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基于时频表征和深度卷积神经网络的步态多分类

Multiple Classification of Gait Using Time-Frequency Representations and Deep Convolutional Neural Networks.

作者信息

Jung Dawoon, Nguyen Mau Dung, Park Mina, Kim Jinwook, Mun Kyung-Ryoul

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2020 Apr;28(4):997-1005. doi: 10.1109/TNSRE.2020.2977049. Epub 2020 Feb 28.

DOI:10.1109/TNSRE.2020.2977049
PMID:32142445
Abstract

Human gait has served as a useful barometer of health. Existing studies for automatic categorization of gait have been limited to a binary classification of pathological and non-pathological gait and provided low accuracy in multi-classification. This study aimed to propose a novel approach that can multi-classify gait with no visually discernible difference in characteristics. Sixty-nine participants without gait disturbance were recruited. Twenty-nine of the participants were semi-professional athletes, and 19 were ordinary people. The remaining 21 participants were people with subtle foot deformities. The 3-axis acceleration and the 3-axis angular velocity signals were measured using the inertial measurement units attached to the foot, shank, thigh, and posterior pelvis while walking. The gait spectrograms were acquired by applying time-frequency analyses to the lower body movement signals measured in one stride and used to train the deep convolutional neural network-based classifiers. Four-fold cross-validation was applied to 80% of the total samples and the remaining 20% were used as test data. The foot, shank, and thigh spectrograms enabled complete classification of the three groups even without requiring a sophisticated process for feature engineering. This is the first study that employed the spectrographic approach in gait classification and achieved reliable multi-classification of gait without observable differences in characteristics using the deep convolutional neural networks.

摘要

人类步态一直是健康状况的有用晴雨表。现有的步态自动分类研究仅限于病理性和非病理性步态的二元分类,在多分类中准确率较低。本研究旨在提出一种新方法,能够对特征上无视觉可辨差异的步态进行多分类。招募了69名无步态障碍的参与者。其中29名参与者是半职业运动员,19名是普通人。其余21名参与者是有轻微足部畸形的人。在行走过程中,使用附着在足部、小腿、大腿和后骨盆的惯性测量单元测量3轴加速度和3轴角速度信号。通过对一步中测量的下半身运动信号进行时频分析来获取步态频谱图,并用于训练基于深度卷积神经网络的分类器。对80%的总样本进行四折交叉验证,其余20%用作测试数据。即使不需要复杂的特征工程过程,足部、小腿和大腿的频谱图也能对三组进行完全分类。这是第一项在步态分类中采用频谱方法,并使用深度卷积神经网络实现对特征无明显差异的步态进行可靠多分类的研究。

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