基于混合卷积神经网络的人体步态分析

Khang Nguyen, Viet V. Nguyen, Nga Mai, An H. Nguyen, An Nguyen
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引用次数: 1

摘要

人体步态分析是一种很有前途的研究人类活动的方法,如走路或坐着。它反映了一个人的习惯,可以在这个人的任何活动中观察到。人体运动模式受多种因素影响,包括生理、社会、心理和健康因素。肢体运动的差异有助于识别步态模式,这通常是使用惯性测量单元传感器(IMU)来测量的,比如陀螺仪和加速度计,它们被放置在身体的各个位置。本文分析了IMU传感器与肌电传感器(EMG)的结合,以提高人体运动的识别精度。我们提出了混合卷积神经网络(CNN)和长短期记忆神经元网络(LSTM)用于人类步态分析问题,准确率达到0.9418,优于包括纯CNN模型在内的其他模型。利用CNN的图像分类技术,我们对多变量时间序列传感器信号进行分析,通过滑动窗口将传感器数据转换为图像表示和主成分分析(PCA)来降低数据维数。为了解决数据集不平衡问题,我们通过每个类中有效样本的倒数来重新加权我们的模型损失。我们使用具有独特特征的人类步态数据集HuGaDB进行步态分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HUMAN GAIT ANALYSIS USING HYBRID CONVOLUTIONAL NEURAL NETWORKS
Human gait analysis is a promising method of researching on human activities like walking or sitting. It reflects the habits of one person and can be observed in any activity that person performs. The patterns in human movements are influenced by many factors, including physiology, social, psychological, and health factors. Differences in limb movements help identify gait patterns, which are often measured using inertial measurement unit sensors (IMU) like gyroscopes and accelerometers placed in various locations throughout the body.    This paper analyses the combination of IMU sensors and electromyography sensors (EMG) to improve the identification accuracy of human movements. We propose the hybrid convolutional neural network (CNN) and long short-term memory neuron network (LSTM) for the human gait analysis problem to achieve an accuracy of 0.9418, better than other models including pure CNN models. By using CNN's image classification advancements, we analyse multivariate time series sensor signals by using a sliding window to transform sensor data into image representation and principal component analysis (PCA) to reduce the data dimensionality. To tackle the dataset imbalance issue, we re-weight our model loss by the inverse effective number of samples in each class. We use the human gait HuGaDB dataset with unique characteristics, for gait analysis.
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