Mundt Marion, Koeppe Arnd, David Sina, Witter Tom, Bamer Franz, Potthast Wolfgang, Markert Bernd
Institute of General Mechanics, RWTH Aachen University, Aachen, Germany.
Institute of Biomechanics and Orthopeadics, German Sport University Cologne, Cologne, Germany.
Front Bioeng Biotechnol. 2020 Feb 5;8:41. doi: 10.3389/fbioe.2020.00041. eCollection 2020.
Enhancement of activity is one major topic related to the aging society. Therefore, it is necessary to understand people's motion and identify possible risk factors during activity. Technology can be used to monitor motion patterns during daily life. Especially the use of artificial intelligence combined with wearable sensors can simplify measurement systems and might at some point replace the standard motion capturing using optical measurement technologies. Therefore, this study aims to analyze the estimation of 3D joint angles and joint moments of the lower limbs based on IMU data using a feedforward neural network. The dataset summarizes optical motion capture data of former studies and additional newly collected IMU data. Based on the optical data, the acceleration and angular rate of inertial sensors was simulated. The data was augmented by simulating different sensor positions and orientations. In this study, gait analysis was undertaken with 30 participants using a conventional motion capture set-up based on an optoelectronic system and force plates in parallel with a custom IMU system consisting of five sensors. A mean correlation coefficient of 0.85 for the joint angles and 0.95 for the joint moments was achieved. The RMSE for the joint angle prediction was smaller than 4.8° and the nRMSE for the joint moment prediction was below 13.0%. Especially in the sagittal motion plane good results could be achieved. As the measured dataset is rather small, data was synthesized to complement the measured data. The enlargement of the dataset improved the prediction of the joint angles. While size did not affect the joint moment prediction, the addition of noise to the dataset resulted in an improved prediction accuracy. This indicates that research on appropriate augmentation techniques for biomechanical data is useful to further improve machine learning applications.
活动能力增强是与老龄化社会相关的一个主要课题。因此,有必要了解人们的运动情况,并识别活动期间可能的风险因素。技术可用于监测日常生活中的运动模式。特别是将人工智能与可穿戴传感器结合使用,可以简化测量系统,并可能在某个时候取代使用光学测量技术的标准运动捕捉。因此,本研究旨在使用前馈神经网络分析基于惯性测量单元(IMU)数据的下肢三维关节角度和关节力矩估计。该数据集汇总了先前研究的光学运动捕捉数据以及新收集的额外IMU数据。基于光学数据,模拟了惯性传感器的加速度和角速率。通过模拟不同的传感器位置和方向对数据进行了扩充。在本研究中,30名参与者使用基于光电系统和测力板的传统运动捕捉装置以及由五个传感器组成的定制IMU系统进行了步态分析。关节角度的平均相关系数为0.85,关节力矩的平均相关系数为0.95。关节角度预测的均方根误差(RMSE)小于4.8°,关节力矩预测的归一化均方根误差(nRMSE)低于13.0%。特别是在矢状运动平面上可以取得良好的结果。由于测量数据集相当小,因此合成了数据以补充测量数据。数据集的扩充提高了关节角度的预测。虽然数据集大小不影响关节力矩预测,但向数据集中添加噪声会提高预测精度。这表明对生物力学数据的适当扩充技术进行研究有助于进一步改进机器学习应用。