Authors
Taichi Obinata, Dan Yoshikawa, Akira Uehara, Hiroaki Kawamoto
Publication date
2023/10/1
Conference
2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC)
Pages
4631-4636
Publisher
IEEE
Description
Robotic rehabilitation for paralyzed hands utilizes exoskeletons and soft gloves equipped with active mechanisms to provide support for hand motion. From a safety and control perspective, it is imperative to measure finger joint angles during motion support provided by a soft robotic wearable system. However, embedding sensors into these devices can be inconvenient as it may lead to bulkiness or structural difficulties. This study aims to develop a machine learning model for estimating finger joint angles from images utilizing data created with computer graphics (CG), and to validate the feasibility of this method through basic experiments. The three-dimensional CG (3DCG) hand model includes bones corresponding to the major joints of the fingers, and a wearable system of the index finger imported from a computer-aided design software was attached to the 3DCG hand model. After rendering the integrated …
Scholar articles
T Obinata, D Yoshikawa, A Uehara, H Kawamoto - 2023 IEEE International Conference on Systems, Man …, 2023