Face recognition using shape and texture

Chengjun Liu, H. Wechsler
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引用次数: 17

Abstract

We introduce in this paper a new face coding and recognition method which employs the Enhanced FLD (Fisher Linear Discrimimant) Model (EFM) on integrated shape (vector) and texture ('shape-free' image) information. Shape encodes the feature geometry of a face while texture provides a normalized shape-free image by warping the original face image to the mean shape, i.e., the average of aligned shapes. The dimensionalities of the shape and the texture spaces are first reduced using Principal Component Analysis (PCA). The corresponding but reduced shape find texture features are then integrated through a normalization procedure to form augmented features. The dimensionality reduction procedure, constrained by EFM for enhanced generalization, maintains a proper balance between the spectral energy needs of PCA for adequate representation, and the FLD discrimination requirements, that the eigenvalues of the within-class scatter matrix should not include small trailing values after the dimensionality reduction procedure as they appear in the denominator.
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基于形状和纹理的人脸识别
本文介绍了一种新的人脸编码和识别方法,该方法采用增强的Fisher线性判别模型(EFM)对形状(矢量)和纹理(“无形状”图像)信息进行集成。形状编码人脸的特征几何形状,而纹理通过将原始人脸图像扭曲为平均形状(即对齐形状的平均值)来提供标准化的无形状图像。首先利用主成分分析(PCA)对形状空间和纹理空间进行降维。然后通过归一化过程将相应的但被简化的形状查找纹理特征集成为增强特征。降维过程受EFM约束以增强泛化,在PCA的谱能量需求(以充分表示)和FLD判别要求(类内散点矩阵的特征值在降维过程后不应包含出现在分母中的小尾值)之间保持适当的平衡。
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