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Weighted averaging fusion for multi-view skeletal data and its application in action recognition

机译:多视图骨骼数据的加权平均融合及其在动作识别中的应用

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摘要

Existing studies in skeleton-based action recognition mainly utilise skeletal data taken from a single camera. Since the quality of skeletal tracking of a single camera is noisy and unreliable, however, combining data from multiple cameras can improve the tracking quality and hence increase the recognition accuracy. In this study, the authors propose a method called weighted averaging fusion which merges skeletal data of two or more camera views. The method first evaluates the reliability of a set of corresponding joints based on their distances to the centroid, then computes the weighted average of selected joints, that is, each joint is weighted by the overall reliability of the camera reporting the joint. Such obtained, fused skeletal data are used as the input to the action recognition step. Experiments using various frame-level features and testing schemes show that more than 10% improvement can be achieved in the action recognition accuracy using these fused skeletal data as compared with the single-view case.
机译:基于骨骼的动作识别的现有研究主要利用从单个摄像机获取的骨骼数据。但是,由于单个摄像机的骨骼跟踪质量嘈杂且不可靠,因此,合并来自多个摄像机的数据可以提高跟踪质量,从而提高识别精度。在这项研究中,作者提出了一种称为加权平均融合的方法,该方法可以合并两个或更多摄影机视图的骨骼数据。该方法首先根据一组相应关节到质心的距离来评估它们的可靠性,然后计算选定关节的加权平均值,即,每个关节都由报告该关节的摄像机的整体可靠性加权。这样获得的融合骨骼数据被用作动作识别步骤的输入。使用各种帧级特征和测试方案的实验表明,与单视图情况相比,使用这些融合的骨骼数据可以将动作识别精度提高10%以上。

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