2024
DOI: 10.1109/access.2024.3371517
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PPGCN: Phase-Aligned Periodic Graph Convolutional Network for Dual-Task-Based Cognitive Impairment Detection

Ákos Godó,
Shuqiong Wu,
Fumio Okura
et al.

Abstract: Early detection methods for cognitive impairment are crucial for its effective treatment. Dualtask-based pipelines that rely on skeleton sequences can detect cognitive impairment reliably. Although such pipelines achieve state-of-the-art results by analyzing skeleton sequences of periodic stepping motion, we propose that their performance can be improved by decomposing the skeleton sequence into representative phase-aligned periods and focusing on them instead of the entire sequence. We present the phase-align… Show more

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