| Literature DB >> 32203049 |
Kuangen Zhang, Jianwen Luo, Wentao Xiao, Wen Zhang, Haiyuan Liu, Jiale Zhu, Zeyu Lu, Yiming Rong, Clarence W de Silva, Chenglong Fu.
Abstract
Visual information is indispensable to human locomotion in complex environments. Although amputees can perceive the environmental information by eyes, they cannot transmit the neural signals to prostheses directly. To augment human-prosthesis interaction, this article introduces a subvision system that can perceive environments actively, assist to control the powered prosthesis predictively, and accordingly reconstruct a complete vision-locomotion loop for transfemoral amputees. By using deep learning, the subvision system can classify common static terrains (e.g., level ground, stairs, and ramps) and estimate corresponding motion intents of amputees with high accuracy (98%). After applying the subvision system to the locomotion control system, the powered prosthesis can help amputees to achieve nonrhythmic locomotion naturally, including switching between different locomotion modes and crossing the obstacle. The subvision system can also recognize dynamic objects, such as an unexpected obstacle approaching the amputee, and assist in generating an agile obstacle-avoidance reflex movement. The experimental results demonstrate that the subvision system can cooperate with the powered prosthesis to reconstruct a complete vision-locomotion loop, which enhances the environmental adaptability of the amputees.Entities:
Year: 2021 PMID: 32203049 DOI: 10.1109/TCYB.2020.2978216
Source DB: PubMed Journal: IEEE Trans Cybern ISSN: 2168-2267 Impact factor: 11.448