AutoFi: Towards Automatic WiFi Human Sensing via Geometric
Self-Supervised Learning
- URL: http://arxiv.org/abs/2205.01629v1
- Date: Tue, 12 Apr 2022 04:55:17 GMT
- Title: AutoFi: Towards Automatic WiFi Human Sensing via Geometric
Self-Supervised Learning
- Authors: Jianfei Yang, Xinyan Chen, Han Zou, Dazhuo Wang, Lihua Xie
- Abstract summary: We propose AutoFi, an automatic WiFi sensing model based on a novel geometric self-supervised learning algorithm.
The AutoFi fully utilizes unlabeled low-quality CSI samples that are captured randomly, and then transfers the knowledge to specific tasks defined by users.
- Score: 30.451116905056573
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: WiFi sensing technology has shown superiority in smart homes among various
sensors for its cost-effective and privacy-preserving merits. It is empowered
by Channel State Information (CSI) extracted from WiFi signals and advanced
machine learning models to analyze motion patterns in CSI. Many learning-based
models have been proposed for kinds of applications, but they severely suffer
from environmental dependency. Though domain adaptation methods have been
proposed to tackle this issue, it is not practical to collect high-quality,
well-segmented and balanced CSI samples in a new environment for adaptation
algorithms, but randomly captured CSI samples can be easily collected. In this
paper, we firstly explore how to learn a robust model from these low-quality
CSI samples, and propose AutoFi, an automatic WiFi sensing model based on a
novel geometric self-supervised learning algorithm. The AutoFi fully utilizes
unlabeled low-quality CSI samples that are captured randomly, and then
transfers the knowledge to specific tasks defined by users, which is the first
work to achieve cross-task transfer in WiFi sensing. The AutoFi is implemented
on a pair of Atheros WiFi APs for evaluation. The AutoFi transfers knowledge
from randomly collected CSI samples into human gait recognition and achieves
state-of-the-art performance. Furthermore, we simulate cross-task transfer
using public datasets to further demonstrate its capacity for cross-task
learning. For the UT-HAR and Widar datasets, the AutoFi achieves satisfactory
results on activity recognition and gesture recognition without any prior
training. We believe that the AutoFi takes a huge step toward automatic WiFi
sensing without any developer engagement while overcoming the cross-site issue.
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