CVNov 30, 2024

Vision Technologies with Applications in Traffic Surveillance Systems: A Holistic Survey

arXiv:2412.00348v221 citationsh-index: 3ACM Computing Surveys
Originality Synthesis-oriented
AI Analysis

It provides a holistic survey for researchers and practitioners in intelligent transportation, offering a unified analytical framework and roadmap for integrating emerging technologies, though it is incremental as it synthesizes existing knowledge rather than introducing new methods.

This paper presents a systematic review of vision technologies in Traffic Surveillance Systems (TSS), addressing the lack of a comprehensive framework by analyzing low-level and high-level perception tasks, identifying five fundamental limitations, and evaluating solutions including foundation models with zero-shot learning and strong generalization capabilities.

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.

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