C. Tisse, Contribution à la vérification biométrique de personnes par reconnaissance de l'iris. Thèse de doctorat de l'université de Montpellier II, 2003.

M. Chassé, La biométrie au Québec : Les enjeux, pp.31-37, 2002.

S. Prabhakar, S. Pankanti, and A. K. Jain, Biometric recognition : Security and privacy concerns, IEEE Security and Privacy, vol.1, pp.33-42, 2003.

C. Guerrier and L. A. Cornelie, Les aspects juridiques de la biométrie. Document analyse commission accès à informations, 2003.

H. Harb and L. Chen, Voice-based gender identification in multimedia applications, Journal of Intelligent Information Systems (JIIS), vol.24, issue.2-3, pp.179-198, 2005.
URL : https://hal.archives-ouvertes.fr/hal-01587130

D. Muramatsu and T. Matsumoto, Effectiveness of pen pressure, azimuth, and altitude features for online signature verification, International Conference on Biometrics (ICB'07), vol.4642, pp.503-512, 2007.

D. Gafurov, E. Snekkenes, and T. E. Buvarp, Robustness of biometric gait authentication against impersonation attack, On the Move to Meaningful Internet Systems : OTM 2006 Workshops, vol.4278, pp.479-488, 2006.

S. Hocquet, J. Y. Ramel, and H. Cardot, User classification for keystroke dynamics authentication, International Conference on Biometrics (ICB), pp.531-539, 2007.
URL : https://hal.archives-ouvertes.fr/hal-01026346

Z. Korotkaya, Biometric person authentication : Odor, 2003.

M. Hashiyada, Development of biometric DNA for authentication security, Tohoku Journal of Experimental Medicine, pp.109-117, 2004.

K. Phua, J. Chen, T. H. Dat, and L. Shue, Heart sound as a biometric, Pattern Recognition, vol.41, pp.906-919, 2008.

D. Maio and D. Maltoni, gray-scale minutiae detection in fingerprints, IEEE Trans PAMI, vol.19, issue.1, pp.27-40, 1997.

W. Zhao, R. Chellappa, A. Rosenfeld, and P. Phillips, Face recognition : a literature survey, 2000.

R. Zunkel, Hand geometry based verification, biometrics : personal identification in networked society, pp.87-101, 1999.

P. Ladoux, C. Rosenberger, and B. Dorizzi, Palm vein verification system based on sift matching, the 3rd IAPR/IEEE International Conference on Biometrics (ICB'09), pp.1290-1298, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00472805

. Jg and . Daugman, High confidence visual recognition of persons by a test of statistical independence, IEEE Trans PAMI, vol.15, issue.11, pp.1148-1161, 1996.

H. Farzin, H. Moghaddam, and M. Shahrammoin, A Novel Retinal Identification System, EURASIP Journal on Advances in Signal Processing, 2008.

, IBM. Biometrics Face Recognition, 2013.

. Jl and . Wayman, Technical testing and evaluation of biometric identification devices 1999

A. K. Jain and R. Bolle, Biometrics : Personal Identification in Networked Society, 2002.

P. Grother and E. Tabassi, Performance of biometric quality measures, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.29, pp.531-543, 2007.

P. N. Belhumeur,

A. Jain, S. Pankani, S. Prabhakar, L. Hong, A. Ross et al.,

R. L. Hau, Face detection and modelling, 2002.

R. Smith, The Biometric Dilemma. Secure computing, diapositives 33-34

F. Massicotte, S. Biométrie, and . Libérale, Mémoire présenté comme exigence partielle de la maitrise en science politique, 2007.

S. Carleton, Papers Administrative History. M.E.Grenander Department of Special Collections and Archives

A. P. Condurache, J. Kotzerke, and A. Mertins, Robust retina-based person authentication using the sparse classifier, Proc. of Europeean Signal Processing Conference (EUSIPCO), pp.27-31, 2012.

A. Osareh, Automated identification of diabetic retinal exudates and the optic disc, 2004.

. Sémiologie-oculaire, Collège des Ophtalmologistes Universitaires de France (COUF), 2013.

