traffic anomaly
Lane-Wise Highway Anomaly Detection
Qiu, Mei, Reindl, William Lorenz, Chen, Yaobin, Chien, Stanley, Hu, Shu
This paper proposes a scalable and interpretable framework for lane-wise highway traffic anomaly detection, leveraging multi-modal time series data extracted from surveillance cameras. Unlike traditional sensor-dependent methods, our approach uses AI-powered vision models to extract lane-specific features, including vehicle count, occupancy, and truck percentage, without relying on costly hardware or complex road modeling. We introduce a novel dataset containing 73,139 lane-wise samples, annotated with four classes of expert-validated anomalies: three traffic-related anomalies (lane blockage and recovery, foreign object intrusion, and sustained congestion) and one sensor-related anomaly (camera angle shift). Our multi-branch detection system integrates deep learning, rule-based logic, and machine learning to improve robustness and precision. Extensive experiments demonstrate that our framework outperforms state-of-the-art methods in precision, recall, and F1-score, providing a cost-effective and scalable solution for real-world intelligent transportation systems.
- North America > United States > Indiana (0.05)
- North America > United States > California (0.04)
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.04)
- Transportation > Infrastructure & Services (1.00)
- Transportation > Ground > Road (1.00)
CoT-VLM4Tar: Chain-of-Thought Guided Vision-Language Models for Traffic Anomaly Resolution
Ren, Tianchi, Hu, Haibo, Zuo, Jiacheng, Chen, Xinhong, Wang, Jianping, Xue, Chun Jason, Wu, Jen-Ming, Guan, Nan
CoT -VLM4T ar: Chain-of-Thought Guided Vision-Language Models for Traffic Anomaly Resolution Tianchi Ren, 1, Haibo Hu, 2, Jiacheng Zuo 3, Xinhong Chen 4, Jianping Wang 5, Chun Jason Xue 6, Jen-Ming Wu 7, Nan Guan, 8 Abstract -- With the acceleration of urbanization, modern urban traffic systems are becoming increasingly complex, leading to frequent traffic anomalies. These anomalies encompass not only common traffic jams but also more challenging issues such as phantom traffic jams, intersection deadlocks, and accident liability analysis, which severely impact traffic flow, vehicular safety, and overall transportation efficiency. Currently, existing solutions primarily rely on manual intervention by traffic police or artificial intelligence-based detection systems. However, these methods often suffer from response delays and inconsistent management due to inadequate resources, while AI detection systems, despite enhancing efficiency to some extent, still struggle to handle complex traffic anomalies in a real-time and precise manner . T o address these issues, we propose CoT -VLM4T ar: (Chain of Thought Visual-Language Model for Traffic Anomaly Resolution), this innovative approach introduces a new chain-of-thought to guide the VLM in analyzing, reasoning, and generating solutions for traffic anomalies with greater reasonable and effective solution, and to evaluate the performance and effectiveness of our method, we developed a closed-loop testing framework based on the CARLA simulator . Furthermore, to ensure seamless integration of the solutions generated by the VLM with the CARLA simulator, we implement an itegration module that converts these solutions into executable commands. Our results demonstrate the effectiveness of VLM in the resolution of real-time traffic anomalies, providing a proof-of-concept for its integration into autonomous traffic management systems.
- Asia > China > Hong Kong (0.04)
- South America > Chile > Santiago Metropolitan Region > Santiago Province > Santiago (0.04)
- North America > United States > Michigan > Washtenaw County > Ann Arbor (0.04)
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