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ADL Classification Based on Autocorrelation Function of Inertial Signals

机译:基于惯性信号自相关函数的ADL分类

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Recognition of human activities is one of the most promising research areas in artificial intelligence. This has come along with the technological advancement in sensing technologies as well as the high demand for applications that are mobile, context-aware, and real-time. In this paper, we use a smart watch to collect sensory data for 14 ADL activities. We collect three types of sensory signals: acceleration, angular velocity, and rotation displacement; each is a tri-axial signal. From each given signal we compute the autocorrelation function up to certain lag and take these computed values as representative features of the given signal. We then feed these features to a random-forest-based classifier for training and prediction. We experiment with different combinations of sensory data. The joint use of acceleration with angular velocity has achieved the best performance in prediction accuracy which reaches about 80% for the whole set of 14 activities.
机译:对人类活动的认识是人工智能中最有前途的研究领域之一。伴随着传感技术的技术进步,以及对移动,上下文感知和实时应用的高需求。在本文中,我们使用智能手表收集14种ADL活动的感觉数据。我们收集三种类型的感官信号:加速度,角速度和旋转位移;每个都是三轴信号。从每个给定信号中,我们计算到一定滞后的自相关函数,并将这些计算值作为给定信号的代表特征。然后,我们将这些功能提供给基于随机森林的分类器进行训练和预测。我们对感觉数据的不同组合进行了实验。加速度与角速度的联合使用在预测精度方面达到了最佳性能,在整个14项活动中达到了约80%。

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