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Dynamic view selection for multi-camera action recognition

机译:动态视图选择可实现多摄像机动作识别

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摘要

For multi-camera human action recognition methods, there is often a trade-off between classification accuracy and computational efficiency. Methods that generate 3D models or query all of the cameras in the network for each target are often computationally expensive. In this paper, we present an action recognition method that operates in a multi-camera environment, but dynamically selects a single camera at a time. We learn the relative utility of a particular viewpoint compared with switching to a different available camera in the network for future classification. We cast this learning problem as a Markov Decision Process, and incorporate reinforcement learning to estimate the value of the possible view-shifts. On two benchmark multi-camera action recognition datasets, our method outperforms approaches that incorporate all available cameras in both speed and classification accuracy.
机译:对于多摄像机人类动作识别方法,通常会在分类精度和计算效率之间进行权衡。生成3D模型或为每个目标查询网络中所有摄像机的方法在计算上通常很昂贵。在本文中,我们提出了一种动作识别方法,该方法可在多摄像机环境中运行,但一次动态选择一个摄像机。与为将来的分类而切换到网络中的其他可用摄像机相比,我们了解了特定视点的相对效用。我们将此学习问题视为马尔可夫决策过程,并结合强化学习来估计可能发生的视线偏移的值。在两个基准的多摄像机动作识别数据集上,我们的方法在速度和分类精度上均优于将所有可用摄像机合并的方法。

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