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A Comparison of Methods to Detect People Flow Using Video Processing

机译:使用视频处理检测人流的方法的比较

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We study a set of methods to detect people flow using video processing. As a source, we use surveillance cameras, located above pedestrian zones. As a basic approach, we have chosen detection of individuals with tracking algorithm, based on Kalman filtering. For the study, we have chosen the following detectors: ACF (Caltech), ACF (INRIA), Viola-Jones, and Histogram of Oriented Gradients (HOG). We compared the results of the detectors with a manual counting of people in the frame. The numerical experiments have shown that the accuracy of calculations depends on the direction of the flow, crowd density, and frame size. For tested video fragments, ACF algorithms have shown the best results. We also performed a statistical analysis of detecting errors.
机译:我们研究了一套使用视频处理检测人员流的方法。作为来源,我们使用位于行人专用区上方的监视摄像机。作为一种基本方法,我们选择了基于卡尔曼滤波的跟踪算法来检测个体。为了进行研究,我们选择了以下检测器:ACF(Caltech),ACF(INRIA),Viola-Jones和定向梯度直方图(HOG)。我们将检测器的结果与框架中人员的手动计数进行了比较。数值实验表明,计算的准确性取决于流动方向,人群密度和框架尺寸。对于经过测试的视频片段,ACF算法显示了最佳结果。我们还对检测错误进行了统计分析。

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