Near-Miss Event Detection at Railway Level Crossings

Sina Aminmansour, F. Maire, C. Wullems
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引用次数: 8

Abstract

Recent modelling of socio-economic costs by the Australian railway industry in 2010 has estimated the cost of level crossing accidents to exceed AU$116 million annually. To better understand the causal factors of these accidents, a video analytics application is being developed to automatically detect near- miss incidents using forward facing videos from trains. As near-miss events occur more frequently than collisions, by detecting these occurrences there will be more safety data available for analysis. The application that is being developed will improve the objectivity of near- miss reporting by providing quantitative data about the position of vehicles at level crossings through the automatic analysis of video footage. In this paper we present a novel method for detecting near-miss occurrences at railway level crossings from video data of trains. Our system detects and localizes vehicles at railway level crossings. It also detects the position of railways to calculate the distance of the detected vehicles to the railway centerline. The system logs the information about the position of the vehicles and railway centerline into a database for further analysis by the safety data recording and analysis system, to determine whether or not the event is a near-miss. We present preliminary results of our system on a dataset of videos taken from a train that passed through 14 railway level crossings. We demonstrate the robustness of our system by showing the results of our system on day and night videos.
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铁路平道口的近距离探测
2010年,澳大利亚铁路行业最近的社会经济成本模型估计,平交道口事故的成本每年超过1.16亿澳元。为了更好地了解这些事故的原因,人们正在开发一种视频分析应用程序,利用火车上的正面视频自动检测未遂事故。由于未遂事件比碰撞更频繁,通过检测这些事件,将有更多的安全数据可供分析。正在开发的应用程序将通过自动分析录像片段,提供有关平交道口车辆位置的定量数据,从而提高近距离脱靶报告的客观性。本文提出了一种利用列车视频数据检测铁路平交道口近靶事件的新方法。我们的系统检测和定位铁路平交道口的车辆。它还检测铁路的位置,以计算被检测车辆到铁路中心线的距离。该系统将车辆和铁路中心线的位置信息记录到数据库中,供安全数据记录和分析系统进一步分析,以确定该事件是否为未遂事件。我们展示了我们的系统在通过14个铁路平交道口的火车上拍摄的视频数据集上的初步结果。我们通过展示我们的系统在白天和夜间视频上的结果来证明我们系统的鲁棒性。
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