A. Dr, Kahatane. ophtalmologiste, La rétinopathie diabétique, 2016.

G. Coscas and P. Dhermy, Occlusions veineuses rétiniennes. Société Française d'Ophtalmologie Masson, 1978.

M. C. Dr, G. Lucien-guerrier-et-dr, and . Roney, Diabète et oeil. Milot, 13 Janvier, 2011.

J. J. Staal, M. D. Abramoff, M. Niemeijer, M. A. Viergever, and B. Van-ginneken, Ridge based vessel segmentation in color images of the retina, IEEE Transactions on Medical Imaging, vol.23, pp.501-509, 2004.

M. D. Abramoff and M. S. , Suttorp-Schulten. Web-based screening for diabetic retinopathy in a primary care population. the EyeCheck project, Telemedicine and e-Health, vol.11, issue.6, pp.668-674, 2005.

, Diabetic retinopathy database and evaluation protocol (DIARETDB1)

. Varia and . Varpa, Retinal Images for Authentification

A. H. Rubaiyat, S. Aich, T. T. Toma, and A. R. , Malik andRafat-Al-Islam Fast Normalized Cross Correlation based Retinal Recognition, 17th International Conference on Computer and Information Technology (ICCIT), 2014.

A. P. Condurache, J. Kotzerke, and A. Mertins, Robust retina-based person authentication using the sparse classifier, Proc. of Europeean Signal Processing Conference (EUSIPCO), pp.27-31, 2012.

C. Roberts, Biometric technologies-palm and hand, 2006.

X. Meng, Y. Yin, G. Yang, and X. Xi, Retinal Identification Based on an Improved Circular Gabor Filter and Scale Invariant Feature Transform, Sensors (14248220), vol.13, p.9248, 2013.

T. Chihaoui, R. Kachouri, H. Jlassi, M. Akil, and K. Hamrouni, Human identification system based on the detection of optical Disc Ring in retinal images. Image Processing Theory, Tools and Applications (IPTA), 2015 International Conference on, pp.263-267, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01309990

H. Oinonen, H. Forsvik, P. Ruusuvuori, O. Yliharja, V. Voipio et al., verification based on vessel matching from fundus images. ICIP, pp.4089-4092, 2010.

A. Dehghani, Z. Ghassabi, H. A. Moghddam, and M. S. Moin, Human recognition based on retinal images and using new similarity function, EURASIP Journal on Image and Video Processing, 2013.

M. Sabaghi, S. R. Hadianamrei, M. Fattahi, M. R. Kouchaki, and A. Zahedi, Retinal Identification System Based on the Combination of Fourier and Wavelet Transform, Journal of Signal and Information Processing, pp.35-38, 2012.

K. Chauhan and R. Gulati, Pre-processing of Retinal Image and Image segmentation using OTSU Histogram, International Journal of Advanced Information Science and Technology (IJAIST), vol.29, p.29, 2014.

J. B. Zimmerman, S. M. Pizer, E. V. Staab, J. R. Perry, W. Mc-cartney et al., An Evaluation of the Effectiveness of Adaptive Histogram Equalization for Contrast Enhancement, IEEE Trans. Med. Imaging, vol.7, issue.4, pp.304-312, 1988.

S. M. Pizer, R. E. Johnston, J. P. Ericksen, B. C. Yankaskas, and K. E. Muller, Contrast-limited adaptive histogram equalization : Speed and effectiveness

D. M. Gomes, Contrast enhancement in digital imaging using histogram equalization. 15th ICPR, 2000.
URL : https://hal.archives-ouvertes.fr/tel-00470545

T. Mapayi, S. Viriri, and J. R. Tapamo, Comparative Study of Retinal Vessel Segmentation Based on Global Thresholding Techniques. Computational and Mathematical Methods in Medicine, Article ID, vol.895267, 2015.

W. Setiawan, T. R. Mengko, O. S. Santoso, and A. B. Suksmono, Color retinal image enhancement using CLAHE, International Conference on ICT for Smart Society, pp.1-3, 2013.

C. Y. Yang, H. B. Shang, and C. G. Jia, Adaptive unsharp masking method based on region segmentation, Opt. Precision Eng, vol.11, issue.2, pp.188-192, 2003.

S. Joes, D. A. Michael, and N. Meindert, Ridge-based vessel segmentation in colour images of the retina, IEEE Trans. Med. Imaging, vol.24, issue.4, pp.501-509, 2004.

