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Hierarchical Activity Recognition Using Smart Watches and RGB-Depth Cameras

机译:使用智能手表和RGB深度相机进行分层活动识别

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摘要

Human activity recognition is important for healthcare and lifestyle evaluation. In this paper, a novel method for activity recognition by jointly considering motion sensor data recorded by wearable smart watches and image data captured by RGB-Depth (RGB-D) cameras is presented. A normalized cross correlation based mapping method is implemented to establish association between motion sensor data with corresponding image data from the same person in multi-person situations. Further, to improve the performance and accuracy of recognition, a hierarchical structure embedded with an automatic group selection method is proposed. Through this method, if the number of activities to be classified is changed, the structure will be changed correspondingly without interaction. Our comparative experiments against the single data source and single layer methods have shown that our method is more accurate and robust.
机译:人类活动识别对于医疗保健和生活方式评估很重要。本文提出了一种新的活动识别方法,该方法可以同时考虑可穿戴智能手表记录的运动传感器数据和RGB-Depth(RGB-D)相机捕获的图像数据。实现了基于归一化互相关的映射方法,以在多人情况下建立运动传感器数据与来自同一人的相应图像数据之间的关联。此外,为了提高识别的性能和准确性,提出了一种嵌入有自动组选择方法的分层结构。通过这种方法,如果要分类的活动数改变了,结构将相应地改变而无需交互。我们对单数据源和单层方法的比较实验表明,我们的方法更加准确和可靠。

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