English

Uni-Fi: Integrated Multi-Task Wi-Fi Sensing

Signal Processing 2026-03-17 v2

Abstract

Wi-Fi sensing technology enables non-intrusive, continuous monitoring of user locations and activities, which supports diverse smart home applications. Since different sensing tasks exhibit contextual relationships, their integration can enhance individual module performance. However, integrating sensing tasks across different studies faces challenges due to the absence of: 1) a unified architecture that captures the fundamental nature shared across diverse sensing tasks, and 2) an extensible pipeline that accommodates future sensing methodologies. This paper presents UNI-FI, an extensible framework for multi-task Wi-Fi sensing integration. This paper makes the following contributions: 1) we propose a unified theoretical framework that reveals fundamental differences between single-task and multi-task sensing; 2) we develop a scalable sensing pipeline that automatically generates a multi-task sensing solver, enabling seamless integration of multiple sensing models. Experimental results show that UNI-FI achieves robust performance across tasks, with a median localization error of approximately 0.54 m, 98.34% accuracy for activity classification, and 98.57% accuracy for presence detection.

Keywords

Cite

@article{arxiv.2601.10980,
  title  = {Uni-Fi: Integrated Multi-Task Wi-Fi Sensing},
  author = {Mengning Li and Wenye Wang},
  journal= {arXiv preprint arXiv:2601.10980},
  year   = {2026}
}
R2 v1 2026-07-01T09:07:01.799Z