Vision Technologies with Applications in Traffic Surveillance Systems: A Holistic Survey
Vision Technologies with Applications in Traffic Surveillance Systems: A Holistic Survey
Traffic Surveillance Systems (TSS) have become increasingly crucial in modern intelligent transportation systems, with vision technologies playing a central role for scene perception and understanding. While existing surveys typically focus on isolated aspects of TSS, a comprehensive analytical framework bridging low-level and high-level perception tasks, particularly considering emerging technologies, remains lacking. This paper presents a systematic review of vision technologies in TSS, examining both low-level perception tasks (object detection, classification, and tracking) and high-level perception tasks (parameter estimation, anomaly detection, and behavior understanding). Specifically, we first provide a detailed methodological categorization and comprehensive performance evaluation for each task. Our investigation reveals five fundamental limitations in current TSS: perceptual data degradation in complex scenarios, data-driven learning constraints, semantic understanding gaps, sensing coverage limitations and computational resource demands. To address these challenges, we systematically analyze five categories of current approaches and potential trends: advanced perception enhancement, efficient learning paradigms, knowledge-enhanced understanding, cooperative sensing frameworks and efficient computing frameworks, critically assessing their real-world applicability. Furthermore, we evaluate the transformative potential of foundation models in TSS, which exhibit remarkable zero-shot learning abilities, strong generalization, and sophisticated reasoning capabilities across diverse tasks. This review provides a unified analytical framework bridging low-level and high-level perception tasks, systematically analyzes current limitations and solutions, and presents a structured roadmap for integrating emerging technologies, particularly foundation models, to enhance TSS capabilities.
Kun Qie、Chen Wang、Li Yang、Lei Zhao、Runyu Zhang、Yifan Cui、Wei Zhou、Hongpu Huang
电子技术应用计算技术、计算机技术自动化技术、自动化技术设备
Kun Qie,Chen Wang,Li Yang,Lei Zhao,Runyu Zhang,Yifan Cui,Wei Zhou,Hongpu Huang.Vision Technologies with Applications in Traffic Surveillance Systems: A Holistic Survey[EB/OL].(2025-06-28)[2025-07-22].https://arxiv.org/abs/2412.00348.点此复制
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