Convolutional Neural Network and LSTM Applied To Abnormal Behaviour Detection From Highway Footage

Rafael Marinho de Andrade, Elcio Hideti Shiguemori, Rafael Duarte Coelho dos Santos
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Abstract

ABSTRACT Relying on computer vision, many clever things are possible in order to make the world safer and optimized on resource management, especially considering time and attention as manageable resources, once the modern world is very abundant in cameras from inside our pockets to above our heads while crossing the streets. Thus, automated solutions based on computer vision techniques to detect, react or even prevent relevant events such as robbery, car crashes and traffic jams can be accomplished and implemented for the sake of both logistical and surveillance improvements. In this paper, we present an approach for vehicles’ abnormal behaviours detection from highway footages, in which the vectorial data of the vehicles’ displacement are extracted directly from surveillance cameras footage through object detection and tracking with a deep convolutional neural network and inserted into a long-short term memory neural network for behaviour classification. The results show that the classifications of behaviours are consistent and the same principles may be applied on other trackable objects and scenarios as well.
卷积神经网络和LSTM在高速公路录像异常行为检测中的应用
依靠计算机视觉,许多聪明的事情成为可能,以使世界更安全,优化资源管理,特别是考虑到时间和注意力作为可管理的资源,一旦现代世界的摄像头非常丰富,从我们的口袋里到我们过马路时头顶上的摄像头。因此,基于计算机视觉技术的自动化解决方案可以检测、反应甚至预防抢劫、车祸和交通堵塞等相关事件,从而实现后勤和监控方面的改进。本文提出了一种基于高速公路影像的车辆异常行为检测方法,该方法通过深度卷积神经网络对目标进行检测和跟踪,直接从监控摄像机影像中提取车辆位移矢量数据,并将其插入长短期记忆神经网络中进行行为分类。结果表明,行为分类是一致的,同样的原则也可以应用于其他可跟踪对象和场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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