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A Comparison of Three Neural Network Approaches for Estimating Joint Angles and Moments from Inertial Measurement Units

机译:三种神经网络方法对惯性测量单元估算关节角度和时刻的比较

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摘要

The application of artificial intelligence techniques to wearable sensor data may facilitate accurate analysis outside of controlled laboratory settings—the holy grail for gait clinicians and sports scientists looking to bridge the lab to field divide. Using these techniques, parameters that are difficult to directly measure in-the-wild, may be predicted using surrogate lower resolution inputs. One example is the prediction of joint kinematics and kinetics based on inputs from inertial measurement unit (IMU) sensors. Despite increased research, there is a paucity of information examining the most suitable artificial neural network (ANN) for predicting gait kinematics and kinetics from IMUs. This paper compares the performance of three commonly employed ANNs used to predict gait kinematics and kinetics: multilayer perceptron (MLP); long short-term memory (LSTM); and convolutional neural networks (CNN). Overall high correlations between ground truth and predicted kinematic and kinetic data were found across all investigated ANNs. However, the optimal ANN should be based on the prediction task and the intended use-case application. For the prediction of joint angles, CNNs appear favourable, however these ANNs do not show an advantage over an MLP network for the prediction of joint moments. If real-time joint angle and joint moment prediction is desirable an LSTM network should be utilised.
机译:人工智能技术在可穿戴传感器数据中的应用可以促进受控实验室设置之外的准确分析 - 步态临床医生的圣杯和寻求将实验室展开实地划分的体育科学家。使用这些技术,可以使用替代较低分辨率输入来预测难以直接测量的参数。一个示例是基于惯性测量单元(IMU)传感器的输入来预测关节运动学和动力学。尽管研究了增加,但缺乏信息检查最合适的人工神经网络(ANN),用于预测IMUS的步态运动学和动力学。本文比较了用于预测步态运动学和动力学的三个普遍采用的ANN的性能:多层情人(MLP);短期内记忆(LSTM);和卷积神经网络(CNN)。在所有调查的ANN中发现了地面真理和预测的运动和动力学数据之间的总体高相关。但是,最佳ANN应基于预测任务和预期用例应用。为了预测关节角度,CNNS似乎有利,但是这些ANNS不显示在MLP网络上以预测联合时刻的优点。如果理想的实时接头角度和关节力矩预测是应该使用LSTM网络。

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