使用人工神经网络预测步态中稳定的最小脚趾间隙的步态试验数量最小化

J. Cai, R. Begg, R. Best, T. Karaharju-Huisman, S. Taylor
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引用次数: 1

摘要

人工神经网络(ANN)在步态分析中的应用越来越广泛。反向传播神经网络以其良好的预测能力在监督训练模式下被广泛应用于步态数据分析。本文使用人工神经网络对较少步态试验得出的最小脚趾间隙(MTC)特征与在30分钟连续跑步机上行走的步态数据得出的最小脚趾间隙(MTC)特征之间的关系建模。以10个不同数据段长度计算的9个统计量作为输入,以30分钟步态试验计算的MTC数据的均值和标准差作为输出,分别对人工神经网络进行训练和测试。结果表明,经过训练的人工神经网络能够准确预测稳定的MTC数据,即使是5个步态周期的数据,预测准确率也在80%左右,并且随着输入数据段长度的增加,预测精度有所提高。
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Minimization of number of gait trials for predicting the stabilized minimum toe clearance during gait using artificial neural networks
Artificial neural networks (ANN) have been increasingly used in gait analysis. Back-propagation neural network has been widely used because of its good predicting power in supervised training mode for gait data analysis. In this paper an artificial neural network was used to model relationships between minimum toe clearance (MTC) characteristics derived from fewer gait trials and that derived from gait data during a 30-minute continuous treadmill walking. The ANN was separately trained and tested with nine statistics calculated from 10 different data segment lengths as inputs, and the mean and standard deviation of MTC data calculated from 30 minutes gait trials as outputs. The results suggest that a trained ANN is able to accurately predict stabilized MTC data, even a 5-gait cycles' data predicted with about 80% accuracy and the prediction accuracy was seen to improve with increase in the length of input data segment.
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