基于改进2DDTW的非线性人脸分类

S. Venkatramaphanikumar, V. Prasad
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引用次数: 1

摘要

面部物理外观通常有几种变化,这些变化是由于表情、光照、遮挡、头部姿势和年龄的变化而发生的。实际上,人眼可以通过每个类别使用单个图像来证明一个人的真实性。本文提出了一种新的人脸非线性分类框架,每个分类只有一个训练图像。直方图均衡化用于对比度拉伸,Gabor小波和核二维PCA用于提取局部和非线性特征,这些特征对方向和空间局域性是不变的。对特征向量进行PCA融合,然后利用二维动态时间扭曲对特征向量进行分类。DTW的连续性、单调性和有界性约束可以同时识别出两个维度特征向量之间的非线性最优路径。该方法在ORL、Grimace和Yale等标准基准人脸数据库上进行了评价,分别取得了91.35%、98.5%和97.16%的较好效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear Face Classification with Modified 2DDTW
Facial physical appearance normally have several variations which occurred due to changes in expression, illumination, occlusion, head pose, and aging. In actual, human eyes can able to justify the authenticity of a person by the use of single image per class. In this paper, a new framework is proposed for nonlinear classification of face images with only one training image per class. Histogram Equalization is used for contrast stretching, Gabor wavelets and Kernel 2D PCA is used to extract local and nonlinear features and those are invariant towards orientation & spatial locality. Those features are fused with PCA fusion and then Two Dimensional Dynamic Time Warping is used for the classification of those feature vectors. The constraints Continuity, Monotonicity and bounded properties of DTW will identify the non linear optimal path between two dimensions of feature vectors simultaneously. The proposed method has evaluated on standard bench mark face databases like ORL, Grimace & Yale and yielded better performance such as 91.35%, 98.5% and 97.16% respectively.
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