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Gait Recognition by Applying Multiple Projections and Kernel PCA

机译:通过应用多个投影和内核PCA进行步态识别

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摘要

Recognizing people by gait has a unique advantage over other biometrics: it has potential for use at a distance when other biometrics might be at too low a resolution, or might be obscured. In this paper, an improved method for gait recognition is proposed. The proposed work introduces a nonlinear machine learning method, kernel Principal Component Analysis (KPCA), to extract gait features from silhouettes for individual recognition. Binarized silhouette of a motion object is first represented by four 1-D signals which are the basic image features called the distance vectors. The distance vectors are differences between the bounding box and silhouette, and extracted using four projections to silhouette. Classic linear feature extraction approaches, such as PCA, LDA, and FLDA, only take the 2-order statistics among gait patterns into account, and are not sensitive to higher order statistics of data. Therefore, KPCA is used to extract higher order relations among gait patterns for future recognition. Fast Fourier Transform (FFT) is employed as a preprocessing step to achieve translation invariant on the gait patterns accumulated from silhouette sequences which are extracted from the subjects walk in different speed and/or different time. The experiments are carried out on the CMU and the USF gait databases and presented based on the different training gait cycles. Finally, the performance of the proposed algorithm is comparatively illustrated to take into consideration the published gait recognition approaches.
机译:与其他生物识别技术相比,通过步态识别人具有独特的优势:当其他生物识别技术的分辨率太低或被遮挡时,它有可能在远距离使用。本文提出了一种改进的步态识别方法。拟议的工作引入了一种非线性机器学习方法,即内核主成分分析(KPCA),以从轮廓提取步态特征以进行个体识别。运动对象的二值化轮廓首先由四个一维信号表示,这些信号是称为距离矢量的基本图像特征。距离矢量是边界框和轮廓之间的差异,并使用四个投影来提取轮廓。经典的线性特征提取方法(例如PCA,LDA和FLDA)仅考虑步态模式中的2阶统计量,并且对数据的高阶统计量不敏感。因此,KPCA用于提取步态模式之间的更高阶关系,以供将来识别。快速傅里叶变换(FFT)被用作预处理步骤,以实现从轮廓序列累积的步态模式的平移不变,该轮廓序列是从以不同速度和/或不同时间行走的对象中提取的。实验在CMU和USF步态数据库上进行,并根据不同的步态周期进行介绍。最后,比较地说明了所提出算法的性能,以考虑已发布的步态识别方法。

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