Review on Curvelet Transform and Its Applications
DOI:
https://doi.org/10.51983/ajes-2013.2.1.1857Keywords:
Image processing, Curve let transform, Wavelet TransformAbstract
The Curve let Transform gives better performance in terms of PSNR. Face recognition is very important for many applications such as: video surveillance, criminal investigations and forensic applications, secure electronic banking, mobile phones, credit cards, secure access to buildings. The curvelet transform is a multi scale directional trans-form, which allows an almost optimal non adaptive sparse representation of objects with edges. Curvelet have also proven useful in diverse fields beyond the traditional image processing application
References
E. Gomathi and K. Baskaran “Face Recognition Fusion Algorithm Based on Wavelet” European Journal of Scientific Research ISSN 1450-216 X , Vol.74, No.3, pp. 450-455, 2012.
E. Candès and L. Demanet, “The curvelet representation of wave propagators is optimally sparse,” Commun. Pure Appl.Math., Vol. 58, No. 11, pp. 1472–1528, 2005.
B. S. Manjunath et al, Color and Texture Descriptors, IEEE Transactions CSVT, Vol.11, No.6, pp.703-715, 2001.
Akash Tayal and Dhruv Arya” Curvelets and their Future Applications” Proceedings of the National Conference; INDIA Com-2011 Computing For Nation Development, March 10-11, 2011
J. Ma, M. Fenn, Combined complex ridgelet shrinkage and total variation minimization, SIAM J. Sci. Comput., Vol.28, No.3, pp.984- 1000, 2006.
F. Andersson, M. de Hoop, H. Smith, G. Uhlmann, “A multi-scale approach to hyperbolic evolution equations with limited smoothness”, Comm. Partial Differential Equations, Vol.33, pp.988-1017, 2008.
E. Candμes, F. Guo, “New multiscale transforms, minimum total variation synthesis: applications to edge-preserving image reconstruction”, Signal Process., Vol.82, No.11, pp. 1519-1543, 2002.
J. Starck, E. Candμes, D. Donoho, “The curvelet transform for image denoising”, IEEE Trans.Image Process, Vol.11, pp. 670-684, 2002.
A. Majumdar, “Bangla Basic Character Recognition using Digital Curvelet Transform”, Journal of Pattern Recognition Research, Vol. 2, No.1, pp.17-26, 2007.
W. Zhao, R. Chellappa, A. Rosenfeld, P.J. Phillips, “Face Recognition: A Literature Survey’, ACM Computing Surveys, pp.399-458, 2003.
J. Starck, F. Murtagh, E. Candμes, F. Murtagh, D. Donoho, “Gray and color image contrast enhancement by the curvelet transform”, IEEE Trans. Image Process, Vol.12, No.6, pp.706-717, 2003.
E. Candμes, D. Donoho, “New tight frames of curvelets and optimal representations of objects with piecewise singularities, Comm”. Pure Appl. Math., Vol.57, pp.219-266, 2004.
Hafiz Imtiaz and Shaikh Anowarul Fattah “A Curvelet Domain Face Recognition Scheme Based on Local Dominant Feature Extraction” International Scholarly Research Network ISRN Signal Processing Volume 2012
Tansu Alpcan , Sonja Buchegger , “ Security Games for Vehicular Networks “IEEE Transactions on Mobile computing”, Vol.10, No.2, February 2011.
Nilima D. Maske, Wani V. Patil “Comparison of Image Compression using Wavelet for Curvelet Transform & Transmission over Wireless Channel” International Journal of Scientific and Research Publications, Vol.2,Issue 5, ISSN 2250-3153 , May 2012
Mohammad Saleh Miri and Ali Mahloojifar, “Retinal Image Analysis Using Curvelet Transform and Multistructure Elements Morphology by Reconstruction” IEEE Signal Processing Magazine, pp.1183- 1192, Vol. 58, No. 5 MAY 2011. [17] Jianwei Ma and Gerlind Plonka, “The Curvelet Transform”, IEEE Signal Processing Magazine, pp.118-133, MARCH 2010.
Truong T. Nguyen and Hervé Chauris, “Uniform Discrete Curvelet Transform” IEEE Signal Processing Magazine, Vol. 58, No. 7, pp.3618-3634, JULY 2010.
J. Ma, G. Plonka, Combined curvelet shrinkage and nonlinear anisotropic diffusion, IEEE Trans. Image Process., Vol.16 No.9, pp. 2198-2206, 2007.
G. Plonka, J. Ma, Nonlinear regularized reaction-diffusion filters for denoising of images with textures, IEEE Trans. Image Process., Vol.17, No.8, pp.1283-1294, 2008.
C. Villegas-Quezada and J. Climent, “Holistic face recognition using multivariate approximation, genetic algorithms and adaboost classifier: preliminary results,” World Academy of Science, Engineering and Technology, Vol. 44, pp. 802–806, 2008.
L. L. Shen and L. Bai, “Gabor feature based face recognition usingkernal methods,” in Proceedings of the 6th IEEE International Conference on Automatic Face and Gesture Recognition (FGR ’04), Vol. 6, pp. 386–389, May 2004. [23] M. Zhou and H. Wei, “Face verification using gabor wavelets and AdaBoost,” in Proceedings of the 18th International Conference on Pattern Recognition (ICPR ’06), Vol. 1, pp. 404–407, August 2006.
