NIAIHCApr 8, 2022

EfficientFi: Towards Large-Scale Lightweight WiFi Sensing via CSI Compression

Berkeley
arXiv:2204.04138v2149 citationsh-index: 114
Originality Incremental advance
AI Analysis

This addresses the problem of enabling efficient, device-free sensing in smart homes and IoT environments, though it appears incremental by building on existing WiFi sensing methods.

The paper tackles the challenge of large-scale WiFi sensing by proposing EfficientFi, a framework that compresses Channel State Information (CSI) data from 1.368Mb/s to 0.768Kb/s with low reconstruction error and achieves over 98% accuracy for human activity recognition.

WiFi technology has been applied to various places due to the increasing requirement of high-speed Internet access. Recently, besides network services, WiFi sensing is appealing in smart homes since it is device-free, cost-effective and privacy-preserving. Though numerous WiFi sensing methods have been developed, most of them only consider single smart home scenario. Without the connection of powerful cloud server and massive users, large-scale WiFi sensing is still difficult. In this paper, we firstly analyze and summarize these obstacles, and propose an efficient large-scale WiFi sensing framework, namely EfficientFi. The EfficientFi works with edge computing at WiFi APs and cloud computing at center servers. It consists of a novel deep neural network that can compress fine-grained WiFi Channel State Information (CSI) at edge, restore CSI at cloud, and perform sensing tasks simultaneously. A quantized auto-encoder and a joint classifier are designed to achieve these goals in an end-to-end fashion. To the best of our knowledge, the EfficientFi is the first IoT-cloud-enabled WiFi sensing framework that significantly reduces communication overhead while realizing sensing tasks accurately. We utilized human activity recognition and identification via WiFi sensing as two case studies, and conduct extensive experiments to evaluate the EfficientFi. The results show that it compresses CSI data from 1.368Mb/s to 0.768Kb/s with extremely low error of data reconstruction and achieves over 98% accuracy for human activity recognition.

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