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Rotation, illumination invariant polynomial kernel Fisher discriminant analysis using Radon and discrete cosine transforms based features for face recognition

机译:基于Radon和基于离散余弦变换的旋转,照度不变多项式核Fisher判别分析用于面部识别

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This paper presents an in-plane rotation (tilt), illumination invariant pattern recognition framework based on the combination of the features extracted using Radon and discrete cosine transforms and kernel based learning for face recognition. The use of Radon transform enhances the low frequency components, which are useful for face recognition and that of DCT yields low dimensional feature vector. The proposed technique computes Radon projections in different orientations and captures the directional features of the face images. DCT applied on Radon projections provides frequency features. Further, polynomial kernel Fisher discriminant analysis implemented on these features enhances discrimination capability of these features. The technique is also robust to zero mean white noise. The feasibility of the proposed technique has been evaluated using FERET, ORL, and Yale databases.
机译:本文结合Radon和离散余弦变换提取的特征以及基于核的人脸识别技术,提出了一种面内旋转(倾斜),光照不变模式识别框架。 Radon变换的使用增强了低频分量,这对于面部识别很有用,而DCT则产生了低维特征向量。所提出的技术计算不同方向上的Radon投影并捕获面部图像的方向特征。应用于Radon投影的DCT具有频率特征。此外,对这些特征执行的多项式核Fisher判别分析增强了这些特征的判别能力。该技术对于零平均白噪声也很鲁棒。已使用FERET,ORL和Yale数据库评估了提出的技术的可行性。

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