Fuzzy Decision-making Modular Two-dimensional Principal Component Regression for Robust Face Recognition
DOI:
https://doi.org/10.3993/jfbim00121Keywords:
Face Recognition;Block 2DPCR;Liner Regression;Fuzzy Similarity Preferred Ratio DecisionAbstract
To improve robustness of Linear Regression (LR) for face recognition, a novel face recognition framework\r based on modular two-dimensional Principal Component Regression (2DPCR) is proposed in this paper.\r Firstly, all face images are partitioned into several blocks and the approach performs 2DPCA process\r to project the blocks onto the face spaces. Then, LR is used to obtain the residuals of every block\r by representing a test image as a linear combination of class-speci\fc galleries. Lastly, three minimum\r residuals of every block and fuzzy similarity preferred ratio decision method are applied to make a\r classi\fcation. The proposed framework outperforms the state-of-the-art methods and demonstrates\r strong robustness under various illumination, pose and occlusion conditions on several face databases.Downloads
Published
2015-08-01
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Articles