Wi-Fi Channel State Information (CSI) has been extensively studied for sensing activities. However, its practical application in user authentication still needs to be explored. This study presents a novel approach to biometric authentication using Wi-Fi Channel State Information (CSI) data for palm recognition. The research delves into utilizing a Raspberry Pi encased in a custom-built box with antenna power reduced to 1dBm, which was used to capture CSI data from the right hands of 20 participants (10 men and 10 women). The dataset was normalized using MinMax scaling to ensure uniformity and accuracy. By focusing on biophysical aspects such as hand size, shape, angular spread between fingers, and finger phalanx lengths, among other characteristics, the study explores how these features affect electromagnetic signals, which are then reflected in Wi-Fi CSI, allowing for precise user identification. Five classification algorithms were evaluated, with the Random Forest classifier achieving an average F1-Score of 99.82\% using 10-fold cross-validation. Amplitude and Phase data were used, with each capture session recording approximately 1000 packets per second in five 5-second intervals for each User. This high accuracy highlights the potential of Wi-Fi CSI in developing robust and reliable user authentication systems based on palm biometric data.
翻译:Wi-Fi信道状态信息(CSI)在活动感知领域已得到广泛研究,但其在用户身份认证中的实际应用仍有待探索。本研究提出了一种利用Wi-Fi信道状态信息(CSI)数据进行手掌识别的生物特征认证新方法。研究采用封装于定制盒中、天线功率降至1dBm的树莓派设备,采集了20名参与者(10名男性与10名女性)右手的CSI数据。通过MinMax缩放对数据集进行归一化处理,以确保数据的一致性与准确性。研究聚焦于手部尺寸、形状、手指间角度分布及指骨长度等生物物理特征,探讨这些特征如何影响电磁信号,进而反映在Wi-Fi CSI数据中,从而实现精确的用户身份识别。研究评估了五种分类算法,其中随机森林分类器在10折交叉验证中取得了99.82%的平均F1分数。实验采用振幅与相位数据,每次采集会话以五个5秒为间隔记录数据,每位用户每秒约采集1000个数据包。这一高精度结果凸显了Wi-Fi CSI在基于手掌生物特征数据开发鲁棒可靠用户认证系统方面的潜力。