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Online data segmentation based on clustering algorithm and autoregressive model for human actions recognition

机译:基于聚类算法和自回归模型的人类动作识别在线数据分割

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摘要

Recognition of human actions by using wearable sensors has become an important research field. Segmentation to sensor data is a vital issue in reconstructing and understanding human daily actions, and strongly affects the accuracy of human actions recognition. Traditional online segmentation approaches are mostly designed for one-dimensional sensor data, which greatly limits these approaches to multi-dimensional wearable sensor data. In this study, an online data segmentation approach based on clustering algorithm and autoregressive model (AR) is proposed, which can dynamically choose suitable dimensions. First, rough classification is done by clustering algorithm. Then, ARs are used to determine the changing point of different human actions. Precision, recall and F-measure are introduced to evaluate the segmentation results. The experimental results demonstrated that the proposed method outperforms some existing approaches, including HMMs, adaptive models and fixed-threshold method. By using the proposed method, the accuracy of human actions recognition reached 86.5% against ground-truth, which was better than other methods mentioned in this paper.
机译:通过使用可穿戴式传感器来识别人类动作已成为重要的研究领域。传感器数据的分割是重建和理解人类日常行为的重要问题,并且极大地影响人类行为识别的准确性。传统的在线分割方法主要是针对一维传感器数据而设计的,这极大地将这些方法限制为多维可穿戴传感器数据。提出了一种基于聚类算法和自回归模型的在线数据分割方法,该方法可以动态选择合适的维数。首先,通过聚类算法进行粗分类。然后,使用AR来确定不同人类行为的变化点。引入精度,查全率和F量度以评估分割结果。实验结果表明,该方法优于HMM,自适应模型和固定阈值方法。通过使用该方法,人为动作识别的准确率达到了地面真相的86.5%,优于本文所述的其他方法。

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