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Adaptive sliding window segmentation for physical activity recognition using a single tri-axial accelerometer

机译:用于使用单个三轴加速度计的物理活动识别的自适应滑动窗分割

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Previous studies on physical activity recognition have utilized various fixed window sizes for signal segmentation targeting specific activities. Naturally, an optimum window size varies depending on the characteristics of activity signals and fixed window size will not produce good segmentation for all activities. This paper presents a novel approach to activity signal segmentation for physical activity recognition. Central to the approach is that the window size is adaptively adjusted according to the probability of the signal belongs to a particular activity to achieve the most effective segmentation. In addition, an activity transition diagram for activity recognition is developed to validate the activity transition and improve recognition accuracy. The adaptive sliding window segmentation algorithm and the role of activity transition diagram are described in the context of physical activity recognition. The approach recognizes not only well defined static and dynamic activities, but also transitional activities. The presented approach has been implemented, evaluated and compared with an existing state-of-the-art approach by using internal and public datasets which contains activity signals of dynamic, static and transitional activities. Results have shown that the proposed adaptive sliding window segmentation achieves overall accuracy of 95.4% in all activities considered in the experiments compared to the existing approach which achieved an overall accuracy of 89.9%. The proposed approach achieved an overall accuracy of 96.5% compared to 91.9% overall accuracy with the existing approach when tested on the public dataset. (C) 2016 Elsevier B.V. All rights reserved.
机译:以前关于物理活动识别的研究利用了针对特定活动的信号分割的各种固定窗口尺寸。当然,最佳窗口大小根据活动信号的特性而变化,并且固定窗口大小不会为所有活动产生良好的细分。本文提出了一种新的活动信号分割方法,用于物理活动识别。该方法的核心是根据信号的概率自适应地调整窗口大小属于特定活动以实现最有效的分割。此外,开发了一种用于活动识别的活动转换图以验证活动转换并提高识别准确性。在物理活动识别的背景下描述了自适应滑动窗口分割算法和活动转换图的作用。该方法不仅认识到明确定义的静态和动态活动,还识别过渡活动。通过使用包含动态,静态和过渡活动的活动信号的内部和公共数据集来实现,评估和比较所提出的方法。结果表明,与现有方法相比,所提出的自适应滑动窗分割在实验中考虑的所有活动中实现了95.4%的总精度为95.4%。该方法的整体准确性为96.5%,而在公共数据集上测试时,现有方法的总体准确性为91.9%。 (c)2016年Elsevier B.v.保留所有权利。

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