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Detecting Events in Crowded Scenes using Tracklet Plots

机译:使用ROCKET图中检测拥挤场景中的事件

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The main contribution of this paper is a compact representation of the 'short tracks' or tracklets present in a time window of a given video input, which allows to analyse and detect different crowd events. To proceed, first, tracklets are extracted from a time window using a particle filter multi-target tracker. After noise removal, the tracklets are plotted into a square image by normalising their lengths to the size of the image. Different histograms are then applied to this compact representation. Thus, different events in a crowd are detected via a Bag-of-words modelling. Novel video sequences, can then be analysed to detect whether an abnormal or chaotic situation is present. The whole algorithm is tested with our own dataset, also introduced in the paper.
机译:本文的主要贡献是在给定视频输入的时间窗口中存在的“短轨道”或轨迹的紧凑表示,其允许分析和检测不同的人群事件。要继续,首先,使用粒子滤波器多目标跟踪器从时间窗口中提取轨迹。除噪声后,通过将它们的长度归一化到图像的大小,将轨迹绘制到正方形图像中。然后将不同的直方图应用于这种紧凑的表示。因此,通过单词袋建模检测人群中的不同事件。然后可以分析新的视频序列以检测是否存在异常或混沌情况。整个算法用我们自己的数据集进行了测试,还在纸质中介绍。

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