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Gait Phase Recognition for Lower-Limb Exoskeleton with Only Joint Angular Sensors

机译:仅具有关节角度传感器的下肢外骨骼的步态相位识别

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摘要

Gait phase is widely used for gait trajectory generation, gait control and gait evaluation on lower-limb exoskeletons. So far, a variety of methods have been developed to identify the gait phase for lower-limb exoskeletons. Angular sensors on lower-limb exoskeletons are essential for joint closed-loop controlling; however, other types of sensors, such as plantar pressure, attitude or inertial measurement unit, are not indispensable.Therefore, to make full use of existing sensors, we propose a novel gait phase recognition method for lower-limb exoskeletons using only joint angular sensors. The method consists of two procedures. Firstly, the gait deviation distances during walking are calculated and classified by Fisher’s linear discriminant method, and one gait cycle is divided into eight gait phases. The validity of the classification results is also verified based on large gait samples. Secondly, we build a gait phase recognition model based on multilayer perceptron and train it with the phase-labeled gait data. The experimental result of cross-validation shows that the model has a 94.45% average correct rate of set (CRS) and an 87.22% average correct rate of phase (CRP) on the testing set, and it can predict the gait phase accurately. The novel method avoids installing additional sensors on the exoskeleton or human body and simplifies the sensory system of the lower-limb exoskeleton.
机译:步态阶段广泛用于下肢外骨骼的步态轨迹生成,步态控制和步态评估。到目前为止,已经开发出多种方法来识别下肢外骨骼的步态阶段。下肢外骨骼上的角度传感器对于关节闭环控制至关重要;然而,其他类型的传感器,例如足底压力,姿态或惯性测量单位并不是必不可少的。因此,为了充分利用现有的传感器,我们提出了一种仅使用关节角度传感器的下肢外骨骼步态识别方法。该方法包括两个过程。首先,通过费舍尔线性判别法对步行时的步态偏离距离进行计算和分类,并将一个步态周期划分为八个步态阶段。分类结果的有效性也基于大型步态样本进行了验证。其次,我们建立了一个基于多层感知器的步态相位识别模型,并用相位标记的步态数据进行训练。交叉验证的实验结果表明,该模型在测试集上具有94.45%的平均平均正确率(CRS)和87.22%的平均平均正确率(CRP),并且可以准确地预测步态相位。该新颖方法避免在外骨骼或人体上安装额外的传感器,并简化了下肢外骨骼的感觉系统。

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