Abstract:The image is segmented at different levels to extract the uniform local binary pattern (ULBP) histogram features of the sub-block images. The global and local features are taken into account, and meanwhile the processing space is converted from the gray space to ULBP feature subspace. Consequently, the correlation between row vectors can be eliminated effectively. Thus, the discriminant projection matrix is performed better through row two-dimensional linear discriminant analysis (R2DLDA). Experimental results on ORL, YALE and FERET databases show that compared with some common methods based on 2DLDA and multilevel LBP, the proposed method achieves a higher recognition rate with a low feature dimension, which proves its effectiveness.
吴煌鹏,戴声奎. 基于ULBP特征子空间的2DLDA人脸识别方法*[J]. 模式识别与人工智能, 2014, 27(10): 894-899.
WU Huang-Peng, DAI Sheng-Kui. Face Recognition of 2DLDA Based on ULBP Eigensubspace. , 2014, 27(10): 894-899.
[1] Duda R O, Hart P E, Stork D G. Pattern Classification. 2nd Edition.New York, USA: John Wiley & Sons, 2001 [2] Turk M, Pentland A. Eigenfaces for Recognition. Journal of Cognitive Neuroscience, 1991, 3(1): 71-86 [3] Belhumeur P N, Hespanha J P, Kriegman D J. Eigenfaces vs. Fisherfaces: Recognition Using Class Specific Linear Projection. IEEE Trans on Pattern Analysis and Machine Intelligence, 1997, 19(7): 711-720 [4] Li M, Yuan B Z. 2D-LDA: A Statistical Linear Discriminant Analysis for Image Matrix. Pattern Recognition Letters, 2005, 26(5): 527-532 [5] Noushath S, Kumar G H, Shivakumara P. (2D)2LDA: An Efficient Approach for Face Recognition. Pattern Recognition, 2006, 39(7): 1396-1400 [6] Ojala T, Pietikinen M, Harwood D. A Comparative Study of Texture Measures with Classification Based on Feature Distributions. Pattern Recognition, 1996, 29(1): 51-59 [7] Ojala T, Pietikinen M, Menp T. Multiresolution Gray-Scale and Rotation Invariant Texture Classification with Local Binary Patterns. IEEE Trans on Pattern Analysis and Machine Intelligence, 2002, 24(7): 971-987 [8] Su Y, Shan S G, Chen X L, et al. Integration of Global and Local Feature for Face Recognition. Journal of Software, 2010, 21(8): 1849-1862 (in Chinese) (苏 煜,山世光,陈熙霖,等.基于全局和局部特征集成的人脸识别.软件学报, 2010, 21(8): 1849-1862) [9] Hadid A, Pietikinen M, Ahonen T. A Discriminative Feature Space for Detecting and Recognizing Faces // Proc of the IEEE Computer Society Conference on Computer Vision and Pattern Re- cognition. Washington, USA, 2004, II: 797-804 [10] Pu X R, Wang Y T. Face Detection on Partial and Holistic LBP Features // Proc of the International Conference on Electrical and Control Engineering. Yichang, China, 2011: 1071-1074 [11] Pu X R, Zhou Y, Zhou R Y. Face Recognition on Partial and Holistic LBP Features. Journal of Electronic Science and Technology, 2012, 10(1): 56-60 [12] Paris S, Glotin H, Zhao Z Q. Real-Time Face Detection Using Integral Histogram of Multi-scale Local Binary Patterns // Proc of the 7th International Conference on Advanced Intelligent Computing. Zhengzhou, China, 2011: 276-281 [13] Qi Y F, Zhang J S. (2D)2PCALDA: An Efficient Approach for Face Recognition. Applied Mathematics and Computation, 2009, 213: 1-7 [14] Wang W, Huang F F, Li J W, et al. Face Description and Recognition Using Multi-scale LBP Feature. Optics and Precision Engineering, 2008, 16(4): 696-705 (in Chinese) (王 玮,黄非非,李见为,等.使用多尺度LBP特征描述与识别人脸.光学精密工程, 2008, 16(4): 696-705) [15] Ahonen T, Hadid A, Pietikinen M. Face Description with Local Binary Patterns: Application to Face Recognition. IEEE Trans on Pattern Analysis and Machine Intelligence, 2006, 28(12): 2037-2041 [16] Guo Z H, Zhang L, Zhang D, et al. Hierarchical Multiscale LBP for Face and Palmprint Recognition // Proc of the 17th IEEE International Conference on Image Processing. Hong Kong, China, 2010: 4521-4524