Back to Search Start Over

Bridging the Domain Gap for Multi-Agent Perception

Authors :
Xu, Runsheng
Li, Jinlong
Dong, Xiaoyu
Yu, Hongkai
Ma, Jiaqi
Publication Year :
2022

Abstract

Existing multi-agent perception algorithms usually select to share deep neural features extracted from raw sensing data between agents, achieving a trade-off between accuracy and communication bandwidth limit. However, these methods assume all agents have identical neural networks, which might not be practical in the real world. The transmitted features can have a large domain gap when the models differ, leading to a dramatic performance drop in multi-agent perception. In this paper, we propose the first lightweight framework to bridge such domain gaps for multi-agent perception, which can be a plug-in module for most existing systems while maintaining confidentiality. Our framework consists of a learnable feature resizer to align features in multiple dimensions and a sparse cross-domain transformer for domain adaption. Extensive experiments on the public multi-agent perception dataset V2XSet have demonstrated that our method can effectively bridge the gap for features from different domains and outperform other baseline methods significantly by at least 8% for point-cloud-based 3D object detection.<br />Comment: Accepted by ICRA2023.Code: https://github.com/DerrickXuNu/MPDA

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.08451
Document Type :
Working Paper