Toward Unobtrusive In-home Gait Analysis Based on Radar Micro-Doppler Signatures
Ann-Kathrin Seifert, Moeness G. Amin, Abdelhak M. Zoubir

TL;DR
This paper demonstrates that radar micro-Doppler signatures can accurately classify different gait patterns, including pathological and assisted walks, with potential applications in security, healthcare, and long-term monitoring.
Contribution
The paper introduces new radar-based gait classification methods using physical, subspace, and harmonic modeling, achieving higher accuracy than existing techniques.
Findings
Average classification accuracy of 93.8% across five gait classes.
Achieved 98.5% accuracy for a single gait class.
Potential for 80% accuracy on new individuals.
Abstract
Objective: In this paper, we demonstrate the applicability of radar for gait classification with application to home security, medical diagnosis, rehabilitation and assisted living. Aiming at identifying changes in gait patterns based on radar micro-Doppler signatures, this work is concerned with solving the intra motion category classification problem of gait recognition. Methods: New gait classification approaches utilizing physical features, subspace features and sum-of-harmonics modeling are presented and their performances are evaluated using experimental K-band radar data of four test subjects. Five different gait classes are considered for each person, including normal, pathological and assisted walks. Results: The proposed approaches are shown to outperform existing methods for radar-based gait recognition which utilize physical features from the cadence-velocity data…
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