Xu Ke, Wang Jiangtao, Zhang Le, Zhu Hongyuan, Zheng Dingchang
IEEE J Biomed Health Inform. 2023 Jan;27(1):329-338. doi: 10.1109/JBHI.2022.3219640. Epub 2023 Jan 4.
WiFi-based human activity recognition (HAR) has been extensively studied due to its far-reaching applications in health domains, including elderly monitoring, exercise supervision and rehabilitation monitoring, etc. Although existing supervised deep learning techniques have achieved remarkable performances for these tasks, they are however data-hungry and hence are notoriously difficult due to the privacy and incomprehensibility of WiFi-based HAR data. Existing contrastive learning models, mainly designed for computer vision, cannot guarantee their performance on channel state information (CSI) data. To this end, we propose a new dual-stream contrastive learning model that can process and learn the raw WiFi CSI data in a self-supervised manner. More specifically, our proposed method, coined as DualConFi, takes raw WiFI CSI data as input and incorporates channel and temporal streams to learn highly-discriminative spatiotemporal features under a mutual information constraint using unlabeled data. We exhibit the effectiveness of our model on three publicly available CSI data sets in various experiment settings, including linear evaluation, semi-supervised, and transfer learning. We show that DualConFi is able to perform favourably against challenging baselines in each setting. Moreover, by studying the effects of different transform functions on CSI data, we finally verify the effectiveness of highly-discriminative features.
基于WiFi的人体活动识别(HAR)因其在健康领域的广泛应用而受到广泛研究,这些应用包括老年人监测、运动监督和康复监测等。尽管现有的监督深度学习技术在这些任务中取得了显著的性能,但它们需要大量数据,并且由于基于WiFi的HAR数据的隐私性和难以理解性而 notoriously difficult(此处可能有误,原词可能是notoriously difficult,意为“极其困难”)。现有的对比学习模型主要是为计算机视觉设计的,无法保证它们在信道状态信息(CSI)数据上的性能。为此,我们提出了一种新的双流对比学习模型,该模型可以以自监督的方式处理和学习原始WiFi CSI数据。更具体地说,我们提出的方法称为DualConFi,它将原始WiFi CSI数据作为输入,并结合信道和时间流,在互信息约束下使用未标记数据学习高度有区分力的时空特征。我们在各种实验设置中,包括线性评估、半监督和迁移学习,展示了我们的模型在三个公开可用的CSI数据集上的有效性。我们表明,在每种设置下,DualConFi都能够在具有挑战性的基准上表现出色。此外,通过研究不同变换函数对CSI数据的影响,我们最终验证了高度有区分力特征的有效性。