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基于表征知识蒸馏的WiFi手势识别方法

龚浩成 朱海 黄子非 杨明泽 张开昱 吴飞

计算机工程与科学2025,Vol.47Issue(4):655-666,12.
计算机工程与科学2025,Vol.47Issue(4):655-666,12.DOI:10.3969/j.issn.1007-130X.2025.04.009

基于表征知识蒸馏的WiFi手势识别方法

A representation knowledge distillation-based WiFi gesture recognition method

龚浩成 1朱海 1黄子非 1杨明泽 1张开昱 1吴飞1

作者信息

  • 1. 上海工程技术大学电子电气工程学院,上海 201620
  • 折叠

摘要

Abstract

With the rapid development of artificial intelligence and wireless sensing technologies,WiFi gesture recognition has emerged as one of the research areas attracting significant attention.Cur-rent research efforts aim to enhance the robustness of models across different data domains and reduce the reliance on retraining by extracting domain-independent features from channel state information(CSI)and proposing the body coordinate velocity profile(BVP).This enables high accuracy in both intra-domain and cross-domain recognition.However,in practical scenarios,converting collected CSI signals into BVP requires substantial computational resources,falling short of meeting the real-time and scalability requirements in production environments.Additionally,traditional models lack the capability to capture global features and long-term dependencies when dealing with large and complex datasets.To address these issues,a representation knowledge distillation-based WiFi gesture recognition(RKD-WGR)framework is proposed.RKD-WGR utilizes BVP data as input for the teacher model to guide the student model,which uses CSI data as input.This integrates the BVP inference capability into the student model while allowing CSI to learn from itself to complement information missing from BVP.Meanwhile,to improve recognition performance and strengthen the knowledge transfer from the teacher model to the student model,a 3D WiFi Transformer(3DWiT)is introduced as the teacher model.It le-verages the spatio-temporal information of BVP to assist the teacher model in acquiring more informa-tion and enhancing its knowledge transfer capability.Experimental results on Widar 3.0 dataset demon-strate that,without using BVP and solely relying on CSI,the accuracy for six gesture classes reach 97.1%,for ten gesture classes it is 96.5%,and for 22 gesture classes it achieves 89.5%.These results validate the effectiveness of the proposed framework and model.

关键词

WiFi/信道状态信息/手势识别/知识蒸馏/Vision Transformer

Key words

WiFi/channel state information(CSI)/gesture recognition/knowledge distillation/Vision Transformer

分类

计算机与自动化

引用本文复制引用

龚浩成,朱海,黄子非,杨明泽,张开昱,吴飞..基于表征知识蒸馏的WiFi手势识别方法[J].计算机工程与科学,2025,47(4):655-666,12.

基金项目

国家自然科学基金(61902237) (61902237)

计算机工程与科学

OA北大核心

1007-130X

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