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A Comparative Evaluation of Average Face on Holistic and Local Face Recognition Approaches

A Comparative Evaluation of Average Face on Holistic and Local Face Recognition Approaches. Sanqiang Zhao, Xiaozheng Zhang, and Yongsheng Gao Pattern Recognition, 2008. ICPR 2008. 19th International Conference on 8-11 Dec. 2008 Page(s):1 - 4. 授課教師:萬書言副教授

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A Comparative Evaluation of Average Face on Holistic and Local Face Recognition Approaches

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  1. A Comparative Evaluation of Average Face on Holistic and Local Face Recognition Approaches Sanqiang Zhao, Xiaozheng Zhang, and Yongsheng Gao Pattern Recognition, 2008. ICPR 2008. 19th International Conference on8-11 Dec. 2008 Page(s):1 - 4 授課教師:萬書言副教授 報告者:陳奕穎 報告日期:2009/11/23

  2. Abstract Introduction Average Face Experimental settings Experimental results Conclusions References Outline

  3. Abstract • To reveal a published paper "100% Accuracy in Automatic Face Recognition" which working mechanism. • Perform the averaging process using pose-varied synthetic images generated from 3D face database and conduct a comparative study. • Two representative methods, i.e. Eigenface and Local Binary Pattern (LBP) are employed to perform the experiments.

  4. Introduction • Recently, psychological researchers from University of Glasgow proposed an “Average Face”to improve face recognition approaches. • Pose variation is confined within approximately ±30° to make all feature points visible in the image. • Averaging the 20 images of each person can increase the recognition accuracy from 54% to 100%.

  5. Average Face I • Original face images labeled with 34 feature points. • Fixed 34-point template. • Face images after morphing.

  6. Average Face II • Texture averaging. • Shape averaging.

  7. Average Face III • Average texture. • Average shape. • Average face from morphing.

  8. Eigenface Method • Eigenface Method是利用主成分分析(principal component analysis ,PCA)擷取臉部特徵,作為臉部辨識的方法。

  9. 主成分分析(Principal Component Analysis,PCA) I

  10. 主成分分析(Principal Component Analysis,PCA) II

  11. 區域性二元化圖形 (local binary patterns,LBP) I • LBP演算法是一種與灰階度無關的紋理分析演算法具有強大的辨識力。 • 擁有不依影像旋轉而改變的特性。 • LBP histogram

  12. 區域性二元化圖形 (local binary patterns,LBP) II • 在LBP演算法裡 LBP8,1是一個基本的運算。

  13. Experimental settings I • Face database • Use the USF Human ID 3D database. • Synthetic 2D images of 50 people in the database. • For each person, the facial pose is varied by incrementing the yaw angle (left-right) within ±30° range. • This yields a total of 61×50=3050 images.

  14. Experimental settings II • Face database • All the images are normalized (in scale and rotation) and cropped to 100×100 pixels based on the positions of two eyes.

  15. Experimental settings II • Evaluation protocol • In our experiments, the face images of frontal view(i.e. yaw angle is 0°) are used as the gallery set. • For the probe set, we randomly select 20 angles that are evenlydistributed within the pose range [-30°, +30°]. • Eventually we get ten groups of probe sets of face images.

  16. Experimental resultsI • Eigenface results

  17. Experimental resultsII • LBP results

  18. Experimental resultsIII • Comparative LBP results with 32 histogram bins on the set of Group 1.

  19. Experimental resultsIV • Comparative LBP results with 10x10 sized sub regions on the set of Group 1.

  20. Conclusions I • Averaging makes subtle features diluted or vanished. The two moles marked by the white boxes are indiscernible in the average face. • Experimental results show that the average face does not necessarily improve the performance of all face recognition approaches.

  21. References • [1] W. Zhao, R. Chellappa, P.J. Phillips, and A. Rosenfeld,"Face Recognition: A Literature Survey," ACM Comput-ing Surveys, 35:399-459, 2003. • [2] M. Turk and A. Pentland, "Eigenfaces for Recognition,"Journal of Cognitive Neuroscience, 3:71-86, 1991. • [3] P.N. Belhumeur, J.P. Hespanha, and D.J. Kriegman, "Ei-genfaces vs. Fisherfaces: Recognition Using Class Spe-cific Linear Projection," TPAMI, 19:711-720, 1997. • [4] L. Wiskott, J.M. Fellous, N. Krüger, and C. von der Malsburg, "Face Recognition by Elastic Bunch Graph Matching," TPAMI, 19:775-779, 1997. • [5] T. Ahonen, A. Hadid, and M. Pietikäinen, "Face Descrip-tion with Local Binary Patterns: Application to Face Recognition," TPAMI, 28:2037-2041, 2006. • [6] P.J. Phillips, W.T. Scruggs, A.J. O'Toole, P.J. Flynn,K.W. Bowyer, C.L. Schott, and M. Sharpe, "FRVT 2006 and ICE 2006 Large-Scale Results," NISTIR 7408, 2007. • [7] R. Jenkins and A.M. Burton, "100% Accuracy in Auto- matic Face Recognition," Science, 319:435-435, 2008. • [7s]R. Jenkins and A.M. Burton, "Supporting Online Mate-rial for '100% Accuracy in Automatic Face Recognition'," • Science, 319, 2008. • [8] S. Zhao and Y. Gao, "Automated Face Pose Estimation Using Elastic Energy Models," Proceedings of ICPR,4:618-621, 2006. • [9] V. Blanz and T. Vetter, "A Morphable Model for the Synthesis of 3D Faces," SIGGRAPH'99, 187-194, 1999.

  22. Thank You !

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