, the network is encouraged to learn more precise bounding boxes and concurrently overcome the misalignment issue between classification and regression. Extensive experiments on the benchmark KITTI and Waymo Open Dataset validate that our RDIoU method can bring substantial improvement for the single-stage 3D object detection.<br />Comment: Accepted by ECCV2022. The code is available at https://github.com/hlsheng1/RDIoU

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2207.09332
Document Type :
Working Paper