A. Hoover, V. Kouznetsova, and M. Goldbaum, Locating blood vessels in retinal images by piecewise threshold probing of a matched filter response, IEEE Trans. Med. Imaging, vol.19, issue.3, pp.203-210, 2000.

T. S. Lin, M. H. Du, and J. T. Xu, The Preprocessing of subtraction and the enhancement for biomedical image of retinal blood vessels, J. Biomed. Eng, vol.20, issue.1, pp.56-59, 2003.

H. I. Ashiba, K. H. Awadalla, S. M. El-halfawy, F. E. , and -. El-samie, Homomorphic enhancement of infrared images using the additive wavelet transform, Progress In Electromagnetics Research C, vol.1, pp.123-130, 2008.

E. J. Candes and D. L. Donoho, Curvelets a surprisingly effective non-adaptive representation for objects with edges, 1999.

M. N. Do and M. Vetterli, The Contourlet transform : an efficient directional multiresolution image representation, IEEE Trans. Image Process, vol.14, issue.12, pp.2091-2106, 2005.

M. Ortega, C. Marino, M. G. Penedo, M. Blanco, and F. Gonzalez, Biometric Authentication Using Digital Retinal Images, Proceedings of the 5th WSEAS International Conference on Applied Computer Science, pp.422-427, 2006.

M. Al-rawi, M. Qutaishat, and M. Arrar, Journal of Computers in Biology and Medicine, vol.37, pp.262-267, 2007.

R. Nekovei and S. Ying, Back-propagation network and its configuration for blood vessel detection in angiograms, IEEE Transactions on Neural networks, pp.64-72, 1995.

H. Talbot and B. Appleton, Efficient complete and incomplete path openings and closings, Image and Vision Computing, vol.25, pp.416-425, 2007.

A. Mendonça and A. Campilho, Segmentation of retinal blood vessels by combining the detection of centerlines and morphological reconstruction, IEEE Trans. Med. Imag, vol.25, pp.1200-1213, 2006.

L. Espona, M. J. Carreira, M. G. Penedo, and M. Ortega, Retinal Vessel Tree Segmentation using a Deformable Contour Model, pp.978-979, 2008.

M. Martinez-perez, A. Hughes, S. Thom, A. Bharath, and K. Parker, Segmentation of blood vessels from red-free and fluorescein retinal images, Med. Imag. Anal, vol.11, pp.47-61, 2007.

L. Wang, A. Bhalerao, and R. Wilson, Analysis of Retinal Vasculature using a Multi-resolution Hermite Model, IEEE Transactions on Medical Imaging, vol.26, pp.137-152, 2007.

A. F. Frangi, R. F. Frangi, W. J. Niessen, K. Vincken, and M. A. Viergever, Multiscale vessel enhancement filtering. in Image Computing and Computer-Assisted Interventation, pp.130-137, 1998.

Y. Zhang, W. Hsu-mong, and L. Lee, Segmentation of Retinal Vessels Using Nonlinear Projections, IEEE International Conference on Image Processing, vol.5, p.541544, 2007.

E. Ricci and R. Perfetti, Retinal Blood Vessel Segmentation Using Line Operators and Support Vector Classification, IEEE Transactions on Medical imaging, vol.26, pp.1357-1365, 2007.

M. M. Fraz, A. R. Rudnicka, C. G. Owen, and S. A. Barman, Delineation of blood vessels in pediatric retinal images using decision trees-based ensemble classification, International journal of computer assisted radiology and surgery, pp.1-17, 2013.

Y. Yin, M. Adel, and S. Bourennane, Automatic Segmentation and Measurement of Vasculature in Retinal Fundus Images Using Probabilistic Formulation. , Computational and mathematical methods in medicine, Computational and Mathematical Methods in Medicine, p.16, 2013.

C. Alonso-montes, D. L. Vilarino, and M. G. Penedo, CNN-based Automatic Retinal Vascular Tree Extraction, pp.61-64, 2010.

D. Marin, A. Aquino, M. E. Gegndez-arias, and J. Bravo, A new supervised method for blood vessel segmentation in retinal images by using gray-level and moment invariantsbased features, IEEE Transactions onl, vol.30, issue.1, pp.146-158, 2011.

