In this article we present SHARP, an original approach for obtaining human activity recognition (HAR) through the use of commercial IEEE 802.11 (Wi-Fi) devices. SHARP grants the possibility to discern the activities of different persons, across different time-spans and environments. To achieve this, we devise a new technique to clean and process the channel frequency response (CFR) phase of the Wi-Fi channel, obtaining an estimate of the Doppler shift at a radio monitor device. The Doppler shift reveals the presence of moving scatterers in the environment, while not being affected by (environment-specific) static objects. SHARP is trained on data collected as a person performs seven different activities in a single environment. It is then tested on different setups, to assess its performance as the person, the day and/or the environment change with respect to those considered at training time. In the worst-case scenario, it reaches an average accuracy higher than 95%, validating the effectiveness of the extracted Doppler information, used in conjunction with a learning algorithm based on a neural network, in recognizing human activities in a subject and environment independent way. The collected CFR dataset and the code are publicly available for replicability and benchmarking purposes.
翻译:在本文中,我们介绍SHARP,这是通过使用商业IEE 802.11(Wi-Fi)装置获得人类活动识别(HAR)的原始方法。SHARP为辨别不同时间跨和环境的不同人员的活动提供了可能性。为此,我们设计了一种新的技术来清理和处理Wi-Fi频道频道频道频率反应(CFR)阶段,在无线电监视器设备上对Dopiller转换的估计。多普勒转换显示在环境中存在移动散射器,但不受(环境特定)静态物体的影响。SHARP接受个人收集的数据培训,在单一环境中进行七种不同活动。然后在不同的设置上进行测试,评估其作为人、白天和/或环境变化在培训时所考虑的人的性能。在最坏的情况下,它达到平均的精确度高于95%,确认提取的Doppler信息的有效性,同时使用基于神经网络的学习算法,以确认主题和环境的独立方式的人类活动。