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Domain Adaptation based Enhanced Detection for Autonomous Driving in Foggy and Rainy Weather

Authors :
Li, Jinlong
Xu, Runsheng
Ma, Jin
Zou, Qin
Ma, Jiaqi
Yu, Hongkai
Publication Year :
2023

Abstract

Typically, object detection methods for autonomous driving that rely on supervised learning make the assumption of a consistent feature distribution between the training and testing data, however such assumption may fail in different weather conditions. Due to the domain gap, a detection model trained under clear weather may not perform well in foggy and rainy conditions. Overcoming detection bottlenecks in foggy and rainy weather is a real challenge for autonomous vehicles deployed in the wild. To bridge the domain gap and improve the performance of object detectionin foggy and rainy weather, this paper presents a novel framework for domain-adaptive object detection. The adaptations at both the image-level and object-level are intended to minimize the differences in image style and object appearance between domains. Furthermore, in order to improve the model's performance on challenging examples, we introduce a novel adversarial gradient reversal layer that conducts adversarial mining on difficult instances in addition to domain adaptation. Additionally, we suggest generating an auxiliary domain through data augmentation to enforce a new domain-level metric regularization. Experimental findings on public V2V benchmark exhibit a substantial enhancement in object detection specifically for foggy and rainy driving scenarios.<br />only change the title of this paper

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....2b600f5009a82e8918e147bdb097c5f7