School of Telecommunication Engineering, Institute of Engineering, Suranaree University of Technology, Nakhon Ratchasima 30000, Thailand.
Department of Telecommunication Engineering, Faculty of Engineering and Technology, Rajamangala University of Technology Isan (RMUTI), Nakhon Ratchasima 30000, Thailand.
Sensors (Basel). 2022 Jun 2;22(11):4242. doi: 10.3390/s22114242.
Those with disabilities who have lost their legs must use a prosthesis to walk. However, traditional prostheses have the disadvantage of being unable to move and support the human gait because there are no mechanisms or algorithms to control them. This makes it difficult for the wearer to walk. To overcome this problem, we developed an insole device with a wearable sensor for real-time gait phase detection based on the kNN (k-nearest neighbor) algorithm for prosthetic control. The kNN algorithm is used with the raw data obtained from the pressure sensors in the insole to predict seven walking phases, i.e., stand, heel strike, foot flat, midstance, heel off, toe-off, and swing. As a result, the predictive decision in each gait cycle to control the ankle movement of the transtibial prosthesis improves with each walk. The results in this study can provide 81.43% accuracy for gait phase detection, and can control the transtibial prosthetic effectively at the maximum walking speed of 6 km/h. Moreover, this insole device is small, lightweight and unaffected by the physical factors of the wearer.
那些失去双腿的残疾人必须使用假肢才能行走。然而,传统的假肢由于没有控制它们的机制或算法,因此无法移动和支撑人体步态,这使得佩戴者难以行走。为了克服这个问题,我们开发了一种带有可穿戴传感器的鞋垫设备,该设备基于 kNN(k-最近邻)算法用于假肢控制的实时步态相位检测。kNN 算法用于从鞋垫中的压力传感器获得的原始数据来预测七个步行阶段,即站立、脚跟触地、脚放平、中间站立、脚跟离地、脚趾离地和摆动。因此,在每个步态周期中的预测决策以控制胫骨假肢的踝关节运动得到了改善。本研究的结果可提供 81.43%的步态相位检测准确性,并可在最大步行速度为 6km/h 时有效控制胫骨假肢。此外,这种鞋垫设备体积小、重量轻,不受佩戴者身体因素的影响。