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Artificial Neural Networks in Motion Analysis—Applications of Unsupervised and Heuristic Feature Selection Techniques

机译:无监督和启发式特征选择技术的运动分析中的人工神经网络

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摘要

The use of machine learning to estimate joint angles from inertial sensors is a promising approach to in-field motion analysis. In this context, the simplification of the measurements by using a small number of sensors is of great interest. Neural networks have the opportunity to estimate joint angles from a sparse dataset, which enables the reduction of sensors necessary for the determination of all three-dimensional lower limb joint angles. Additionally, the dimensions of the problem can be simplified using principal component analysis. Training a long short-term memory neural network on the prediction of 3D lower limb joint angles based on inertial data showed that three sensors placed on the pelvis and both shanks are sufficient. The application of principal component analysis to the data of five sensors did not reveal improved results. The use of longer motion sequences compared to time-normalised gait cycles seems to be advantageous for the prediction accuracy, which bridges the gap to real-time applications of long short-term memory neural networks in the future.
机译:使用机器学习从惯性传感器估计关节角度是对现场运动分析的有希望的方法。在这种情况下,通过使用少量传感器的测量来简化测量非常令人感兴趣。神经网络有机会从稀疏数据集估计关节角度,这使得能够减少确定所有三维下肢关节​​角度所需的传感器。另外,可以使用主成分分析简化问题的尺寸。训练基于惯性数据的3D下肢关节角度的长期内记忆神经网络显示,放置在骨盆和两个柄上的三个传感器都足够了。主成分分析对五个传感器的数据的应用没有揭示改进的结果。与时间归一化的步态周期相比,使用较长的运动序列似乎是有利的,对预测精度弥合了未来长短期内存神经网络的实时应用的差距。

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