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Autores principales: Wang, Hanchen David, Khan, Nibraas, Chen, Anna, Sarkar, Nilanjan, Wisniewski, Pamela, Ma, Meiyi
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2408.11837
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author Wang, Hanchen David
Khan, Nibraas
Chen, Anna
Sarkar, Nilanjan
Wisniewski, Pamela
Ma, Meiyi
author_facet Wang, Hanchen David
Khan, Nibraas
Chen, Anna
Sarkar, Nilanjan
Wisniewski, Pamela
Ma, Meiyi
contents Recent global estimates suggest that as many as 2.41 billion individuals have health conditions that would benefit from rehabilitation services. Home-based Physical Therapy (PT) faces significant challenges in providing interactive feedback and meaningful observation for therapists and patients. To fill this gap, we present MicroXercise, which integrates micro-motion analysis with wearable sensors, providing therapists and patients with a comprehensive feedback interface, including video, text, and scores. Crucially, it employs multi-dimensional Dynamic Time Warping (DTW) and attribution-based explainable methods to analyze the existing deep learning neural networks in monitoring exercises, focusing on a high granularity of exercise. This synergistic approach is pivotal, providing output matching the input size to precisely highlight critical subtleties and movements in PT, thus transforming complex AI analysis into clear, actionable feedback. By highlighting these micro-motions in different metrics, such as stability and range of motion, MicroXercise significantly enhances the understanding and relevance of feedback for end-users. Comparative performance metrics underscore its effectiveness over traditional methods, such as a 39% and 42% improvement in Feature Mutual Information (FMI) and Continuity. MicroXercise is a step ahead in home-based physical therapy, providing a technologically advanced and intuitively helpful solution to enhance patient care and outcomes.
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MicroXercise: A Micro-Level Comparative and Explainable System for Remote Physical Therapy
Wang, Hanchen David
Khan, Nibraas
Chen, Anna
Sarkar, Nilanjan
Wisniewski, Pamela
Ma, Meiyi
Machine Learning
Artificial Intelligence
Human-Computer Interaction
Signal Processing
Recent global estimates suggest that as many as 2.41 billion individuals have health conditions that would benefit from rehabilitation services. Home-based Physical Therapy (PT) faces significant challenges in providing interactive feedback and meaningful observation for therapists and patients. To fill this gap, we present MicroXercise, which integrates micro-motion analysis with wearable sensors, providing therapists and patients with a comprehensive feedback interface, including video, text, and scores. Crucially, it employs multi-dimensional Dynamic Time Warping (DTW) and attribution-based explainable methods to analyze the existing deep learning neural networks in monitoring exercises, focusing on a high granularity of exercise. This synergistic approach is pivotal, providing output matching the input size to precisely highlight critical subtleties and movements in PT, thus transforming complex AI analysis into clear, actionable feedback. By highlighting these micro-motions in different metrics, such as stability and range of motion, MicroXercise significantly enhances the understanding and relevance of feedback for end-users. Comparative performance metrics underscore its effectiveness over traditional methods, such as a 39% and 42% improvement in Feature Mutual Information (FMI) and Continuity. MicroXercise is a step ahead in home-based physical therapy, providing a technologically advanced and intuitively helpful solution to enhance patient care and outcomes.
title MicroXercise: A Micro-Level Comparative and Explainable System for Remote Physical Therapy
topic Machine Learning
Artificial Intelligence
Human-Computer Interaction
Signal Processing
url https://arxiv.org/abs/2408.11837