• 中国计算机学会会刊
  • 中国科技核心期刊
  • 中文核心期刊

Computer Engineering & Science ›› 2025, Vol. 47 ›› Issue (1): 160-170.

• Artificial Intelligence and Data Mining • Previous Articles     Next Articles

WiFi-based human activity recognition using cross-sequence prediction and consistency comparison

WANG Yang1,2,3,XU Jiawei2,WANG Ao2,SONG Shijia2,XIE Fan2,ZHAO Chuanxin2,JI Yimu3   

  1. (1.School of Big Data & Artificial Intelligence,Wanjiang College of Anhui Normal University,Wuhu 241000;
    2.School of Computer and Information,Anhui Normal University,Wuhu 241002;
    3.HPC & Big data Processing Institute,Nanjing University of Posts and Telecommunications,Nanjing 210003,China)
  • Received:2024-01-18 Revised:2024-05-05 Online:2025-01-25 Published:2025-01-18

Abstract: With the release of the IEEE 802.11bf standard, WiFi sensing technology has transitioned from academic research to industrial applications. Addressing the issue that existing WiFi-based human activity detection systems often rely on strong assumption constraints, this paper proposes a self- supervised model, CPCC-Fi, tailored for the field of WiFi sensing, starting from how to fully utilize unlabeled channel state information (CSI) samples. Based on the idea of contrastive learning, the model first employs sequential data augmentation to generate unlabeled CSI samples with different views. Then  it acquires the intrinsic representation features of the CSI sequences through self-supervised learning. After fine-tuning the model with a small number of labeled samples, effective perception and recognition of downstream human activities can be achieved. Relevant experiments conducted on both self-collected and public datasets demonstrate that the CPCC-Fi model outperforms CNN+Linear, CNN+Transformer+Linear, and TS-TCC in terms of performance.

Key words: self-supervised learning, channel state information, human activity recognition, representation learning