The automatic detection of gait anomalies can lead to systems that can be used for fall detection and prevention. In this paper, we present a gait anomaly detection system based on the Matrix Profile (MP) algorithm. The MP algorithm is exact, parameter free, simple and efficient, making it a perfect candidate for on the edge deployment. We propose a gait anomaly detection system that is able to adapt to an individual's gait pattern and successfully detect anomalous steps with short latency. To evaluate the system we record a small database of enacted anomalous steps. The results show the system outperforms a more complex Neural Network baseline.
@article{arxiv.2307.09121,
title = {Matrix Profile based Anomaly Detection in Streaming Gait Data for Fall Prevention},
author = {Branislav Gerazov and Elena Hadzieva and Andrei Krivosei and Fiorella Ines Soto Sanchez and Jakob Rostovski and Alar Kuusik and Mahtab Alam},
journal= {arXiv preprint arXiv:2307.09121},
year = {2023}
}