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Hierarchical Ensemble of Global and Local Classifiers for Face Recognition

Hierarchical Ensemble of Global and Local Classifiers for Face Recognition. Yu Su, Shiguang Shan , Member, IEEE , Xilin Chen , Member, IEEE , and Wen Gao , Fellow, IEEE. I. INTRODUCTION.

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Hierarchical Ensemble of Global and Local Classifiers for Face Recognition

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  1. Hierarchical Ensemble of Global and Local Classifiers for Face Recognition Yu Su, Shiguang Shan, Member, IEEE, Xilin Chen, Member, IEEE, and Wen Gao, Fellow, IEEE

  2. I.INTRODUCTION • This paper proposes a novel face recognition method which exploits both global and local discriminative features. • Global features are extracted by 2-D discrete Fourier transform. • Local feature are extracted by Gabor wavelet transform. • The combination of global and local features plays a key role. • Ensemble is also a key contributor to improve generalizability

  3. I.INTRODUCTION • Different Roles of Global and Local Features

  4. II. EXTRACTION 2-D Discrete Fourier Transformation ( DFT ) Extraction of Global Fourier Features A 2-D image of size M byN pixels, 0 ≦u≦M - 1 and 0 ≦v≦N - 1 are frequency variables. R( u, v) and I( u, v ) is real and imaginary components. 2009/12/16 4

  5. II. EXTRACTION • Global feature extraction by 2-D DFT Some examples of inverse transform by using only the low frequency bands (about 30% of all the energy). The real and imaginary components named global Fourier feature vector (GFFV). 2009/12/16 5

  6. II. EXTRACTION Extraction of Local Gabor Features • Gabor Wavelet Transform ( GWT) Gabor wavelet consists of a planar sinusoid multiplied by a 2-D Gaussian. 2009/12/16 6

  7. II. EXTRACTION Gabor features are grouped into a number of feature vectors named local Gabor feature vector (LGFV) 2009/12/16 7

  8. II. EXTRACTION Patch Selection via Greedy Search • in this paper, we propose a patch selection methodto automatically determine the positions and sizes of the localpatches

  9. Two layers of ensemble: III.COMBINING Construction of Hierarchical Ensemble Classifier Li : Local Gabor feature vector (LGFV) CLi :Local Component Classifier (LCC) CL : Local Ensemble Classifier (LEC) CG: Global Classifier (GC) CH : Hierarchical Ensemble Classifier (HEC) 2009/12/16 9

  10. III.COMBINING Weight Learning for Component Classifiers • Firstly, the face images can be divided into two classes named intrapersonal pairs and interpersonal pairs. • Secondly, for each image pair, a similarity vectorcan be obtained. • Last step, two classes of the N–dimensionalsamples are fed into FLD to get an optimal linearprojection from N-D to 1-D. 2009/12/16 10

  11. IV. RESULT Different Roles of Global and Local Features • Gabor feature are more sensitive to the detailed local variations.

  12. IV. RESULT • The performance improvement becomes trivial when the number of LCCs exceeds 30. • The performance of LEC is much better than that of the individual LCC (especially on Experiment 4).

  13. IV. RESULT Hierarchical Ensemble Classifier

  14. Thanks

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