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基于步态频谱图和深度卷积神经网络的个体识别。

Personal Identification Using Gait Spectrograms and Deep Convolutional Neural Networks.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:6899-6904. doi: 10.1109/EMBC46164.2021.9630315.

DOI:10.1109/EMBC46164.2021.9630315
PMID:34892691
Abstract

Human gait can serve as a useful behavioral trait for biometrics. Compared to fingerprint, face, and iris, the most commonly used physiological identifiers, gait can be unobtrusively monitored from a distance without requiring explicit involvement and physical restraint from people. Advances in wearable technology facilitate direct and faithful measurement of gait motions with easy-to-use and low-cost inertial sensors. This study aimed to propose an approach to using kinematic gait data collected with wearable inertial sensors for reliable personal identification. Sixty-nine individuals ranged in age from 24 to 62 years old participated in this study. The 3-axis acceleration and the 3-axis angular velocity signals were measured using the inertial measurement units attached to the feet, shanks, thighs, 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. Among each participant's 15 strides, 12 strides were used in the 4-fold cross validation of the deep convolutional neural network-based classifiers, and the remaining three strides were used to evaluate the classifiers. An accuracy of 99.69% was achieved by using the foot, shank, thigh, and pelvic spectrograms, and the accuracy was 96.89% using only the foot spectrograms. This study has the potential to be applied in behavior-based biometric technologies by confirming the feasibility of the proposed kinematic and spectrographic approaches in identifying personal behavioral characteristics.

摘要

人类步态可以作为生物识别的有用行为特征。与最常用的生理标识符(如指纹、面部和虹膜)相比,步态可以在不要求人们明确参与和身体约束的情况下从远处进行非侵入式监测。可穿戴技术的进步促进了使用易于使用且低成本的惯性传感器直接和准确地测量步态运动。本研究旨在提出一种使用可穿戴惯性传感器采集的运动学步态数据进行可靠个人识别的方法。

本研究共有 69 名年龄在 24 岁至 62 岁之间的个体参与。使用附着在脚部、小腿、大腿和后骨盆上的惯性测量单元测量三轴加速度和三轴角速度信号,在一步测量中应用时频分析获取下半身运动信号的步态频谱图。在每个参与者的 15 步中,使用 4 倍交叉验证基于深度卷积神经网络的分类器,其中 12 步用于分类器的训练,其余 3 步用于评估分类器。使用脚、小腿、大腿和骨盆频谱图可达到 99.69%的准确率,仅使用脚频谱图可达到 96.89%的准确率。本研究通过确认所提出的运动学和频谱学方法在识别个人行为特征方面的可行性,有望应用于基于行为的生物识别技术。

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