F. Zana and J. Klein, Segmentation of vessel-like patterns using mathematical morphology and curvature evaluation, IEEE Trans. Image Processing, vol.10, pp.1010-1019, 2001.

C. Thitiporn and G. Fan, An efficient blood vessel detection algorithm for retinal images using local entropy thresholding. School of electrical and computer engineering Oklahoma state university, 2000.

A. Hoover, V. Kouznetsova, and M. Goldbaum, Locating blood vessels in retinal images by piecewise threshold probing of a matched filter response, IEEE Transactions on medical imaging, vol.19, issue.3, 2000.

B. Dashtbozorg, A. Mendonca, and A. Campilho, An automatic graph-based approach for artery/vein classification in retinal images, vol.23, pp.1073-83, 2014.

, Sumit Ravindra Sawant Ashwin Pandey and Jayashree Chaudhari. Retina and Face Recognition Removing Facial Distortion Using PAC Algorithm, International Journal of Innovative Research in Computer and Communication Engineering, vol.4, 2016.

Z. Waheed, A. Waheed, and U. Akram, A Robust Non-Vascular Retina Recognition System using Structural Features of Retinal Image, International Bhurban Conference on Applied Sciences and Technology, 2016.

S. N. Kakarwal and R. R. Deshmukh, Analysis of Retina Recognition by Correlation and Covariance Matrix, International Conference Emerging Trends in Engineering and Technology, 2010.

H. Bay, T. Tuytelaars, and L. Van-gool, Surf : Speeded up robust features, Computer Vision and Image Understanding, vol.110, pp.346-359, 2008.
DOI : 10.1007/11744023_32

D. G. Lowe, Object recognition from local scale-invariant features, International Conference on Computer Vision, pp.1150-1157, 1999.
DOI : 10.1109/iccv.1999.790410

URL : http://www-inst.cs.berkeley.edu/~cs294-6/fa06/papers/LoweD_Object recognition from local scale-invariant features.pdf

C. Harris and M. Stephens, A combined corner and edge detector, Proceedings of the Alvey Vision Conference, pp.147-151, 1988.
DOI : 10.5244/c.2.23

URL : http://www.bmva.org/bmvc/1988/avc-88-023.pdf

M. O. Berger and R. Mohr, Towards Autonomy in Active Contour Models, Proc. ICPR'90, pp.847-851, 1990.
DOI : 10.1109/icpr.1990.118228

URL : https://hal.archives-ouvertes.fr/inria-00548463

K. Mikolajczyk and C. Schmid, Indexing based on scale invariant interest points, ICCV, vol.1, pp.525-531, 2001.
DOI : 10.1109/iccv.2001.937561

URL : https://hal.archives-ouvertes.fr/inria-00548276

S. Moura, J. Neves, and J. Ramos, Automated retina identification based on multiscale elastic registration, Computers in Biology and Medicine, vol.79, 2016.

S. A. Tuama and L. E. George, An Efficient Method for Automatic Human Recognition Based on Retinal Vascular Analysis, Research Journal of Applied Sciences, Engineering and Technology, vol.12, issue.1, pp.122-128, 2016.

L. Wang, Y. Zhang, and J. Feng, On the Euclidean distance of images, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.27, issue.8, pp.1334-1339, 2005.

P. E. Black, Manhattan distance, Dictionary of Algorithms and Data Structures, 2006.

D. Arthur and B. , Manthey and H. Roeglin. k-means has polynomial smoothed complexity, Proceedings of the 50th Symposium on Foundations of Computer Science, 2009.

T. Caelli and T. S. Caetano, Graphical models for graph matching : Approximate models and optimal algorithms, Pattern Recognition Letters, vol.26, pp.339-346, 2005.
DOI : 10.1016/j.patrec.2004.10.022

F. Sadikoglu and S. Uzelaltinbulat, Biometric retina identification based on neural network, International Conference on Application of Fuzzy Systems and Soft Computing, 2016.
DOI : 10.1016/j.procs.2016.09.365

URL : https://doi.org/10.1016/j.procs.2016.09.365

M. Shahnazi, M. Pahlevanzadeh, and M. Vafadoost, Wavelet Based Retinal Recognition, 9th International Symposium on Signal Processing and Its Applications (ISSPA), pp.1-4, 2007.
DOI : 10.1109/isspa.2007.4555369

M. Bergounioux, Quelques méthodes de filtrage en Traitement d'Image. Cours donné dans le cadre d'une école CIMPA -en attente de publication dans les actes, 2010.

