Skeleton tracking solutions for a low-cost stroke rehabilitation support system
Computer systems based on motion assessment are promising solutions to support stroke survivors' autonomous rehabilitation exercises. In this regard, researchers keep trying to achieve engaging and low-cost solutions suitable mainly for home use. Aiming to achieve a system with a minimal techni...
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sg-smu-ink.sis_research-95092024-01-04T04:18:03Z Skeleton tracking solutions for a low-cost stroke rehabilitation support system COIAS, Ana R. LEE, Min Hun BERNARDINO, Alexandre SMAILAGIC, Asim Computer systems based on motion assessment are promising solutions to support stroke survivors' autonomous rehabilitation exercises. In this regard, researchers keep trying to achieve engaging and low-cost solutions suitable mainly for home use. Aiming to achieve a system with a minimal technical setup, we compare Microsoft Kinect, OpenPose, and MediaPipe skeleton tracking approaches for upper extremity quality of movement assessment after stroke. We determine if classification models assess accurately exercise performance with OpenPose and MediaPipe data against Kinect, using a dataset of 15 stroke survivors. We compute Root Mean Squared Error to determine the alignment of trajectories and kinematic variables. MediaPipe World Landmarks revealed high alignment with Kinect, revealing to be a potential alternative method. 2023-09-28T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/8506 info:doi/10.1109/ICORR58425.2023.10304749 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University tracking computational modeling stroke (medical condition) assistive robots skeleton motion capture libraries Artificial Intelligence and Robotics |
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tracking computational modeling stroke (medical condition) assistive robots skeleton motion capture libraries Artificial Intelligence and Robotics COIAS, Ana R. LEE, Min Hun BERNARDINO, Alexandre SMAILAGIC, Asim Skeleton tracking solutions for a low-cost stroke rehabilitation support system |
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Computer systems based on motion assessment are promising solutions to support stroke survivors' autonomous rehabilitation exercises. In this regard, researchers keep trying to achieve engaging and low-cost solutions suitable mainly for home use. Aiming to achieve a system with a minimal technical setup, we compare Microsoft Kinect, OpenPose, and MediaPipe skeleton tracking approaches for upper extremity quality of movement assessment after stroke. We determine if classification models assess accurately exercise performance with OpenPose and MediaPipe data against Kinect, using a dataset of 15 stroke survivors. We compute Root Mean Squared Error to determine the alignment of trajectories and kinematic variables. MediaPipe World Landmarks revealed high alignment with Kinect, revealing to be a potential alternative method. |
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text |
author |
COIAS, Ana R. LEE, Min Hun BERNARDINO, Alexandre SMAILAGIC, Asim |
author_facet |
COIAS, Ana R. LEE, Min Hun BERNARDINO, Alexandre SMAILAGIC, Asim |
author_sort |
COIAS, Ana R. |
title |
Skeleton tracking solutions for a low-cost stroke rehabilitation support system |
title_short |
Skeleton tracking solutions for a low-cost stroke rehabilitation support system |
title_full |
Skeleton tracking solutions for a low-cost stroke rehabilitation support system |
title_fullStr |
Skeleton tracking solutions for a low-cost stroke rehabilitation support system |
title_full_unstemmed |
Skeleton tracking solutions for a low-cost stroke rehabilitation support system |
title_sort |
skeleton tracking solutions for a low-cost stroke rehabilitation support system |
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Institutional Knowledge at Singapore Management University |
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2023 |
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https://ink.library.smu.edu.sg/sis_research/8506 |
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