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arXiv 提交日期: 2026-02-05
📄 Abstract - TSBOW: Traffic Surveillance Benchmark for Occluded Vehicles Under Various Weather Conditions

Global warming has intensified the frequency and severity of extreme weather events, which degrade CCTV signal and video quality while disrupting traffic flow, thereby increasing traffic accident rates. Existing datasets, often limited to light haze, rain, and snow, fail to capture extreme weather conditions. To address this gap, this study introduces the Traffic Surveillance Benchmark for Occluded vehicles under various Weather conditions (TSBOW), a comprehensive dataset designed to enhance occluded vehicle detection across diverse annual weather scenarios. Comprising over 32 hours of real-world traffic data from densely populated urban areas, TSBOW includes more than 48,000 manually annotated and 3.2 million semi-labeled frames; bounding boxes spanning eight traffic participant classes from large vehicles to micromobility devices and pedestrians. We establish an object detection benchmark for TSBOW, highlighting challenges posed by occlusions and adverse weather. With its varied road types, scales, and viewpoints, TSBOW serves as a critical resource for advancing Intelligent Transportation Systems. Our findings underscore the potential of CCTV-based traffic monitoring, pave the way for new research and applications. The TSBOW dataset is publicly available at: this https URL.

顶级标签: computer vision benchmark data
详细标签: traffic surveillance object detection adverse weather occluded vehicles dataset 或 搜索:

TSBOW:多种天气条件下被遮挡车辆的交通监控基准数据集 / TSBOW: Traffic Surveillance Benchmark for Occluded Vehicles Under Various Weather Conditions


1️⃣ 一句话总结

这项研究创建了一个名为TSBOW的大规模、多天气交通监控数据集,旨在帮助开发更强大的AI系统,以在恶劣天气和车辆被遮挡的情况下,从监控视频中准确检测出行人、车辆等各种交通参与者。

源自 arXiv: 2602.05414