A discriminative feature space for detecting and recognizing faces

We introduce a novel discriminative feature space which is efficient not only for face detection but also for recognition. The face representation is based on local binary patterns (LBP) and consists of encoding both local and global facial characteristics into a compact feature histogram. The proposed representation is invariant with respect to monotonic gray scale transformations and can be derived in a single scan through the image. Considering the derived feature space, a second-degree polynomial kernel SVM classifier was trained to detect frontal faces in gray scale images. Experimental results using several complex images show that the proposed approach performs favorably compared to the state-of-the-art methods. Additionally, experiments with detecting and recognizing low-resolution faces from video sequences were carried out, demonstrating that the same facial representation can be efficiently used for both detection and recognition.

[1]  Ivan I. Mueller,et al.  Reference coordinate systems and frames: Concepts and realization , 1985 .

[3]  B. A. Archinal Combination of Data from Different Space Geodetic Systems for the Determination of Earth Rotation Parameters , 1988 .

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

[5]  Penio S. Penev,et al.  Local feature analysis: A general statistical theory for object representation , 1996 .

[6]  Per Enge,et al.  Surveying with the Global Positioning System , 1996 .

[7]  Norbert Krüger,et al.  Face Recognition by Elastic Bunch Graph Matching , 1997, IEEE Trans. Pattern Anal. Mach. Intell..

[8]  Federico Girosi,et al.  Training support vector machines: an application to face detection , 1997, Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[9]  K. Etemad,et al.  Discriminant analysis for recognition of human face images , 1997 .

[10]  Tomaso A. Poggio,et al.  Example-Based Learning for View-Based Human Face Detection , 1998, IEEE Trans. Pattern Anal. Mach. Intell..

[11]  Vladimir Vapnik,et al.  Statistical learning theory , 1998 .

[12]  Takeo Kanade,et al.  Neural Network-Based Face Detection , 1998, IEEE Trans. Pattern Anal. Mach. Intell..

[13]  Takeo Kanade,et al.  Probabilistic modeling of local appearance and spatial relationships for object recognition , 1998, Proceedings. 1998 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (Cat. No.98CB36231).

[14]  Narendra Ahuja,et al.  A SNoW-Based Face Detector , 1999, NIPS.

[15]  Massimiliano Pontil,et al.  Face Detection in Still Gray Images , 2000 .

[16]  Hyeonjoon Moon,et al.  The FERET Evaluation Methodology for Face-Recognition Algorithms , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[17]  Ralph Gross,et al.  The CMU Motion of Body (MoBo) Database , 2001 .

[18]  Paul A. Viola,et al.  Rapid object detection using a boosted cascade of simple features , 2001, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001.

[19]  Michael Elad,et al.  Rejection based classifier for face detection , 2002, Pattern Recognit. Lett..

[20]  Narendra Ahuja,et al.  Detecting Faces in Images: A Survey , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[21]  Matti Pietikäinen,et al.  Multiresolution Gray-Scale and Rotation Invariant Texture Classification with Local Binary Patterns , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[22]  Chengjun Liu,et al.  A Bayesian Discriminating Features Method for Face Detection , 2003, IEEE Trans. Pattern Anal. Mach. Intell..

[23]  Matti Pietikäinen,et al.  Face Recognition with Local Binary Patterns , 2004, ECCV.

[24]  Matti Pietikäinen,et al.  Selecting models from videos for appearance-based face recognition , 2004, ICPR 2004.