Invariant Recognition of Face in Color Images with Texture Features
Abstract
In recent years, face recognition has gained much
attention in the midst of the researchers because it is one among the challenging task in image processing which is widely used in many real time applications such as medical imaging, industrial manufacturing and security systems. Many algorithms have been applied to improve the accuracy in recognition of the face. In this paper the algorithm is developed and implemented using statistical
features of the texture properties in conjunction with skin tone
regions to recognize the face. The face is detected with skin tone regions and texture features are calculated automatically for the same.In addition to the skin tone regions the texture properties are applied in the extraction of features could be definitely strengthen the system to recognize the face. The Indian face Database has been used for the
frontal faces with different expressions and the proposed method is simple to achieve high recognition rates and low false positives.
Keywords
Full Text:
PDFReferences
Dr.H.B.Kekre,Sudeep D. Thepade, AkshayMaloo, ―Face Recognition
using Texture Features Extracted form Haarlet Pyramid‖ , International
Journal of Computer Applications (0975 – 8887)Volume 12– No.5,
December 2010
‖, Iyad Aldasouqi, and Mahmoud Hassan ―Smart Human Face Detection
System, International Journal Of Computers Issue 2, Volume 5, 2011
Sanjay Kr. Singh, D. S. Chauhan,, Mayank Vatsa, Richa Singh,Tamkang
―A Robust Skin Color Based Face Detection Algorithm‖ Journal of
Science and Engineering, Vol. 6, No. 4, pp. 227-234 (2003) 227
A. A. Zaidan1, H. Abdul Karim1, N. N. Ahmad, Gazi Mahabubul Alam
and B. B. Zaidan1, ―A new hybrid module for skin detector using fuzzy
inference system structure and explicit rules‖, International Journal of
the Physical Sciences Vol. 5(13), pp. 2084-2097, 18 October, 2010
M.C. Padma et al., ―Entropy Based Texture Features Useful for
Automatic Script Identification‖, (IJCSE) International Journal on
Computer Science and Engineering,Vol. 02, No. 02, 2010, 115-120
A. Cord, F. Bach , D. Jeulin,‖Texture classification by statistical
learning from morphological image processing: application to metallic
surfaces‖,Journal of Microscopy, Vol. 239, Pt 2 2010, pp. 159–166
Mona Sharma ,Markos Markou,Sameer Singh ,‖Evaluation Of Texture
Methods For Image Analysis‖,Pattern Recognition Letters, Evaluation of
texture measures,May,2010.
Zhenhua Guo, Lei Zhang, Member, IEEE, and David Zhang, ―A
Completed Modeling of Local Binary Pattern Operator for Texture
Classification‖, Fellow, IEEE, IEEE Transactions on Image Processing ,
Volume 19 Issue 6, June 2010
C. H. Chen, L. F. Pau, P. S. P. Wang (eds.), ―Texture Analysis Mihran
Tuceryan, The Handbook of Pattern Recognition and Computer Vision‖
(2nd Edition), pp. 207-248, World Scientific Publishing Co., 1998.)
Vamsi Krishna Madasu Prasad Yarlagadda, ―An in depth comparison of
four texture segmentation methods‖, Digital Image Computing
Techniques and Applications 0-7695-30672/07 $25.00 © 2007 IEEE
DOI 10.1109/DICTA.2007.83
Golam Sorwar, Ajith Abraham, ―Dct Based Texture Classification Using
A Soft Computing Approach‖, Malaysian Journal of Computer Science,
Vol. 17 No. 1, June 2004, pp. 13-23
M.Seetha, I.V.Muralikrishna, Member, Ieee B.L. Deekshatulu, Life
Fellow, IEEE, B.L.Malleswari, Nagaratna, P.Hegde, ―Artificial Neural
Networks And Other Methods Of Image Classification Journal of
Theoretical and Applied Information Technology, .(1039-1053)© 2005 -
JATIT. All rights reserved
Hong-Choon Ong, Hee-Kooi Khoo ―Improved Image Texture
Classification Using Grey Level,Co-occurrence Probabilities with
Support Vector Machines Post-Processing‖, European Journal of
Scientific Research ISSN 1450-216X Vol.36 No.1 (2009), pp.56-64
Mihran Tuceryan, ―Moment Based Texture Segmentation‖, Appeared in
Pattern Recognition Letters, vol. 15, pp. 659-668, July 1994.
Zhenhua Guo,LeiZhang,DavidZhang ―Rotation in variant texture
classification using LBPvariance(LBPV)with global matching‖, ,Pattern
Recognition 43 (2010) 706–719
Xiaoyang Tan ,Triggs, B. ―Enhanced Local Texture Feature Sets For
Face Recognition Under Difficult Lighting Conditions‖, ,Image
Processing, IEEE Transactions on June 2010, Volume: 19, Issue: 6 ,On
Page(s): 1635 – 1650
G. N. Srinivasan, and Shobha G., ―Statistical Texture Analysis‖,
Proceedings Of World Academy Of Science, Engineering And
Technology Volume 36 December 2008 ISSN 2070-3740 Pwaset
Volume.
R. Singh, M. Vatsa and A. Noore ―Textural feature based face
recognition for single training images, Electronics Letters 26th May
Vol. 41 No. 11
Refbacks
- There are currently no refbacks.
This work is licensed under a Creative Commons Attribution 3.0 License.