Zhu Yufei, Li Chunguang, Jin Hedian, Sun Lining
Key Laboratory of Robotics and System of Jiangsu Province, School of Mechanical and Electric Engineering, Soochow University, China.
Cyborg Bionic Syst. 2021 Apr 22;2021:9821787. doi: 10.34133/2021/9821787. eCollection 2021.
In some patients who have suffered an amputation or spinal cord injury, walking ability may be degraded or deteriorated. Helping these patients walk independently on their own initiative is of great significance. This paper proposes a method to identify subjects' motion intention under different levels of step length and synchronous walking speed by using functional near-infrared spectroscopy technology. Thirty-one healthy subjects were recruited to walk under six given sets of gait parameters (small step with low/midspeed, midstep with low/mid/high speed, and large step with midspeed). The channels were subdivided into more regions. More frequency bands (6 subbands on average in the range of 0-0.18 Hz) were decomposed by applying the wavelet packet method. Further, a genetic algorithm and a library for support vector machine algorithm were applied for selecting typical feature vectors, which were represented by important regions with partial important channels mentioned above. The walking speed recognition rate was 71.21% in different step length states, and the step length recognition rate was 71.21% in different walking speed states. This study explores the method of identifying motion intention in two-dimensional multivariate states. It lays the foundation for controlling walking-assistance equipment adaptively based on cerebral hemoglobin information.
在一些遭受截肢或脊髓损伤的患者中,行走能力可能会下降或恶化。帮助这些患者主动独立行走具有重要意义。本文提出了一种利用功能近红外光谱技术在不同步长和同步行走速度水平下识别受试者运动意图的方法。招募了31名健康受试者,让他们在六组给定的步态参数(小步低/中速、中步低/中/高速、大步中速)下行走。将通道细分为更多区域。通过应用小波包方法分解出更多频带(平均在0 - 0.18Hz范围内有6个子带)。此外,应用遗传算法和支持向量机算法库来选择典型特征向量,这些特征向量由上述部分重要通道的重要区域表示。在不同步长状态下,行走速度识别率为71.21%,在不同行走速度状态下,步长识别率为71.21%。本研究探索了在二维多变量状态下识别运动意图的方法。它为基于脑血红蛋白信息自适应控制助行设备奠定了基础。