CVAIApr 15, 2021

PURE: Passive mUlti-peRson idEntification via Deep Footstep Separation and Recognition

arXiv:2104.07177v1
Originality Incremental advance
AI Analysis

This addresses the need for efficient, simultaneous user identification in special situations where conventional methods are inadequate, representing a novel approach but with incremental improvements in domain adaptation.

The paper tackles the problem of passive multi-person identification by proposing PURE, a system that uses deep learning for footstep separation and recognition, achieving over 90% cross-domain accuracy with as few as one step per person.

Recently, \textit{passive behavioral biometrics} (e.g., gesture or footstep) have become promising complements to conventional user identification methods (e.g., face or fingerprint) under special situations, yet existing sensing technologies require lengthy measurement traces and cannot identify multiple users at the same time. To this end, we propose \systemname\ as a passive multi-person identification system leveraging deep learning enabled footstep separation and recognition. \systemname\ passively identifies a user by deciphering the unique "footprints" in its footstep. Different from existing gait-enabled recognition systems incurring a long sensing delay to acquire many footsteps, \systemname\ can recognize a person by as few as only one step, substantially cutting the identification latency. To make \systemname\ adaptive to walking pace variations, environmental dynamics, and even unseen targets, we apply an adversarial learning technique to improve its domain generalisability and identification accuracy. Finally, \systemname\ can defend itself against replay attack, enabled by the richness of footstep and spatial awareness. We implement a \systemname\ prototype using commodity hardware and evaluate it in typical indoor settings. Evaluation results demonstrate a cross-domain identification accuracy of over 90\%.

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