Zhang Le, Cui Wei, Li Bing, Chen Zhenghua, Wu Min, Gee Teo Sin
IEEE Trans Cybern. 2023 Mar;53(3):1765-1775. doi: 10.1109/TCYB.2021.3126831. Epub 2023 Feb 15.
Recent studies have demonstrated the success of using the channel state information (CSI) from the WiFi signal to analyze human activities in a fixed and well-controlled environment. Those systems usually degrade when being deployed in new environments. A straightforward solution to solve this limitation is to collect and annotate data samples from different environments with advanced learning strategies. Although workable as reported, those methods are often privacy sensitive because the training algorithms need to access the data from different environments, which may be owned by different organizations. We present a practical method for the WiFi-based privacy-preserving cross-environment human activity recognition (HAR). It collects and shares information from different environments, while maintaining the privacy of individual person being involved. At the core of our approach is the utilization of the Johnson-Lindenstrauss transform, which is theoretically shown to be differentially private. Based on that, we further design an adversarial learning strategy to generate environment-invariant representations for HAR. We demonstrate the effectiveness of the proposed method with different data modalities from two real-life environments. More specifically, on the raw CSI dataset, it shows 2.18% and 1.24% improvements over challenging baselines for two environments, respectively. Moreover, with the discrete wavelet transform features, it further yields 5.71% and 1.55% improvements, respectively.
最近的研究表明,在固定且可控的环境中利用WiFi信号的信道状态信息(CSI)来分析人类活动是成功的。然而,这些系统在部署到新环境时通常会性能下降。解决这一限制的一个直接方法是使用先进的学习策略从不同环境中收集和标注数据样本。尽管如报道的那样可行,但这些方法往往对隐私敏感,因为训练算法需要访问来自不同环境的数据,而这些数据可能归不同组织所有。我们提出了一种基于WiFi的隐私保护跨环境人类活动识别(HAR)的实用方法。它在收集和共享来自不同环境的信息的同时,保护参与其中的个人隐私。我们方法的核心是利用约翰逊-林登施特劳斯变换,理论上证明该变换具有差分隐私性。在此基础上,我们进一步设计了一种对抗学习策略,以生成用于HAR的环境不变表示。我们用来自两个现实生活环境的不同数据模态证明了所提方法的有效性。更具体地说,在原始CSI数据集上,相对于两个环境中的具有挑战性的基线,它分别显示出2.18%和1.24%的提升。此外,对于离散小波变换特征,它分别进一步提升了5.71%和1.55%。