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基于深度神经网络的可穿戴惯性传感器数据步态分类

Deep Neural Network-Based Gait Classification Using Wearable Inertial Sensor Data.

作者信息

Jung Dawoon, Nguyen Mau Dung, Han Jooin, Park Mina, Lee Kwanhoon, Yoo Seonggeun, Kim Jinwook, Mun Kyung-Ryoul

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2019 Jul;2019:3624-3628. doi: 10.1109/EMBC.2019.8857872.

Abstract

Human gait has been regarded as a useful behavioral biometric trait for personal identification and authentication. This study aimed to propose an effective approach for classifying gait, measured using wearable inertial sensors, based on neural networks. The 3-axis accelerometer and 3-axis gyroscope data were acquired at the posterior pelvis, both thighs, both shanks, and both feet while 29 semi-professional athletes, 19 participants with normal foot, and 21 patients with foot deformities walked on the 20-meter straight path. The classifier based on the gait parameters and fully connected neural network was developed by applying 4-fold cross-validation to 80% of the total samples. For the test set that consisted of the remaining 20% of the total samples, this classifier showed an accuracy of 93.02% in categorizing the athlete, normal foot, and deformed foot groups. Using the same model validation and evaluation method, up to 98.19% accuracy was achieved from the convolutional neural network-based classifier. This classifier was trained with the gait spectrograms obtained from the time-frequency domain analysis of the raw acceleration and angular velocity data. The classification based only on the pelvic spectrograms exhibited an accuracy of 94.25% even without requiring a time-consuming and resource-intensive process for feature engineering. The notable performance and practicality in gait classification achieved by this study suggest potential applicability of the proposed approaches in the field of biometrics.

摘要

人类步态已被视为一种用于个人识别和认证的有用行为生物特征。本研究旨在提出一种基于神经网络的有效方法,用于对使用可穿戴惯性传感器测量的步态进行分类。在29名半职业运动员、19名足部正常的参与者和21名足部畸形患者在20米直道上行走时,采集了后骨盆、双侧大腿、双侧小腿和双足的三轴加速度计和三轴陀螺仪数据。基于步态参数和全连接神经网络的分类器通过对80%的总样本应用4折交叉验证来开发。对于由剩余20%的总样本组成的测试集,该分类器在对运动员、正常足部和畸形足部组进行分类时的准确率为93.02%。使用相同的模型验证和评估方法,基于卷积神经网络的分类器实现了高达98.19%的准确率。该分类器使用从原始加速度和角速度数据的时频域分析获得的步态频谱图进行训练。仅基于骨盆频谱图的分类即使在不需要耗时且资源密集的特征工程过程的情况下也表现出94.25%的准确率。本研究在步态分类中取得的显著性能和实用性表明了所提出方法在生物识别领域的潜在适用性。

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