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A Real-Time Human Action Recognition System Using Depth and Inertial Sensor Fusion

机译:深度与惯性传感器融合的实时人体动作识别系统

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摘要

This paper presents a human action recognition system that runs in real time and simultaneously uses a depth camera and an inertial sensor based on a previously developed sensor fusion method. Computationally efficient depth image features and inertial signals features are fed into two computationally efficient collaborative representative classifiers. A decision-level fusion is then performed. The developed real-time system is evaluated using a publicly available multimodal human action recognition data set by considering a comprehensive set of human actions. The overall classification rate of the developed real-time system is shown to be >97%, which is at least 9% higher than when each sensing modality is used individually. The results from both offline and real-time experimentations demonstrate the effectiveness of the system and its real-time throughputs.
机译:本文提出了一种实时运行的人类动作识别系统,该系统同时使用基于先前开发的传感器融合方法的深度相机和惯性传感器。计算有效的深度图像特征和惯性信号特征被馈送到两个计算有效的协作代表分类器中。然后执行决策级融合。通过考虑一组全面的人类行为,使用可公开获得的多模式人类行为识别数据集对开发的实时系统进行评估。所开发的实时系统的总体分类率显示为> 97%,这比单独使用每种传感方式时至少高出9%。离线和实时实验的结果证明了系统的有效性及其实时吞吐量。

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