X. Tan, S. Chen, Z. H. Zhou, and F. Zhang, “Face recognition from a single image per person: a survey,” Pattern Recognition, Vol. 39, No. 9, pp. 1725–1745, 2006.
Y. Gao and M. K. H. Leung, “Face recognition using line edge map,” IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 24, No. 6, pp. 764–779, 2002.
C. BenAbdelkader and P. Griffin, “A local region-based approach to gender classification from face images,” in Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, Vol. 3, pp. 52–57, 2005.
T. Ahonen, A. Hadid, and M. Pietikainen, “Face description with local binary patterns: application to face recognition,” The IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 28, pp. 2037–2041, 2006.
R. Gottumukkal and V. K. Asari, “An improved face recognition technique based on modular PCA approach,” Pattern Recognition Letters, Vol. 25, No. 4, pp. 429-436, 2004.
C. C. Liu and D. Q. Dai, “Face recognition using dual tree complex wavelet features,” IEEE Transactions on Image Processing, Vol. 18, No. 11, pp. 2593–2599, 2009.
H. Imtiaz and S. A. Fattah, “A face recognition scheme using wavelet-based local features,” in Proceedings of the IEEE Symposium on Computers and Informatics (ISCI ’11), Vol. 2, pp.313-316, 2011.
S. Alirezaee, H. Aghaeinia, K. Faez, and F. Askari, “An efficient algorithm for face localization,” International Journal of Information Technology, Vol. 12, pp. 30-36, 2006.
E. Loutas, I. Pitas, and C. Nikou, “Probabilistic Multiple Face Detection and Tracking Using Entropy Measures,” IEEE Transactions on Circuits and Systems for Video Technology, Vol.14, No. 1, pp. 128- 135, 2004.
S. C. Dakin and R. J. Watt, “Biological “bar codes” in human faces,” Journal of Vision, Vol. 9, No. 4, article 2, 2009. [34] X. Zhang and Y. Gao, “Face recognition across pose: a review,” Pattern Recognition, Vol. 42, No. 11, pp. 2876–2896, 2009.
E. Cand`es, L. Demanet, D. Donoho, and L. Ying, “Fast discrete curvelet transforms,” Multiscale Modeling and Simulation, Vol.5, No. 3, pp. 861–899, 2006.
F. M. de, S. Matos, L. V. Batista, and J. V. D. Poel, “Face recognition using DCT coefficients selection,” in Proceedings of the 23rd Annual ACM Symposium on Applied Computing (SAC ’08), pp. 1753-1757, March 2008.
X. Y. Jing and D. Zhang, “A face and palmprint recognition approach based on discriminant DCT feature extraction,” IEEE Transactions on Systems, Man, and Cybernetics, Part Bvol. 34, No. 6, pp. 2405- 2415, 2004
J. Starck et al., “Gray and Color Image Contrast Enhancement by the Curvelet Transform,” IEEE Trans. Image Processing, Vol. 12, No. 6, pp. 706-717, 2003.
M. Choi et al., “Fusion of Multispectral and Panchromatic Satellite Images Using the Curvelet Transform,” IEEE Geoscience Remote Sensing Letters, Vol. 2, No. 2, pp. 136-140, 2005.
S. Dekel and A. Sherman, “Curvelets: A Low-Level Framework for Computer Vision,” preprint, GE Healthcare, 2008.
G. Plonka and J. Ma, “Nonlinear Regularized Reaction-Diffusion Filters for Denoising of Images with Textures,” IEEE Trans. Image Processing, Vol. 17, No.8, pp.1283–1294, 2008.
G. Hennenfent and F. Herrmann, “Seismic Denoising with Nonuniformly Sampled Curvelets,” Computing in Science &Eng., Vol.8, No.3, pp.16-25, 2006.
R. Neelamani et al., “Coherent and Random Noise Attenuation Using the Curvelet Transform,” The Leading Edge, Vol. 27, No.2, pp.240- 248, 2008.
H. Douma and M. de Hoop, “Leading-Order Seismic Imaging Using Curvelets,” Geophysics, Vol. 72, No. 6, pp. S231–S248, 2007.
H. Chauris and T. Nguyen, “Seismic Demigration / Migration in the Curvelet Domain,” Geophysics, Vol.73, No.2, pp. S35–S46, 2008.
Y. Lu and M. N. Do, “Multidimensional directional filter banks and surfacelets,” IEEE Trans. Image Process., Vol.16, No.4, pp. 918– 931, 2007.
D. Thomson, G. Hennenfent, H. Modzelewski, and F. Herrmann, “A parallel windowed fast discrete curvelet transform applied to seismic processing,” in Proc. 73th SEG Ann. Meet. Expo. Expand. Abstr., 2006.
L. Demanet and L. Ying, “Curvelets and wave atoms for mirror-extended images,” in Proc. SPIE Conf. Wavelet Appl. Signal Image Process. XII, Aug 2007.
A. Vo and S. Oraintara, “A study of relative phase in complex wavelet domain: Property, statistics and applications in texture image retrieval and segmentation,” Signal Process.: Image Commun., Vol. 25, pp.28- 46, 2010. [50] Y. Rakvongthai and S. Oraintara, “Statistics and dependency analysis of the uniform discrete curvelet coefficients and hidden markov tree modeling,” in Proc. IEEE Int. Symp. Circuits Syst. (ISCAS’09), Taipei, pp. 525-528, May 2009.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2013 The Research Publication
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.