CVMar 10, 2018

Sample-Relaxed Two-Dimensional Color Principal Component Analysis for Face Recognition and Image Reconstruction

arXiv:1803.03837v14 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for face recognition and image processing applications.

The paper tackles face recognition and image reconstruction by introducing a sample-relaxed two-dimensional color principal component analysis (SR-2DCPCA) based on quaternion models, which achieves a higher recognition rate than state-of-the-art methods and is efficient in image reconstruction.

A sample-relaxed two-dimensional color principal component analysis (SR-2DCPCA) approach is presented for face recognition and image reconstruction based on quaternion models. A relaxation vector is automatically generated according to the variances of training color face images with the same label. A sample-relaxed, low-dimensional covariance matrix is constructed based on all the training samples relaxed by a relaxation vector, and its eigenvectors corresponding to the $r$ largest eigenvalues are defined as the optimal projection. The SR-2DCPCA aims to enlarge the global variance rather than to maximize the variance of the projected training samples. The numerical results based on real face data sets validate that SR-2DCPCA has a higher recognition rate than state-of-the-art methods and is efficient in image reconstruction.

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