Generalizable Autonomous Driving System across Diverse Adverse Weather Conditions
Wei-Bin Kou, Guangxu Zhu, Rongguang Ye, Qingfeng Lin, Zeyi Ren, Ming, Tang, Yik-Chung Wu

TL;DR
This paper introduces AdvImmu, a novel weather-robust autonomous driving segmentation method that leverages temporal invariance, regularization, and foundation models to improve performance across diverse adverse weather conditions.
Contribution
The paper presents AdvImmu, a reference-free, adversarial weather-immune scheme with novel mechanisms and regularizers, enhancing cross-weather generalization in autonomous driving segmentation.
Findings
Outperforms state-of-the-art by 88.56% mIoU
Effective in diverse adverse weather conditions
Utilizes foundation models for annotation
Abstract
Various adverse weather conditions pose a significant challenge to autonomous driving (AD) street scene semantic understanding (segmentation). A common strategy is to minimize the disparity between images captured in clear and adverse weather conditions. However, this technique typically relies on utilizing clear image as a reference, which is challenging to obtain in practice. Furthermore, this method typically targets a single adverse condition, and thus perform poorly when confronting a mixture of multiple adverse weather conditions. To address these issues, we introduce a reference-free and Adverse weather-Immune scheme (called AdvImmu) that leverages the invariance of weather conditions over short periods (seconds). Specifically, AdvImmu includes three components: Locally Sequential Mechanism (LSM), Globally Shuffled Mechanism (GSM), and Unfolded Regularizers (URs). LSM leverages…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Image Processing Techniques and Applications · Fire Detection and Safety Systems
