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Detecting anomalous events at railway level crossings

机译:检测铁路平交道口的异常事件

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摘要

Collisions between pedestrians and vehicles continue to be a major problem throughout the world. Pedestrians trying to cross roads and railway tracks without any caution are often highly susceptible to collisions with vehicles and trains. Continuous financial, human and other losses have prompted transport related organizations to come up with various solutions addressing this issue. However, the quest for new and significant improvements in this area is still ongoing. This work addresses this issue by building a general framework using computer vision techniques to automatically monitor pedestrian movements in such high-risk areas to enable better analysis of activity, and the creation of future alerting strategies. As a result of rapid development in the electronics and semi-conductor industry there is extensive deployment of CCTV cameras in public places to capture video footage. This footage can then be used to analyse crowd activities in those particular places. This work seeks to identify the abnormal behaviour of individuals in video footage. In this work we propose using a Semi-2D Hidden Markov Model (HMM), Full-2D HMM and Spatial HMM to model the normal activities of people. The outliers of the model (i.e. those observations with insufficient likelihood) are identified as abnormal activities. Location features, flow features and optical flow textures are used as the features for the model. The proposed approaches are evaluated using the publicly available UCSD datasets, and we demonstrate improved performance using a Semi-2D Hidden Markov Model compared to other state of the art methods. Further we illustrate how our proposed methods can be applied to detect anomalous events at rail level crossings.
机译:行人与车辆之间的碰撞仍然是世界范围内的主要问题。试图在不加任何警告的情况下越过道路和铁轨的行人往往极易受到车辆和火车相撞的伤害。持续的财务,人员和其他损失促使交通运输相关组织提出了解决此问题的各种解决方案。但是,在这方面寻求新的重大改进的工作仍在进行中。这项工作通过使用计算机视觉技术建立通用框架来自动监视此类高风险区域中的行人运动,从而更好地分析活动并创建未来的警报策略,从而解决了这一问题。由于电子和半导体行业的飞速发展,在公共场所广泛部署了闭路电视摄像机来捕获视频镜头。然后可以使用这些素材来分析那些特定地方的人群活动。这项工作旨在确定录像中个人的异常行为。在这项工作中,我们建议使用半二维隐马尔可夫模型(HMM),全二维HMM和空间HMM来模拟人们的正常活动。模型的异常值(即那些可能性不足的观测值)被识别为异常活动。位置特征,流动特征和光学流动纹理被用作模型的特征。使用公开可用的UCSD数据集对提出的方法进行了评估,并且与其他现有方法相比,我们使用Semi-2D隐马尔可夫模型展示了改进的性能。进一步地,我们说明了我们提出的方法如何可以应用于检测铁路平交道口的异常事件。

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