C. , Ondelettes pour la détection de caractéristiques en traitement d'images. Application à la détection de région d

B. Fulkerson, A. Vedaldi, and S. Soatto, Class segmentation and object localization with superpixel neighborhoods, IEEE 12th International Conference on, pp.670-677, 2009.

, Algorithme de détection de la macula sur les images de la bande verte de la rétine à l'aide de la technique des ondelettes pyramidales, CRIM -Documentation/Communications

A. Osareh, Automated identification of diabetic retinal exudates and the optic disc, 2004.

K. Zuiderveld, Contrast Limited Adaptive Histogram Equalization, 1994.

S. M. Pizer, R. E. Johnston, J. P. Ericksen, B. C. Yankaskas, and K. E. Muller, Contrast limited adaptive histogram equalization : Speed and effectiveness, The First Conference on Visualization in Biomedical Computing, p.337345, 1990.

N. Otsu, A threshold selection methods from grey-level histograms, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.9, pp.62-66, 1979.

G. J. Grevera, Distance transform algorithms and their implementation and evaluation, Deformable Models, pp.33-60, 2007.
DOI : 10.1007/978-0-387-68413-0_2

J. Borovicka, Circle Detection Using Hough Transforms Documentation, COMS30121 -Image Processing and Computer Vision, 2003.

J. J. Staal, M. D. Abramoff, M. Niemeijer, M. A. Viergever, and B. Van-ginneken, Ridge based vessel segmentation in color images of the retina, IEEE Transactions on Medical Imaging, vol.23, pp.501-509, 2004.

H. Li and . Chutatape, Automatic location of optic disc in retinal images, Proceedings of the International Conference on Image Processing (ICIP), vol.2, pp.837-840, 2001.

. Rm-rangayyan, . Zhu, A. L. Ayres, and . Ells, Detection of the optic nerve head in fundus images of the retina with Gabor filters and phase portrait analysis, J. Digit. Imag, vol.23, issue.4, pp.438-453, 2010.

A. Dehghani, H. A. Moghaddam, and M. S. Moin, Optic disc localization in retinal images using Histogram matching, EURASIP Journal on Image and Video Processing, 2012.

C. Harris and M. Stephens, A combined corner and edge detector, Proceedings of the Alvey Vision Conference, pp.147-151, 1988.

M. O. Berger and R. Mohr, Towards Autonomy in Active Contour Models, Proc. ICPR'90, pp.847-851, 1990.
URL : https://hal.archives-ouvertes.fr/inria-00548463

K. Mikolajczyk and C. Schmid, Indexing based on scale invariant interest points, ICCV, vol.1, pp.525-531, 2001.
URL : https://hal.archives-ouvertes.fr/inria-00548276

H. Bay, T. Tuytelaars, and L. Van-gool, Surf : Speeded up robust features, Computer Vision and Image Understanding (CVIU), vol.110, pp.346-359, 2008.

T. Chihaoui, R. Kachouri, H. Jlassi, M. Akil, and K. Hamrouni, Retinal identification system based on Optical Disc Ring extraction and new local SIFT-RUK descriptor. 15th ICPR, 2000.
URL : https://hal.archives-ouvertes.fr/hal-01870666

N. Otsu, A threshold selection methods from grey-level histograms, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.9, pp.62-66, 1979.

D. G. Lowe, Object recognition from local scale-invariant features, International Conference on Computer Vision, pp.1150-1157, 1999.
DOI : 10.1109/iccv.1999.790410

URL : http://www-inst.cs.berkeley.edu/~cs294-6/fa06/papers/LoweD_Object recognition from local scale-invariant features.pdf

C. Simon, Grenander Department of Special Collections and Archives, Papers Administrative History. M.E

A. Bron, L. Chirpaz, L. Legrand, and C. , Garcher Optic disc morphometry innormal eyes. Poster, pp.20-23, 1992.

P. R. Wankhede and K. B. Khanchandani, Optic disc detection using histogram based template matching, International Conference on Signal Processing
DOI : 10.1109/scopes.2016.7955765

J. J. Staal, M. D. Abramoff, M. Niemeijer, M. A. Viergever, and B. Van-ginneken, Ridge based vessel segmentation in color images of the retina, IEEE Transactions on Medical Imaging, vol.23, pp.501-509, 2004.

