Comparison of 2D and 3D Gait Kinematics in Gender Classification Using Principal Component Analysis and Convolutional Neural Networks

M. Jafarian, F. Lotfi, M. Majdolhosseini, A. Arshi
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引用次数: 1

Abstract

Human gait analysis is of great importance and can be used in the prevention and treatment of motion abnormalities. Spatiotemporal data of gait captured by high-frequency cameras is studied in 3 anatomical planes: sagittal, frontal, and horizontal. The necessity of using several cameras in motion capture technology for capturing 3D data limits its application for clinical purposes. This study evaluated the possibility of using Principal Component Analysis (PCA) as a feature selection technique to find out which anatomical plane provides the most useful information in gait analysis. For this purpose, 3-dimensional marker trajectories of 14 healthy subjects walking on a treadmill with three different speeds were captured. Then, PCA was applied to each gait cycle data to find out variables with the most variation. Afterwards, to evaluate the accuracy and reliability of PCA results, a convolutional neural network (CNN) was used. The highest eigenvalues obtained from PCA indicated that Y-axis (forward direction) had the most variance. Based on the mentioned result, 3 different datasets were prepared as CNN inputs for gender classification: 1) marker trajectories in 3D space, 2) marker trajectories in the X-Y plane (horizontal), 3) marker trajectories in the Y-Z plane (sagittal), The classification accuracy obtained from all CNN models were higher than 95%, which confirmed the significant role of the 2D plane for some useful applications such as gender classification.
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基于主成分分析和卷积神经网络的二维和三维步态运动学性别分类比较
人体步态分析具有重要意义,可用于预防和治疗运动异常。在矢状面、额状面和水平3个解剖平面上研究了高频摄像机捕获的步态时空数据。在运动捕捉技术中需要使用多个摄像机来捕捉3D数据,这限制了其在临床中的应用。本研究评估了使用主成分分析(PCA)作为特征选择技术的可能性,以找出在步态分析中哪个解剖平面提供了最有用的信息。为此,我们捕获了14名健康受试者在跑步机上以三种不同速度行走的三维标记轨迹。然后,对每个步态周期数据进行PCA分析,找出变异最大的变量。之后,为了评估PCA结果的准确性和可靠性,我们使用卷积神经网络(CNN)。主成分分析得到的最高特征值表明,y轴(正向)方差最大。基于上述结果,我们准备了3个不同的数据集作为CNN的性别分类输入:1)3D空间的标记轨迹,2)X-Y平面(水平)的标记轨迹,3)Y-Z平面(矢状面)的标记轨迹,所有CNN模型的分类准确率都在95%以上,这证实了2D平面在性别分类等一些有用的应用中的重要作用。
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