作者
Boyu Yang, Huibin Wang, Liyazhou Hu, Han Zhu*, Chan-Tong Lam, Kai Fang
发表日期
2023/10/27
期刊
IEEE Sensors Journal
卷号
23
期号
23
页码范围
29892-29905
出版商
IEEE
简介
WiFi-based sensing technology has become a popular research direction in the Internet of Things (IoT) field. However, the accuracy of action sensing across different environmental domains is severely degraded when the model is deployed at the real IoT edge. Existing cross-domain sensing methods are unsuitable for real-life applications due to the large amount of expensive channel state information (CSI) data required for training. Meanwhile, pretrained predictive models in the cloud may not perform well in edge-side deployment environments. To address these issues, we propose a few-shot cross-domain WiFi sensing (FewCS) system with online learning. The model aggregates unlabeled samples from the same target domain and separates samples from different domains while minimizing sample cost and training an accurate WiFi-sensing system. The core idea of FewCS is to capture the sensing features of …
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