Sciweavers

CVPR
2010
IEEE

Face Recognition with Learning-based Descriptor

14 years 7 months ago
Face Recognition with Learning-based Descriptor
We present a novel approach to address the representation issue and the matching issue in face recognition (verification). Firstly, our approach encodes the micro-structures of the face by a new learning-based encoding method. Unlike many previous manually designed encoding methods (e.g., LBP or SIFT), we use unsupervised learning techniques to learn an encoder from the training examples, which can automatically achieve very good tradeoff between discriminative power and invariance. Then we apply PCA to get a compact face descriptor. We find that a simple normalization mechanism after PCA can further improve the discriminative ability of the descriptor. The resulting face representation, learning-based (LE) descriptor, is compact, highly discriminative, and easy-to-extract. To handle the large pose variation in real-life scenarios, we propose a pose-adaptive matching method that uses pose-specific classifiers to deal with different pose combinations (e.g., frontal v.s. frontal, fr...
Zhimin Cao, Qi Yin, Jian Sun, Xiaoou Tang
Added 07 Apr 2010
Updated 14 May 2010
Type Conference
Year 2010
Where CVPR
Authors Zhimin Cao, Qi Yin, Jian Sun, Xiaoou Tang
Comments (0)