机器学习在步态相位分类和关节矩回归中的应用

Erik Jung, Cheryl Lin, Martin Contreras, Mircea Teodorescu
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引用次数: 2

摘要

传统上,监测生物力学参数需要大量的传感器来跟踪运动,如步态。研究和临床研究都依赖于复杂的动作捕捉工作室来产生精确的运动测量。我们提出了一种独立于光学硬件捕获运动的方法,其具体目标是使用关节角度测量方法(如IMU(惯性测量单元)传感器)识别步态的阶段。我们提出了一种机器学习方法,以逐步减少分类步态阶段所需的特征数量(关节角度),而不会显著降低准确性。我们发现,将特征数从6个(每个使用的关节)减少到3个,平均分类精度仅降低4.04%,而将特征数从3个减少到2个,平均分类精度降低7.46%。我们使用生物力学仿真包OpenSim扩展步态阶段分类,以推广一组所需的最大关节力矩来实现阶段之间的转换。我们相信这种方法可以用于监测步态阶段以外的应用,直接应用于医疗和辅助技术领域。
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Applied Machine Learning on Phase of Gait Classification and Joint-Moment Regression
Traditionally, monitoring biomechanics parameters requires a significant amount of sensors to track exercises such as gait. Both research and clinical studies have relied on intricate motion capture studios to yield precise measurements of movement. We propose a method that captures motion independently of optical hardware with the specific goal of identifying the phases of gait using joint angle measurement approaches like IMU (inertial measurement units) sensors. We are proposing a machine learning approach to progressively reduce the feature number (joint angles) required to classify the phases of gait without a significant drop in accuracy. We found that reducing the feature number from six (every joint used) to three reduces the mean classification accuracy by only 4.04%, while reducing the feature number from three to two drops mean classification accuracy by 7.46%. We extended gait phase classification by using the biomechanics simulation package, OpenSim, to generalize a set of required maximum joint moments to transition between phases. We believe this method could be used for applications other than monitoring the phases of gait with direct application to medical and assistive technology fields.
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