Traffic Sign Recognition in Autonomous Driving: Dataset, Benchmark, and Field Experiment
Guoyang Zhao, Weiqing Qi, Kai Zhang, Chenguang Zhang, Zeying Gong, Zhihai Bi, Kai Chen, Benshan Ma, Ming Liu, and Jun Ma

TL;DR
This paper introduces TS-1M, a large-scale, diverse traffic sign dataset and benchmark designed to evaluate and improve the robustness of traffic sign recognition models in real-world autonomous driving scenarios, including challenging conditions.
Contribution
It provides a comprehensive dataset and diagnostic benchmark for analyzing TSR models under practical challenges, and offers insights into model behaviors across different learning paradigms.
Findings
Semantic alignment improves cross-region generalization.
Visual models are sensitive to appearance shifts.
Multimodal models show robustness in semantic understanding.
Abstract
Traffic Sign Recognition (TSR) is a core perception capability for autonomous driving, where robustness to cross-region variation, long-tailed categories, and semantic ambiguity is essential for reliable real-world deployment. Despite steady progress in recognition accuracy, existing traffic sign datasets and benchmarks offer limited diagnostic insight into how different modeling paradigms behave under these practical challenges. We present TS-1M, a large-scale and globally diverse traffic sign dataset comprising over one million real-world images across 454 standardized categories, together with a diagnostic benchmark designed to analyze model capability boundaries. Beyond standard train-test evaluation, we provide a suite of challenge-oriented settings, including cross-region recognition, rare-class identification, low-clarity robustness, and semantic text understanding, enabling…
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Taxonomy
TopicsAdvanced Neural Network Applications · Hand Gesture Recognition Systems · Multimodal Machine Learning Applications
