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Main Authors: Takase, Yutaka, Yamazaki, Kimitoshi
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.18162
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author Takase, Yutaka
Yamazaki, Kimitoshi
author_facet Takase, Yutaka
Yamazaki, Kimitoshi
contents This study aimed to develop daily living support robots for patients with hemiplegia and the elderly. To support the daily living activities using robots in ordinary households without imposing physical and mental burdens on users, the system must detect the actions of the user and move appropriately according to their motions. We propose a reaching-position prediction scheme that targets the motion of lifting the upper arm, which is burdensome for patients with hemiplegia and the elderly in daily living activities. For this motion, it is difficult to obtain effective features to create a prediction model in environments where large-scale sensor system installation is not feasible and the motion time is short. We performed motion-collection experiments, revealed the features of the target motion and built a prediction model using the multimodal motion features and deep learning. The proposed model achieved an accuracy of 93 \% macro average and F1-score of 0.69 for a 9-class classification prediction at 35\% of the motion completion.
format Preprint
id arxiv_https___arxiv_org_abs_2406_18162
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multimodal Reaching-Position Prediction for ADL Support Using Neural Networks
Takase, Yutaka
Yamazaki, Kimitoshi
Robotics
Human-Computer Interaction
This study aimed to develop daily living support robots for patients with hemiplegia and the elderly. To support the daily living activities using robots in ordinary households without imposing physical and mental burdens on users, the system must detect the actions of the user and move appropriately according to their motions. We propose a reaching-position prediction scheme that targets the motion of lifting the upper arm, which is burdensome for patients with hemiplegia and the elderly in daily living activities. For this motion, it is difficult to obtain effective features to create a prediction model in environments where large-scale sensor system installation is not feasible and the motion time is short. We performed motion-collection experiments, revealed the features of the target motion and built a prediction model using the multimodal motion features and deep learning. The proposed model achieved an accuracy of 93 \% macro average and F1-score of 0.69 for a 9-class classification prediction at 35\% of the motion completion.
title Multimodal Reaching-Position Prediction for ADL Support Using Neural Networks
topic Robotics
Human-Computer Interaction
url https://arxiv.org/abs/2406.18162