ALSensing:基于主动学习的WiFi人类活动识别

Guangzhi Zhao, Zhipeng Zhou, Yutao Huang, A. Nayak, Wei Gong, Haoquan Zhou
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引用次数: 0

摘要

近年来,人类活动识别(Human Activity Recognition, HAR)显示出了巨大的价值,并在深度学习的帮助下得到了进一步的发展。然而,现有的HAR系统使用深度学习方法来实现理想的识别精度,严重依赖于大量标记的训练样本。不幸的是,它需要大量的人力,并且对于实际应用程序来说是不现实的。在本文中,我们提出了一种将主动学习与基于wifi的HAR相结合的新系统。该系统能够用有限数量的标记训练样本在HAR中构建一个良好的活动识别器。因此,我们称该系统为ALSensing。据我们所知,ALSensing是第一个将主动学习应用于基于wifi的HAR的系统。我们使用商用WiFi设备实现ALSensing,并在几个不同的环境中使用实际数据对其进行评估。实验结果表明,ALSensing在使用3.7%的训练样本时识别准确率达到52.83%,使用15%的训练样本时识别准确率达到58.97%,使用现有方法预测的基线在使用100%的训练样本时识别准确率达到62.19%。当ALSensing的性能与基线相似时,所需的标记样本要比基线少得多。
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ALSensing: Human Activity Recognition using WiFi based on Active Learning
Over the past years, Human Activity Recognition (HAR) has shown its great value and has been further developed with the help of deep learning. However, existing HAR systems that use deep learning methods to achieve the ideal accuracy of recognition heavily rely on massive amounts of labeled training samples. Unfortunately, it requires considerable human effort and is unrealistic for real-life applications. In this paper, we propose a novel system, which combines active learning with WiFi-based HAR. The system is capable of building a good activities recognizer in HAR with a limited amount of labeled training samples. We thus call the system ALSensing. To the best of our knowledge, ALSensing is the first system to apply active learning to WiFi-based HAR. We implement ALSensing using commercial WiFi devices and evaluated it with realistic data in several different environments. Our experimental results show that ALSensing achieves 52.83% recognition accuracy using 3.7% training samples, 58.97% recognition accuracy using 15% training samples and the baseline predicted with the existing method achieves 62.19% recognition accuracy using 100% training samples. When the performance of ALSensing is similar to that of the baseline, the required labeled samples are much less than that of the baseline.
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