A. H. Rubaiyat, S. Aich, T. T. Toma, A. R. Malik, and R. , Islam Fast Normalized Cross Correlation based Retinal Recognition. 17th International Conference on Computer and Information Technology (ICCIT), 2014.
DOI : 10.1109/iccitechn.2014.7073086

A. Osareh, M. Mirmehd, B. Thomas, and R. Markham, Comparison of Color Spaces for Optic Disc Localization in Retinal Images, 16th International Conference on Pattern Recognition, vol.1, pp.743-746, 2002.

K. Stapor, A. Switonski, R. Chrastek, and G. Michelson, Segmentation of fundus eye images using methods of mathematical morphology for glaucoma diagnosis, Lecture Note. Comput. Scie, vol.3039, pp.41-48, 2004.

R. Rangayyan, X. Zhu, and F. Ayres, Detection of the optic disc in images of the retina using gabor filters and phase portrait analysis. in 4th Eur, Conf. of Int. Fed. For Med. And Biolog. Engg, vol.22, pp.468-471, 2009.

T. Walter, J. C. Klein, P. Massin, and A. Erginay, A contribution of image processing to the diagnosis of diabetic retinopathy -detection of exudates in color fundus images of the human retina, IEEE Trans. Med. Imag, vol.21, issue.10, pp.1236-1243, 2002.

A. Sopharak, B. Uyyanonvara, S. Barmanb, and T. H. Williamson, Automatic detection of diabetic retinopathy exudates from non-dilated retinal images using mathematical morphology methods, Comput. Med. Imag. Graph, vol.32, pp.720-727, 2008.

A. A. Youssif, A. Z. Ghalwash, and A. A. Ghoneim, Optic disc detection from normalized digital fundus images by means of a vessels' direction matched filter, IEEE Trans. Med. Imag, vol.27, issue.1, pp.11-18, 2008.

F. Abdali-mohammadi and A. Poorshamam, Automatic Optic Disc Center and Boundary Detection in Color Fundus Images, Journal of AI and Data Mining, vol.6, issue.1, pp.35-46, 2018.

K. Akyol, B. Fen, and S. Bayir, Automatic Detection of Optic Disc in Retinal Image by Using Keypoint Detection, Texture Analysis, and Visual Dictionary Techniques, Computational and Mathematical Methods in Medicine, 2016.

A. Fraga, N. Barreira, M. Ortega, M. G. Penedo, and M. J. Carreira, Precise segmentation of the optic disc in retinal fundus images. Computer Aided Systems Theor EUROCAST, pp.584-591, 2011.

F. Jonnat, M. Syed, M. Adeel, and . Akram, A secure personal identification system based on human retina, ISIEA, IEEE Symposium on Industrial Electronics and Applications, pp.90-95

M. A. El-sayed, M. Hassaballah, and M. A. Abdel-latif, Identity Verification of Individuals Based on Retinal Features Using Gabor Filters and SVM, Journal of Signal and Information Processing, vol.7, pp.49-59, 2016.

H. Jlassi and K. Hamrouni, Caractérisation de la rétine en vue de l'élaboration d'une methode biometrique d'identification de personnes, SETIT, 3rd International Conference : Sciences of Electronic, Technologies of Information and Telecom, 2005.

Z. W. Xu, X. X. Guo, X. Y. Hu, and X. Cheng, The blood vessel recognition of ocular fundus, Proceedings of the 4th International Conference on Machine Learning and Cybernetics, pp.4493-4498, 2005.

M. Shahnazi, M. Pahlevanzadeh, and M. Vafadoost, Wavelet based retinal recognition, Signal Processing and Its Applications. ISSPA 2007. 9th International Symposium on. IEEE, pp.1-4, 2007.