Efficiency of Recognition Methods for Single Sample per Person Based Face Recognition

Even for the present-day computer technology, the biometric recognition of human face is a difficult task and continually evolving concept in the area of biometric recognition. The area of face recognition is well-described today in many papers and books, e.g. (Delac et al., 2008), (Li & Jain, 2005), (Oravec et al., 2010). The idea that two-dimensional still-image face recognition in controlled environment is already a solved task is generally accepted and several benchmarks evaluating recognition results were done in this area (e.g. Face Recognition Vendor Tests, FRVT 2000, 2002, 2006, http://www.frvt.org/). Nevertheless, many tasks have to be solved, such as recognition in unconstrained environment, recognition of non-frontal images, single sample per person problem, etc. This chapter deals with single sample per person face recognition (also called one sample per person problem). This topic is related to small sample size problem in pattern recognition. Although there are also advantages of single sample – fast and easy creation of a face database and modest requirements for storage, face recognition methods usually fail to work if only one training sample per person is available. In this chapter, we concentrate on the following items: • Mapping the state-of-the-art of single sample face recognition approaches after year 2006 (the period till 2006 is covered by the detailed survey (Tan et al., 2006)). • Generating new face patterns in order to enlarge the database containing single samples per subject only. Such approaches can include modifications of original face samples using e.g. noise, mean filtering, suitable image transform (forward transform, then neglecting some coefficients and image reconstruction by inverse transform), or generating synthetic samples by ASM (active shape method) and AAM (active appearance method). • Comparing recognition efficiency using single and multiple samples per subject. We illustrate the influence of number of training samples per subject to recognition efficiency for selected methods. We use PCA (principal component analysis), MLP (multilayer perceptron), RBF (radial basis function) network, kernel methods and LBP (local binary patterns). We compare results using single and multiple training samples per person for images taken from FERET database. For our experiments, we selected large image set from FERET database.

[1]  Bernhard E. Boser,et al.  A training algorithm for optimal margin classifiers , 1992, COLT '92.

[2]  Chih-Jen Lin,et al.  A Practical Guide to Support Vector Classication , 2008 .

[3]  Wanqing Li,et al.  Face recognition from single sample based on human face perception , 2009, 2009 24th International Conference Image and Vision Computing New Zealand.

[4]  Kin-Man Lam,et al.  Gabor-based kernel PCA with doubly nonlinear mapping for face recognition with a single face image , 2006, IEEE Transactions on Image Processing.

[5]  Wen Gao,et al.  Virtual face image generation for illumination and pose insensitive face recognition , 2003, 2003 IEEE International Conference on Acoustics, Speech, and Signal Processing, 2003. Proceedings. (ICASSP '03)..

[6]  K. Jaya Priya Dual Tree Complex Wavelet Transform based Face Recognition with Single View , 2010 .

[7]  Xiaoyang Tan,et al.  Sparsity preserving discriminant analysis for single training image face recognition , 2010, Pattern Recognit. Lett..

[8]  B. K. Julsing,et al.  Face Recognition with Local Binary Patterns , 2012 .

[9]  Christopher M. Bishop,et al.  Neural networks for pattern recognition , 1995 .

[10]  Marian Stewart Bartlett,et al.  Recent Advances in Face Recognition , 2008 .

[11]  B. Draper,et al.  The CSU Face Identification Evaluation System User ’ s Guide : Version 4 . 0 , 2002 .

[12]  Matti Pietikäinen,et al.  A comparative study of texture measures with classification based on featured distributions , 1996, Pattern Recognit..

[13]  Sébastien Marcel,et al.  On the Recent Use of Local Binary Patterns for Face Authentication , 2007 .

[14]  Daoqiang Zhang,et al.  A new face recognition method based on SVD perturbation for single example image per person , 2005, Appl. Math. Comput..

[15]  Jian Yang,et al.  Local Graph Embedding Discriminant Analysis for Face Recognition with Single Training Sample Per Person , 2009, 2009 Chinese Conference on Pattern Recognition.

[16]  Wen Gao,et al.  Adaptive generic learning for face recognition from a single sample per person , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[17]  John Mark,et al.  Introduction to radial basis function networks , 1996 .

[18]  Daoqiang Zhang,et al.  Enhanced (PC)2 A for face recognition with one training image per person , 2004, Pattern Recognit. Lett..

