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Unknown Crowd Event Detection from Phase-Based Statistics

机译:从基于阶段的统计数据检测未知的人群事件检测

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A new approach for unknown event detection in videos with dense motion, such as crowds or dynamic textures, is developed, without requiring the estimation of optical flow, with no prior knowledge about normal or abnormal events, and with no training. The proposed method directly extracts motion statistics from the phase of the video's Fourier transform and detects changes in them, and in the video, by applying sequential statistical change detection theory. Focus is placed on the motion component, as videos of densely moving entities, such as temporal textures and crowds, often have a very similar appearance, but different dynamic features. Experiments with synthetically generated datasets demonstrate the method's operation under various conditions, while experiments on a recently introduced crowd dataset show that it succeeds at detecting new events in videos of crowds, with no training, and no prior knowledge of the location of new events in space and time.
机译:开发了一种具有密集运动的视频的未知事件检测的新方法,例如人群或动态纹理,而无需估计光流,没有关于正常或异常事件的先验知识,并且没有培训。所提出的方法直接从视频傅里叶变换的阶段提取运动统计,并通过应用顺序统计变化检测理论来检测它们中的变化和视频中。重点放在运动组件上,作为诸如颞纹理和人群的密集移动实体的视频,通常具有非常相似的外观,但动态特征不同。综合生成的数据集的实验在各种条件下展示了该方法的操作,而最近推出的人群数据集的实验表明它成功地检测人群视频中的新事件,没有培训,并且没有培训的空间中新事件的位置。和时间。

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