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UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises

Physical rehabilitation plays a crucial role in restoring motor function following injuries or surgeries. However, the challenge of overcrowded waiting lists often hampers doctors’ ability to monitor patients’ recovery progress in person. Deep Learning methods offer a solution by enabling doctors to...

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Autores principales: Aguilar-Ortega, Rafael, Berral-Soler, Rafael, Jiménez-Velasco, Isabel, Romero-Ramírez, Francisco J., García-Marín, Manuel, Zafra-Palma, Jorge, Muñoz-Salinas, Rafael, Medina-Carnicer, Rafael, Marín-Jiménez, Manuel J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10648737/
https://www.ncbi.nlm.nih.gov/pubmed/37960561
http://dx.doi.org/10.3390/s23218862
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author Aguilar-Ortega, Rafael
Berral-Soler, Rafael
Jiménez-Velasco, Isabel
Romero-Ramírez, Francisco J.
García-Marín, Manuel
Zafra-Palma, Jorge
Muñoz-Salinas, Rafael
Medina-Carnicer, Rafael
Marín-Jiménez, Manuel J.
author_facet Aguilar-Ortega, Rafael
Berral-Soler, Rafael
Jiménez-Velasco, Isabel
Romero-Ramírez, Francisco J.
García-Marín, Manuel
Zafra-Palma, Jorge
Muñoz-Salinas, Rafael
Medina-Carnicer, Rafael
Marín-Jiménez, Manuel J.
author_sort Aguilar-Ortega, Rafael
collection PubMed
description Physical rehabilitation plays a crucial role in restoring motor function following injuries or surgeries. However, the challenge of overcrowded waiting lists often hampers doctors’ ability to monitor patients’ recovery progress in person. Deep Learning methods offer a solution by enabling doctors to optimize their time with each patient and distinguish between those requiring specific attention and those making positive progress. Doctors use the flexion angle of limbs as a cue to assess a patient’s mobility level during rehabilitation. From a Computer Vision perspective, this task can be framed as automatically estimating the pose of the target body limbs in an image. The objectives of this study can be summarized as follows: (i) evaluating and comparing multiple pose estimation methods; (ii) analyzing how the subject’s position and camera viewpoint impact the estimation; and (iii) determining whether 3D estimation methods are necessary or if 2D estimation suffices for this purpose. To conduct this technical study, and due to the limited availability of public datasets related to physical rehabilitation exercises, we introduced a new dataset featuring 27 individuals performing eight diverse physical rehabilitation exercises focusing on various limbs and body positions. Each exercise was recorded using five RGB cameras capturing different viewpoints of the person. An infrared tracking system named OptiTrack was utilized to establish the ground truth positions of the joints in the limbs under study. The results, supported by statistical tests, show that not all state-of-the-art pose estimators perform equally in the presented situations (e.g., patient lying on the stretcher vs. standing). Statistical differences exist between camera viewpoints, with the frontal view being the most convenient. Additionally, the study concludes that 2D pose estimators are adequate for estimating joint angles given the selected camera viewpoints.
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spelling pubmed-106487372023-10-31 UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises Aguilar-Ortega, Rafael Berral-Soler, Rafael Jiménez-Velasco, Isabel Romero-Ramírez, Francisco J. García-Marín, Manuel Zafra-Palma, Jorge Muñoz-Salinas, Rafael Medina-Carnicer, Rafael Marín-Jiménez, Manuel J. Sensors (Basel) Article Physical rehabilitation plays a crucial role in restoring motor function following injuries or surgeries. However, the challenge of overcrowded waiting lists often hampers doctors’ ability to monitor patients’ recovery progress in person. Deep Learning methods offer a solution by enabling doctors to optimize their time with each patient and distinguish between those requiring specific attention and those making positive progress. Doctors use the flexion angle of limbs as a cue to assess a patient’s mobility level during rehabilitation. From a Computer Vision perspective, this task can be framed as automatically estimating the pose of the target body limbs in an image. The objectives of this study can be summarized as follows: (i) evaluating and comparing multiple pose estimation methods; (ii) analyzing how the subject’s position and camera viewpoint impact the estimation; and (iii) determining whether 3D estimation methods are necessary or if 2D estimation suffices for this purpose. To conduct this technical study, and due to the limited availability of public datasets related to physical rehabilitation exercises, we introduced a new dataset featuring 27 individuals performing eight diverse physical rehabilitation exercises focusing on various limbs and body positions. Each exercise was recorded using five RGB cameras capturing different viewpoints of the person. An infrared tracking system named OptiTrack was utilized to establish the ground truth positions of the joints in the limbs under study. The results, supported by statistical tests, show that not all state-of-the-art pose estimators perform equally in the presented situations (e.g., patient lying on the stretcher vs. standing). Statistical differences exist between camera viewpoints, with the frontal view being the most convenient. Additionally, the study concludes that 2D pose estimators are adequate for estimating joint angles given the selected camera viewpoints. MDPI 2023-10-31 /pmc/articles/PMC10648737/ /pubmed/37960561 http://dx.doi.org/10.3390/s23218862 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Aguilar-Ortega, Rafael
Berral-Soler, Rafael
Jiménez-Velasco, Isabel
Romero-Ramírez, Francisco J.
García-Marín, Manuel
Zafra-Palma, Jorge
Muñoz-Salinas, Rafael
Medina-Carnicer, Rafael
Marín-Jiménez, Manuel J.
UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises
title UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises
title_full UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises
title_fullStr UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises
title_full_unstemmed UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises
title_short UCO Physical Rehabilitation: New Dataset and Study of Human Pose Estimation Methods on Physical Rehabilitation Exercises
title_sort uco physical rehabilitation: new dataset and study of human pose estimation methods on physical rehabilitation exercises
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10648737/
https://www.ncbi.nlm.nih.gov/pubmed/37960561
http://dx.doi.org/10.3390/s23218862
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