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Estimating Lower Extremity Running Gait Kinematics with a Single Accelerometer: A Deep Learning Approach

机译:用单个加速度计估算下肢跑步步态运动学:一种深度学习方法

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摘要

Abnormal running kinematics are associated with an increased incidence of lower extremity injuries among runners. Accurate and unobtrusive running kinematic measurement plays an important role in the detection of gait abnormalities and the prevention of injuries among runners. Inertial-based methods have been proposed to address this need. However, previous methods require cumbersome sensor setup or participant-specific calibration. This study aims to validate a shoe-mounted accelerometer for sagittal plane lower extremity angle measurement during running based on a deep learning approach. A convolutional neural network (CNN) architecture was selected as the regression model to generalize in inter-participant scenarios and to minimize poorly estimated joints. Motion and accelerometer data were recorded from ten participants while running on a treadmill at five different speeds. The reference joint angles were measured by an optical motion capture system. The CNN model predictions deviated from the reference angles with a root mean squared error (RMSE) of less than 3.5° and 6.5° in intra- and inter-participant scenarios, respectively. Moreover, we provide an estimation of six important gait events with a mean absolute error of less than 2.5° and 6.5° in intra- and inter-participants scenarios, respectively. This study highlights an appealing minimal sensor setup approach for gait analysis purposes.
机译:跑步运动学异常与跑步者下肢受伤的发生率增加相关。准确,流畅的跑步运动学测量对步态异常的检测和运动员的伤害预防具有重要作用。已经提出了基于惯性的方法来解决这一需求。但是,以前的方法需要麻烦的传感器设置或参与者特定的校准。这项研究旨在基于深度学习方法,验证跑步过程中用于矢状面下肢角度测量的鞋类加速度计。选择卷积神经网络(CNN)架构作为回归模型,以在参与者之间场景中进行归纳并最小化估计差的关节。在五种不同速度的跑步机上跑步时,记录了十名参与者的运动和加速度计数据。参考关节角度通过光学运动捕获系统测量。在参与者内部和参与者之间的情况下,CNN模型的预测偏离参考角度的均方根误差(RMSE)分别小于3.5°和6.5°。此外,我们提供了六个重要步态事件的估计,在参与者内部和参与者之间的情况下,平均绝对误差分别小于2.5°和6.5°。这项研究强调了一种用于步态分析的极具吸引力的最小传感器设置方法。

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