Journal of Bionic Engineering ›› 2023, Vol. 20 ›› Issue (6): 2619-2632.doi: 10.1007/s42235-023-00419-w
Yao Zhang1; Xu Wang1; Haohua Xiu2; Lei Ren1,3; Yang Han4 ; Yongxin Ma1; Wei Chen1; Guowu Wei5; Luquan Ren1
Yao Zhang1; Xu Wang1; Haohua Xiu2; Lei Ren1,3; Yang Han4 ; Yongxin Ma1; Wei Chen1; Guowu Wei5; Luquan Ren1
摘要:
In this article, a new optimization system that uses few features to recognize locomotion with high classifcation accuracy is proposed. The optimization system consists of three parts. First, the features of the mixed mechanical signal data are extracted from each analysis window of 200 ms after each foot contact event. This classifer has the advantages of high accuracy, few parameters as well as low memory burden. Based on data from eight patients with transfemoral amputations, the optimization system is evaluated. The numerical results indicate that the proposed model can recognize nine daily locomotion modes (i.e., low-, mid-, and fast-speed level-ground walking, ramp ascent/decent, stair ascent/descent, and sit/ stand) by only seven features, with an accuracy of 96.66%0.68%. As for real-time prediction on a powered knee prosthesis, the shortest prediction time is only 9.8 ms. These promising results reveal the potential of intention recognition based on the proposed system for high-level control of the prosthetic knee.