铁路过境点保护视频分析系统

Guangliang Zhao, Ashok Pandey, Ming-Ching Chang, Siwei Lyu
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引用次数: 0

摘要

随着人工智能深度学习的兴起,基于深度神经网络的视频监控可以对车辆和行人进行实时检测和跟踪。提出了一种监控铁路道口的视频分析系统,为铁路道口提供安全保护。我们的系统可以通过视觉检测自动确定铁路道口的状态,并通过检测和跟踪过往车辆来分析交通,从而监督一系列与铁路运输相关的安全事件。假设相机视图固定,在系统设置过程中可以对每个站点手动标注一次闸门RoI,然后自动检测闸门状态。使用YOLOv4检测车辆,使用DeepSORT进行多目标跟踪。使用基于规则的触发持续监控与安全相关的事件,包括非法侵入。实验评估是在Youtube轨道交叉数据集以及私有数据集上进行的。在38个视频的76分钟私有数据集上,我们的系统可以成功检测出58个注释事件中的56个事件。在14.21小时的公共视频数据集中,它检测到62个事件中的58个。
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A Video Analytic System for Rail Crossing Point Protection
With the rise of AI deep learning, video surveillance based on deep neural networks can provide real-time detection and tracking of vehicles and pedestrians. We present a video analytic system for monitoring railway crossing and providing security protection for rail intersections. Our system can automatically determine the rail-crossing gate status via visual detection and analyze traffic by detecting and tracking passing vehicles, thus to oversee a set of rail-transportation related safety events. Assuming a fixed camera view, each gate RoI can be manually annotated once for each site during system setup, and then gate status can be automatically detected afterwards. Vehicles are detected using YOLOv4 and multi-target tracking is performed using DeepSORT. Safety-related events including trespassing are continuously monitored using rule-based triggering. Experimental evaluation is performed on a Youtube rail crossing dataset as well as a private dataset. On the private dataset of 76 total minutes from 38 videos, our system can successfully detect all 56 events out of 58 annotated events. On the public dataset of 14.21 hrs of videos, it detects 58 out of 62 events.
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