GLARE: A Dataset for Traffic Sign Detection in Sun Glare
Nicholas Gray, Megan Moraes, Jiang Bian, Alex Wang, Allen Tian, Kurt, Wilson, Yan Huang, Haoyi Xiong, Zhishan Guo

TL;DR
This paper introduces the GLARE dataset, comprising images of traffic signs under intense sun glare, to evaluate and improve the robustness of object detection algorithms in challenging lighting conditions for autonomous vehicles.
Contribution
The paper presents the first dataset specifically capturing traffic signs in sun glare conditions, filling a critical gap in existing datasets for autonomous vehicle safety.
Findings
State-of-the-art models perform poorly on glare-affected images
Training on glare images improves detection accuracy
Combining conditions yields the best detection performance
Abstract
Real-time machine learning object detection algorithms are often found within autonomous vehicle technology and depend on quality datasets. It is essential that these algorithms work correctly in everyday conditions as well as under strong sun glare. Reports indicate glare is one of the two most prominent environment-related reasons for crashes. However, existing datasets, such as the Laboratory for Intelligent & Safe Automobiles Traffic Sign (LISA) Dataset and the German Traffic Sign Recognition Benchmark, do not reflect the existence of sun glare at all. This paper presents the GLARE (GLARE is available at: https://github.com/NicholasCG/GLARE_Dataset ) traffic sign dataset: a collection of images with U.S-based traffic signs under heavy visual interference by sunlight. GLARE contains 2,157 images of traffic signs with sun glare, pulled from 33 videos of dashcam footage of roads in the…
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Taxonomy
TopicsAdvanced Neural Network Applications · Infrastructure Maintenance and Monitoring · Autonomous Vehicle Technology and Safety
