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A Deep Learning Approach to EMG-Based Classification of Gait Phases during Level Ground Walking

机译:基于EMG的步态阶段步态阶段分类的深度学习方法

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摘要

Correctly identifying gait phases is a prerequisite to achieve a spatial/temporal characterization of muscular recruitment during walking. Recent approaches have addressed this issue by applying machine learning techniques to treadmill-walking data. We propose a deep learning approach for surface electromyographic (sEMG)-based classification of stance/swing phases and prediction of the foot−floor-contact signal in more natural walking conditions (similar to everyday walking ones), overcoming constraints of a controlled environment, such as treadmill walking. To this aim, sEMG signals were acquired from eight lower-limb muscles in about 10.000 strides from 23 healthy adults during level ground walking, following an eight-shaped path including natural deceleration, reversing, curve, and acceleration. By means of an extensive evaluation, we show that using a multi layer perceptron to learn hidden features provides state of the art performances while avoiding features engineering. Results, indeed, showed an average classification accuracy of 94.9 for learned subjects and 93.4 for unlearned ones, while mean absolute difference ( ± S D ) between phase transitions timing predictions and footswitch data was 21.6 ms and 38.1 ms for heel-strike and toe off, respectively. The suitable performance achieved by the proposed method suggests that it could be successfully used to automatically classify gait phases and predict foot−floor-contact signal from sEMG signals during level ground walking.
机译:正确识别步态阶段是在步行期间实现肌肉招聘的空间/时间表征的先决条件。最近的方法已经通过将机器学习技术应用于跑步机 - 行走数据来解决了这个问题。我们提出了一种深度学习方法,用于表面电拍摄(SEMG)的姿势/摆动阶段的分类,以及在更自然的步行条件下的脚踏接触信号(类似于日常行走的脚际接触信号),克服受控环境的约束,如跑步机走路。为此目的,在一条八种路径包括自然减速,逆转,曲线和加速的八种路径之后,从23种健康成年人中,从八个健康成年人中获得大约10.000步的八肢肌肉从八个下肢肌肉获得SEMG信号。通过广泛的评估,我们表明,使用多层的Perceptron来学习隐藏特征,提供了最新的现有性表演,同时避免了特征工程。实际上,实际上,对于学习的科目,94.9的平均分类准确性,93.4用于未经读数的主题,而阶段转换定时预测和脚踏性数据之间的平均值差异(±SD)为21.6 ms和38.1毫秒用于跟踪和脚趾,分别。所提出的方法实现的合适性能表明它可以成功地用于自动分类步态阶段并在级地面步道期间从SEMG信号预测脚踏接触信号。

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