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A class of space-varying parametric motion fields for human activity recognition

机译:一类用于人类活动识别的时空参量运动场

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Video cameras monitoring human activities in public spaces are commonplace in cities worldwide. Such monitoring task is important for safety and security purposes but is also extremely challenging. In this paper, we propose a class of algorithms for far-field human activity recognition, a central task in video surveillance. More specifically, we explore a class of parametric motion vector fields learned from the trajectories described by people in real-world scenarios. The work proposed herein is a space dependent framework, in sense that the vector fields depend on the pedestrian position. Thus, the model is flexible leading to an expressive description of complex trajectories. Also, a model selection strategy is addressed to automatically choose the appropriate number of underlying motion fields presented in the trajectories. Experimental evaluation is conducted in real settings testifying the usefulness of the proposed approach for human activity recognition.
机译:监视公共场所人类活动的摄像机在世界范围内的城市中很普遍。这样的监视任务对于安全性和安全性而言很重要,但是也极具挑战性。在本文中,我们提出了一类用于远距离人类活动识别的算法,这是视频监控的核心任务。更具体地说,我们探索了一类从真实场景中人们所描述的轨迹中学到的参数运动矢量场。从向量场取决于行人位置的意义上来说,本文提出的工作是一个与空间有关的框架。因此,该模型具有灵活性,可以表达复杂的轨迹。而且,提出了一种模型选择策略以自动选择在轨迹中呈现的适当数量的基础运动场。在真实环境中进行了实验评估,证明了所提出的方法对于人类活动识别的有用性。

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