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Modified RPCA with Hessian matrix for object detection in video surveillance on highways

机译:修正的具有Hessian矩阵的RPCA,用于高速公路视频监控中的目标检测

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Video surveillance is an active research topic in computer vision research area to detect the abnormal behavior of vehicle and pedestrian on the highways in order to reduce the collision between them. Statistical methods are helpful in identifying the abnormal behavior of vehicle and human in order to avoid the accident on the highways. To build an effective automatic system that should determine the number of pedestrian and vehicles, if there are any, then their distance and speed needs to be calculated. Detecting object and calculating their speed and distance is challenging task because objects are moving fast on highways, and appear at different scales. In this paper, we propose a Modified RPCA with Hessian matrix for vehicle and pedestrian detection. By using an SVM classifier, it will be able to classify the objects in the current frame. Distance is calculated between the vehicle and pedestrian, speed and their locations. If the distance value is below the defined coverage (50 meters) their performance is evaluated and compared between RPCA and Modified RPCA. The modified RPCA is more efficient than RPCA.
机译:视频监控是计算机视觉研究领域中的一项活跃的研究主题,旨在检测车辆和行人在高速公路上的异常行为,以减少它们之间的碰撞。统计方法有助于识别车辆和人的异常行为,从而避免在高速公路上发生事故。要建立一个有效的自动系统,该系统应确定行人和车辆的数量(如果有),则需要计算它们的距离和速度。检测物体并计算其速度和距离是一项具有挑战性的任务,因为物体在高速公路上快速移动并以不同的比例出现。在本文中,我们提出了一种修正的具有Hessian矩阵的RPCA,用于车辆和行人检测。通过使用SVM分类器,它将能够对当前帧中的对象进行分类。计算车辆与行人之间的距离,速度及其位置。如果距离值低于定义的覆盖范围(50米),则会评估其性能并在RPCA和Modified RPCA之间进行比较。修改后的RPCA比RPCA更有效。

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