epSICAR:一种基于模式的序列、交错和并发活动识别方法

Tao Gu, Zhanqing Wu, Xianping Tao, H. Pung, Jian Lu
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引用次数: 255

摘要

从传感器读数中识别人类活动最近引起了普适计算领域的广泛研究兴趣。这项任务特别具有挑战性,因为在现实生活中,人类活动通常不仅以简单(即顺序)的方式执行,而且以复杂(即交错和并发)的方式执行。在本文中,我们提出了一种新的基于模式的序列、交错和并发活动识别方法(epSICAR)。我们利用新兴模式作为区分活动的强大鉴别器。与其他基于复杂活动训练数据集的学习模型不同,我们通过从顺序活动轨迹中挖掘一组新兴模式来构建活动模型,并将这些模型应用于识别顺序的、交错的和并发的活动。我们在一个真实的智能家居中进行了实证研究,评估结果表明,在15秒的时间片下,我们对顺序活动的准确率为90.96%,交错活动的准确率为87.98%,并发活动的准确率为78.58%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
epSICAR: An Emerging Patterns based approach to sequential, interleaved and Concurrent Activity Recognition
Recognizing human activities from sensor readings has recently attracted much research interest in pervasive computing. This task is particularly challenging because human activities are often performed in not only a simple (i.e., sequential), but also a complex (i.e., interleaved and concurrent) manner in real life. In this paper, we propose a novel Emerging Patterns based approach to Sequential, Interleaved and Concurrent Activity Recognition (epSICAR). We exploit Emerging Patterns as powerful discriminators to differentiate activities. Different from other learning-based models built upon the training dataset for complex activities, we build our activity models by mining a set of Emerging Patterns from the sequential activity trace only and apply these models in recognizing sequential, interleaved and concurrent activities. We conduct our empirical studies in a real smart home, and the evaluation results demonstrate that with a time slice of 15 seconds, we achieve an accuracy of 90.96% for sequential activity, 87.98% for interleaved activity and 78.58% for concurrent activity.
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