[19]  Karim Faez,et al.  Recognizing faces using Adaptively Weighted Sub-Gabor Array from a single sample image per enrolled subject , 2010, Image Vis. Comput..

[20]  Dashun Que,et al.  A novel single training sample face recognition algorithm based on Modular Weighted (2D)2PCA , 2008, 2008 9th International Conference on Signal Processing.

[21]  Javad Mohammadi,et al.  Legendre moments for face identification based on single image per person , 2010, 2010 2nd International Conference on Signal Processing Systems.

[22]  Jianxin Wu,et al.  Face recognition with one training image per person , 2002, Pattern Recognit. Lett..

[23]  Chuan-Kai Yang,et al.  An interactive facial expression generation system , 2008, Multimedia Tools and Applications.

[24]  Gunnar Rätsch,et al.  An introduction to kernel-based learning algorithms , 2001, IEEE Trans. Neural Networks.

[25]  A. Papoulis,et al.  Normal distributions , 1963 .

[26]  Harry Wechsler,et al.  The FERET database and evaluation procedure for face-recognition algorithms , 1998, Image Vis. Comput..

[27]  Fred Nicolls,et al.  Locating Facial Features with an Extended Active Shape Model , 2008, ECCV.

[28]  Xiao Chang,et al.  Is Two-dimensional PCA a New Technique? 1) , 2005 .

[29]  S. Hyakin,et al.  Neural Networks: A Comprehensive Foundation , 1994 .

[30]  Milos Oravec,et al.  Face Recognition in Ideal and Noisy Conditions Using Support Vector Machines, PCA and LDA , 2010 .

[31]  M. Turk,et al.  Eigenfaces for Recognition , 1991, Journal of Cognitive Neuroscience.

[32]  Jian Yang,et al.  Two-dimensional PCA: a new approach to appearance-based face representation and recognition , 2004, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[33]  Matti Pietikäinen,et al.  Gabor volume based local binary pattern for face representation and recognition , 2008, 2008 8th IEEE International Conference on Automatic Face & Gesture Recognition.

[34]  Radoslav Vargic,et al.  An Adaptation of shape adaptive wavelet transform for image coding , 2005 .

[35]  Zhi-Hua Zhou,et al.  Face recognition from a single image per person: A survey , 2006, Pattern Recognit..

[36]  David Zhang,et al.  Face recognition using FLDA with single training image per person , 2008, Appl. Math. Comput..

[37]  Jun Guo,et al.  Robust, accurate and efficient face recognition from a single training image: A uniform pursuit approach , 2010, Pattern Recognit..

[38]  Brian C. Lovell,et al.  Illumination and expression invariant face recognition with one sample image , 2004, Proceedings of the 17th International Conference on Pattern Recognition, 2004. ICPR 2004..

[39]  LinLin Shen,et al.  Local Gabor Binary Pattern Whitened PCA: A Novel Approach for Face Recognition from Single Image Per Person , 2009, ICB.

[40]  Xiaoyang Tan,et al.  Enhanced Local Texture Feature Sets for Face Recognition Under Difficult Lighting Conditions , 2007, IEEE Transactions on Image Processing.

[41]  Zhi-Hua Zhou,et al.  Making FLDA applicable to face recognition with one sample per person , 2004, Pattern Recognit..

[42]  Matti Pietikäinen,et al.  Face Description with Local Binary Patterns: Application to Face Recognition , 2006, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[43]  A. Walairacht,et al.  PCA in wavelet domain for face recognition , 2006, 2006 8th International Conference Advanced Communication Technology.

[44]  Rabab Kreidieh Ward,et al.  Pseudo-Fisherface method for single image per person face recognition , 2008, 2008 IEEE International Conference on Acoustics, Speech and Signal Processing.

[45]  Wen Gao,et al.  Virtual face image generation for illumination and pose insensitive face recognition , 2003, 2003 International Conference on Multimedia and Expo. ICME '03. Proceedings (Cat. No.03TH8698).

[46]  Xiao-Yuan Jing,et al.  Multi-Modal Biometrics Pixel Level Fusion and KPCA-RBF Feature Classification for Single Sample Recognition Problem , 2009, 2009 2nd International Congress on Image and Signal Processing.

[47]  R. Vargic,et al.  An audio watermarking method based on wavelet patchwork algorithm , 2008, 2008 15th International Conference on Systems, Signals and Image Processing.