Formalizing PQRST Complex in Accelerometer-based Gait Cycle for Authentication
Frank Sicong Chen, Amith K. Belman, Vir V. Phoha

TL;DR
This paper introduces the PQRST Complex, a novel structure for analyzing accelerometer signals during gait, improving authentication accuracy by capturing foot movement variations within gait cycles.
Contribution
It formally defines the PQRST Complex structure for gait analysis, enhancing the representation of gait phases beyond aggregate features.
Findings
Outperforms state-of-the-art gait authentication systems
Uses nine features derived from the PQRST Complex
Captures structural gait variations effectively
Abstract
Accelerometer signals generated through gait present a new frontier of human interface with mobile devices. Gait cycle detection based on these signals has applications in various areas, including authentication, health monitoring, and activity detection. Template-based studies focus on how the entire gait cycle represents walking patterns, but these are compute-intensive. Aggregate feature-based studies extract features in the time domain and frequency domain from the entire gait cycle to reduce the number of features. However, these methods may miss critical structural information needed to appropriately represent the intricacies of walking patterns. To the best of our knowledge, no study has formally proposed a structure to capture variations within gait cycles or phases from accelerometer readings. We propose a new structure named the PQRST Complex, which corresponds to the swing…
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Taxonomy
TopicsGait Recognition and Analysis
