WiDual: User Identified Gesture Recognition Using Commercial WiFi

Miaoling Dai, Chenhong Cao, Tong Liu, Meijia Su, Yufeng Li, Jiangtao Li
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Abstract

WiFi-based human gesture recognition has recently enjoyed increasing popularity in the Internet of Things (IoT) scenarios. Simultaneously recognizing user identities and user gestures is of great importance for enhancing the system security and user quality of experience (QoE). State-of-the-art approaches that perform dual tasks suffer from increased latency or degraded accuracy in cross-domain scenarios. In this paper, we present WiDual, a dual-task system that achieves accurate cross-domain gesture recognition and user identification based on WiFi in a real-time manner. The basic idea of WiDual is to use the attention mechanism to adaptively explore cross-domain features worthy of attention for dual tasks. WiDual employs a CSI (Channel Statement Information) visualization method that transfers WiFi signals to images for further feature extraction and model training. In this way, WiDual mitigates the possible loss of useful information and excessive delays caused by extracting handcrafted features directly from the WiFi signal. Furthermore, WiDual utilizes a collaboration module to combine gesture features and user identity features to enhance the performance of dual-task recognition. We implement WiDual and evaluate its performance extensively on a public dataset including 6 gestures and 6 users performed across domains. Results show that WiDual outperforms state-of-the-art approaches, with 26% and 8% improvements on the accuracy of cross-domain user identification and gesture recognition respectively.
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手动:用户识别手势识别使用商用WiFi
最近,基于wifi的人体手势识别在物联网(IoT)场景中越来越受欢迎。同时识别用户身份和用户手势对提高系统安全性和用户体验质量具有重要意义。执行双重任务的最先进的方法在跨域场景中会增加延迟或降低准确性。在本文中,我们提出了一种基于WiFi实时实现准确跨域手势识别和用户识别的双任务系统WiDual。WiDual的基本思想是利用注意机制自适应地探索双任务中值得注意的跨域特征。WiDual采用CSI (Channel Statement Information)可视化方法,将WiFi信号传输到图像上,进一步进行特征提取和模型训练。通过这种方式,WiDual减轻了直接从WiFi信号中提取手工特征可能导致的有用信息丢失和过度延迟。此外,WiDual利用协作模块将手势特征和用户身份特征结合起来,提高了双任务识别的性能。我们实现了WiDual,并在一个公共数据集上广泛评估了它的性能,该数据集包括跨域执行的6个手势和6个用户。结果表明,该方法优于最先进的方法,在跨域用户识别和手势识别的准确性上分别提高了26%和8%。
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