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V2X-DGW: Domain Generalization for Multi-agent Perception under Adverse Weather Conditions

Authors :
Li, Baolu
Li, Jinlong
Liu, Xinyu
Xu, Runsheng
Tu, Zhengzhong
Guo, Jiacheng
Li, Xiaopeng
Yu, Hongkai
Publication Year :
2024

Abstract

Current LiDAR-based Vehicle-to-Everything (V2X) multi-agent perception systems have shown the significant success on 3D object detection. While these models perform well in the trained clean weather, they struggle in unseen adverse weather conditions with the real-world domain gap. In this paper, we propose a domain generalization approach, named V2X-DGW, for LiDAR-based 3D object detection on multi-agent perception system under adverse weather conditions. Not only in the clean weather does our research aim to ensure favorable multi-agent performance, but also in the unseen adverse weather conditions by learning only on the clean weather data. To advance research in this area, we have simulated the impact of three prevalent adverse weather conditions on two widely-used multi-agent datasets, resulting in the creation of two novel benchmark datasets: OPV2V-w and V2XSet-w. To this end, we first introduce the Adaptive Weather Augmentation (AWA) to mimic the unseen adverse weather conditions, and then propose two alignments for generalizable representation learning: Trust-region Weather-invariant Alignment (TWA) and Agent-aware Contrastive Alignment (ACA). Extensive experimental results demonstrate that our V2X-DGW achieved improvements in the unseen adverse weather conditions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.11371
Document Type :
Working Paper