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Object Detection at Level Crossing Using Deep Learning

机译:使用深度学习级别交叉的对象检测

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摘要

Multiple projects within the rail industry across different regions have been initiated to address the issue of over-population. These expansion plans and upgrade of technologies increases the number of intersections, junctions, and level crossings. A level crossing is where a railway line is crossed by a road or right of way on the level without the use of a tunnel or bridge. Level crossings still pose a significant risk to the public, which often leads to serious accidents between rail, road, and footpath users and the risk is dependent on their unpredictable behavior. For Great Britain, there were three fatalities and 385 near misses at level crossings in 2015–2016. Furthermore, in its annual safety report, the Rail Safety and Standards Board (RSSB) highlighted the risk of incidents at level crossings during 2016/17 with a further six fatalities at level crossings including four pedestrians and two road vehicles. The relevant authorities have suggested an upgrade of the existing sensing system and the integration of new novel technology at level crossings. The present work addresses this key issue and discusses the current sensing systems along with the relevant algorithms used for post-processing the information. The given information is adequate for a manual operator to make a decision or start an automated operational cycle. Traditional sensors have certain limitations and are often installed as a “single sensor”. The single sensor does not provide sufficient information; hence another sensor is required. The algorithms integrated with these sensing systems rely on the traditional approach, where background pixels are compared with new pixels. Such an approach is not effective in a dynamic and complex environment. The proposed model integrates deep learning technology with the current Vision system (e.g., CCTV to detect and localize an object at a level crossing). The proposed sensing system should be able to detect and localize particular objects (e.g., pedestrians, bicycles, and vehicles at level crossing areas.) The radar system is also discussed for a “two out of two” logic interlocking system in case of fail-mechanism. Different techniques to train a deep learning model are discussed along with their respective results. The model achieved an accuracy of about 88% from the MobileNet model for classification and a loss metric of 0.092 for object detection. Some related future work is also discussed.
机译:已经启动了跨越不同地区的铁路行业内的多个项目,以解决超过人口的问题。这些扩展计划和技术升级增加了交叉口,交叉点和级别过境的数量。一个水平交叉是铁路线在没有使用隧道或桥的情况下通过道路或路径向右交叉。级别过境仍然对公众构成了重大风险,这往往导致铁路,道路和人行道用户之间的严重事故,风险取决于他们不可预测的行为。对于英国,2015-2016的级别过渡有三个死亡和385次死亡。此外,在其年度安全报告中,铁路安全和标准委员会(RSSB)突出了2016/17年间过境点的事件的风险,在包括四个行人和两辆公路车辆的级别交叉口中有六个死亡。有关当局建议升级现有的传感系统和新型新技术在级交叉口的整合。本工作解决了该关键问题,并讨论了当前的传感系统以及用于后处理信息的相关算法。给定的信息足以让手动操作员作出决定或启动自动操作周期。传统传感器具有一定的限制,通常作为“单个传感器”安装。单个传感器不提供足够的信息;因此需要另一个传感器。与这些传感系统集成的算法依赖于传统方法,其中将背景像素与新像素进行比较。这种方法在动态和复杂的环境中无效。该建议的模型将深度学习技术与当前视觉系统相结合(例如,CCTV,以在级别交叉处检测和定位对象)。所提出的传感系统应该能够检测和定位特定的物体(例如,行人,自行车和级别交叉区域的车辆。)在失败的情况下也讨论了雷达系统,用于“两个”逻辑互锁系统中的“两个”逻辑互锁系统。机制。与他们各自的结果一起讨论了培训深层学习模型的不同技术。该模型从MobileNet模型进行了约88%的准确度,用于对象检测的分类和0.092的损耗度量。还讨论了一些相关的未来工作。

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