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Human activity prediction: Early recognition of ongoing activities from streaming videos

机译:人类活动预测:从流视频中早期识别正在进行的活动

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In this paper, we present a novel approach of human activity prediction. Human activity prediction is a probabilistic process of inferring ongoing activities from videos only containing onsets (i.e. the beginning part) of the activities. The goal is to enable early recognition of unfinished activities as opposed to the after-the-fact classification of completed activities. Activity prediction methodologies are particularly necessary for surveillance systems which are required to prevent crimes and dangerous activities from occurring. We probabilistically formulate the activity prediction problem, and introduce new methodologies designed for the prediction. We represent an activity as an integral histogram of spatio-temporal features, efficiently modeling how feature distributions change over time. The new recognition methodology named dynamic bag-of-words is developed, which considers sequential nature of human activities while maintaining advantages of the bag-of-words to handle noisy observations. Our experiments confirm that our approach reliably recognizes ongoing activities from streaming videos with a high accuracy.
机译:在本文中,我们提出了一种人类活动预测的新方法。人类活动预测是一个概率过程,可从仅包含活动开始(即开始部分)的视频中推断正在进行的活动。目标是能够及早对未完成的活动进行识别,而不是对已完成的活动进行事后分类。对于防止犯罪和危险活动发生所需要的监视系统,活动预测方法特别必要。我们概率性地制定活动预测问题,并介绍为预测而设计的新方法。我们将活动表示为时空特征的整体直方图,从而有效地建模特征分布随时间的变化。开发了一种称为动态词袋的新识别方法,该方法考虑了人类活动的顺序性质,同时保持了词袋在处理嘈杂观测结果方面的优势。我们的实验证实,我们的方法能够可靠地识别流媒体视频中正在进行的活动,并且准确性很高。

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