WiEnhance:利用WiFi信号实现人体活动识别中的数据增强

Jin Zhang, Fuxiang Wu, Wen Hu, Qieshi Zhang, Weitao Xu, Jun Cheng
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引用次数: 13

摘要

近年来,利用WiFi信号识别各种人类活动的研究已经投入了大量的精力。个体在WiFi频谱中的肢体运动可能会干扰无线信号的传播,这表现为活动识别的独特模式。现有的方法虽然在某些情况下产生了合理的性能,但却忽视了一个主要的挑战。个体所进行的活动在不同的情境和时间下,速度通常是不一致的。此外,人体反射的无线信号通常携带着该主体特有的大量信息。训练于特定个体的活动识别模型在应用于预测另一个个体的活动时可能效果不佳。为了应对这一挑战,我们提出了WiEnhance,这是一种基于WiFi的活动识别系统,可以综合各种活动数据,减轻活动不一致和特定主题问题的影响。我们进行了大量的实验,并显示在活动识别方面平均提高了15.6%的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WiEnhance: Towards Data Augmentation in Human Activity Recognition Using WiFi Signal
Recent research have devoted significant efforts on the utilization of WiFi signals to recognize various human activities. An individual's limb motions in the WiFi spectrum could interfere wireless signal propagation which manifested as unique patterns for activities recognition. Existing approaches though yielding reasonable performance in certain cases, are ignorant of a major challenge. The performed activities of the individual normally have inconsistent speed in different situations and time. Besides that the wireless signal reflected by human bodies normally carry substantial information that is specific to that subject. The activity recognition model trained on a certain individual may not work well when being applied to predict another individual's activities. To address this challenge, we propose WiEnhance, a WiFi based activity recognition system that synthesize variant activities data and mitigate the impact of activity inconsistency and subject-specific issues. We conduct extensive experiments and show an average 15.6% performance improvement on activity recognition.
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