. .. Le,

.. .. Le,

. Le-modèle-de-itti and . .. Koch, , p.128

. .. Les-méthodes-spectrales, , p.129

. La-méthode-de-achanta, , p.131

, Choix de la méthode de détection de saillance, p.131

.. .. Les-filtres-de-gabor,

. .. , Extraction des caractéristiques significatives

. .. Débrumage-orienté-objet, , p.145

.. .. Résultats,

.. .. Conclusion,

V. Creuze, Robots marins et sous-marins-perception, modélisation, commande, 2014.

. Seifallah-ben-saad, Design of a hybrid coordination algorithm for groups of communicating submarine robots. Application : optical acquisition systematic and detailed seabed, 2016.

X. Lurton, Acoustique sous-marine : présentation et applications. Editions Quae, 1998.

M. Legris, K. Lebart, F. Fohanno, and B. Zerr, Les capteurs d'imagerie en robotique sous-marine : tendances actuelles et futures, vol.20, pp.137-164, 2003.
URL : https://hal.archives-ouvertes.fr/hal-00518829

I. Léonard, Reconnaissance des objets manufacturés dans des vidéos sousmarines, 2012.

I. Quidu, Classification multi-vues d'un objet immergéà partir d'images sonar et de son ombre portée sur le fond, 2001.

R. Schettini and S. Corchs, Underwater image processing : state of the art of restoration and image enhancement methods, EURASIP Journal on Advances in Signal Processing, vol.2010, issue.1, p.746052, 2010.

S. Jules and . Jaffe, Computer modeling and the design of optimal underwater imaging systems, IEEE Journal of Oceanic Engineering, vol.15, issue.2, pp.101-111, 1990.

S. Bazeille, Vision sous-marine monoculaire pour la reconnaissance d'objets, 2008.

. Bl-mcglamery, Computer analysis and simulation of underwater camera system performance, SIO ref, vol.75, 1975.

. Bl-mcglamery, A computer model for underwater camera systems, International Society for Optics and Photonics, vol.208, pp.221-232, 1980.

S. Bazeille, I. Quidu, L. Jaulin, and J. Malkasse, Automatic underwater image pre-processing, CMM'06, p.page xx, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00504893

W. Hou, J. Deric, A. D. Gray, . Weidemann, R. Georges et al., 2007 IEEE International Geoscience and Remote Sensing Symposium, pp.1889-1892, 2007.

H. Willard and . Wells, Theory of small angle scattering, Optics of the Sea, vol.61, 1973.

E. Trucco and A. T. , Self-tuning underwater image restoration, IEEE Journal of Oceanic Engineering, vol.31, issue.2, pp.511-519, 2006.

A. Olmos and E. Trucco, Detecting man-made objects in unconstrained subsea videos, BMVC, pp.1-10, 2002.

Z. Liu, Y. Yu, K. Zhang, and H. Huang, Underwater image transmission and blurred image restoration, Optical Engineering, vol.40, issue.6, pp.1125-1132, 2001.

. Srinivasa-g-narasimhan, K. Shree, B. Nayar, and . Sun, Structured light in scattering media, Tenth IEEE International Conference on Computer Vision (ICCV'05, vol.1, pp.420-427, 2005.

L. Chao and M. Wang, Removal of water scattering, 2010 2nd International Conference on Computer Engineering and Technology, vol.2, pp.2-35, 2010.

H. Lu, Y. Li, Y. Zhang, M. Chen, S. Serikawa et al., Underwater optical image processing : a comprehensive review. Mobile networks and applications, vol.22, pp.1204-1211, 2017.

M. Donna, . Kocak, R. Fraser, . Dalgleish, M. Frank et al., A focus on recent developments and trends in underwater imaging, Marine Technology Society Journal, vol.42, issue.1, pp.52-67, 2008.

P. Mariani, I. Quincoces, K. Haugholt, Y. Chardard, A. Visser et al., Range-gated imaging system for underwater monitoring in ocean environment, Sustainability, vol.11, issue.1, p.162, 2019.

S. Jules and . Jaffe, Performance bounds on synchronous laser line scan systems, Optics express, vol.13, issue.3, pp.738-748, 2005.

T. Treibitz, Y. Yoav, and . Schechner, Active polarization descattering, IEEE transactions on pattern analysis and machine intelligence, vol.31, pp.385-399, 2009.

M. Dubreuil, I. Delrot, A. Leonard, C. Alfalou, A. Brosseau et al., Exploring underwater target detection by imaging polarimetry and correlation techniques, Applied optics, vol.52, issue.5, pp.997-1005, 2013.

D. Gary, J. Gilbert, and . Pernicka, Improvement of underwater visibility by reduction of backscatter with a circular polarization technique, Applied Optics, vol.6, issue.4, pp.741-746, 1967.

L. Mullen, B. Cochenour, W. Rabinovich, R. Mahon, and J. Muth, Backscatter suppression for underwater modulating retroreflector links using polarization discrimination, Applied optics, vol.48, issue.2, pp.328-337, 2009.

