AI RESEARCH
Learning Displacement-Aware WiFi Representations for Weakly Supervised Relative Localization
arXiv CS.CV
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ArXi:2605.16357v1 Announce Type: cross WiFi fingerprint-based indoor localization has been widely studied, but most existing approaches focus on absolute positioning and rely on dense coordinate annotations, which are costly to obtain at scale. In this paper, we study a fundamentally different problem: relative localization, where the goal is to directly estimate the displacement between two WiFi fingerprint traces without predicting their absolute positions. To reduce annotation overhead, we adopt weak supervision in the form of stepwise motion vectors obtained from inertial sensing.