AGSENet: A Robust Road Ponding Detection Method for Proactive Traffic Safety
Ronghui Zhang, Shangyu Yang, Dakang Lyu, Zihan Wang, Junzhou Chen,, Yilong Ren, Bolin Gao, and Zhihan Lv

TL;DR
This paper introduces AGSENet, a novel self-attention-based neural network that improves road ponding detection accuracy under various conditions, enhancing traffic safety through proactive hazard identification.
Contribution
The paper presents AGSENet with novel saliency modules and new datasets, achieving state-of-the-art ponding detection performance and demonstrating effectiveness in low-light and foggy conditions.
Findings
AGSENet outperforms existing methods with higher IoU scores.
The proposed modules effectively enhance feature saliency and edge detection.
New datasets improve evaluation under challenging conditions.
Abstract
Road ponding, a prevalent traffic hazard, poses a serious threat to road safety by causing vehicles to lose control and leading to accidents ranging from minor fender benders to severe collisions. Existing technologies struggle to accurately identify road ponding due to complex road textures and variable ponding coloration influenced by reflection characteristics. To address this challenge, we propose a novel approach called Self-Attention-based Global Saliency-Enhanced Network (AGSENet) for proactive road ponding detection and traffic safety improvement. AGSENet incorporates saliency detection techniques through the Channel Saliency Information Focus (CSIF) and Spatial Saliency Information Enhancement (SSIE) modules. The CSIF module, integrated into the encoder, employs self-attention to highlight similar features by fusing spatial and channel information. The SSIE module, embedded in…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Infrastructure Maintenance and Monitoring · Traffic Prediction and Management Techniques
MethodsFocus