D. Gareth, . Lewis, L. David, P. Jordan, and . Roberts, Backscattering target detection in a turbid medium by polarization discrimination, Applied Optics, vol.38, issue.18, pp.3937-3944, 1999.

S. Helan, J. Burie, T. Bouwmans, and S. Bazeille, Object detection in underwater images, CMM06, Colloque CARACTE-RISATION DU MILIEU MARIN, 2006.
URL : https://hal.archives-ouvertes.fr/hal-00441983

F. Petit, A. Capelle-laize, and P. Carre, Underwater image enhancement by attenuation inversionwith quaternions, IEEE International Conference on Acoustics, Speech and Signal Processing, pp.1177-1180, 2009.

F. Petit, Traitement et analyse d'images couleur sous-marines : modèles physiques et représentation quaternionique, 2010.

G. Luz-a-torres-méndez and . Dudek, A statistical learning-based method for color correction of underwater images, Research on computer science, vol.17, issue.10, 2005.

C. Fabbri, J. Md, J. Islam, and . Sattar, Enhancing underwater imagery using generative adversarial networks, 2018 IEEE International Conference on Robotics and Automation (ICRA), pp.7159-7165, 2018.

A. Arnold-bos, J. Malkasse, and G. Kervern, Towards a model-free denoising of underwater optical images, Europe Oceans 2005, vol.1, pp.527-532, 2005.
URL : https://hal.archives-ouvertes.fr/hal-00518727

. Stephen-m-pizer, J. D. Philip-amburn, R. Austin, A. Cromartie, T. Geselowitz et al., Adaptive histogram equalization and its variations. Computer vision, graphics, and image processing, vol.39, pp.355-368, 1987.

E. Stephen-m-pizer, J. P. Johnston, B. C. Ericksen, K. E. Yankaskas, and . Muller, Contrast-limited adaptive histogram equalization : speed and effectiveness, Proceedings of the First Conference on Visualization in Biomedical Computing, pp.337-345, 1990.

M. Suzuri and H. , Mixture contrast limited adaptive histogram equalization for underwater image enhancement, 2013 International conference on computer applications technology (ICCAT), pp.1-5, 2013.

R. Garcia, T. Nicosevici, and X. Cufí, On the way to solve lighting problems in underwater imaging, OCEANS'02 MTS/IEEE, vol.2, pp.1018-1024, 2002.

K. He, J. Sun, and X. Tang, Single image haze removal using dark channel prior, IEEE transactions on pattern analysis and machine intelligence, vol.33, pp.2341-2353, 2010.

S. Lee, S. Yun, and J. Nam, Chee Sun Won, and Seung-Won Jung. A review on dark channel prior based image dehazing algorithms, EURASIP Journal on Image and Video Processing, vol.2016, issue.1, p.4, 2016.

A. Galdran, D. Pardo, A. Picón, and A. Alvarez-gila, Automatic red-channel underwater image restoration, Journal of Visual Communication and Image Representation, vol.26, pp.132-145, 2015.

M. Donna, . Kocak, M. Frank, and . Caimi, Marine Technology Society Journal, vol.39, issue.3, pp.5-26, 2005.

V. Aurich and J. Weule, Non-linear gaussian filters performing edge preserving diffusion, pp.538-545, 1995.

P. Perona and J. Malik, Scale-space and edge detection using anisotropic diffusion, IEEE Transactions on pattern analysis and machine intelligence, vol.12, issue.7, pp.629-639, 1990.

S. Mallat, Une exploration des signaux en ondelettes. Editions Ecole Polytechnique, 2000.

C. J. Prabhakar, . Pu-praveen, and . Kumar, Underwater image denoising using adaptive wavelet subband thresholding, 2010 International Conference on Signal and Image Processing, pp.322-327, 2010.

S. Feifei, Z. Xuemeng, and W. Guoyu, An approach for underwater image denoising via wavelet decomposition and high-pass filter, 2011 Fourth International Conference on Intelligent Computation Technology and Automation, vol.2, pp.417-420, 2011.

L. Sendur, W. Ivan, and . Selesnick, Bivariate shrinkage functions for waveletbased denoising exploiting interscale dependency, IEEE Transactions on signal processing, vol.50, issue.11, pp.2744-2756, 2002.

H. Edwin and . Land, The retinex theory of color vision, Scientific american, vol.237, issue.6, pp.108-129, 1977.

A. Rizzi, C. Gatta, and D. Marini, From retinex to automatic color equalization : issues in developing a new algorithm for unsupervised color equalization, Journal of Electronic Imaging, vol.13, issue.1, pp.75-85, 2004.

C. Fernandez-maloigne, F. Robert-inacio, and L. Macaire, Couleur numérique-acquisition, perception, 2012.

G. Buchsbaum, A spatial processor model for object colour perception, Journal of the Franklin institute, vol.310, issue.1, pp.1-26, 1980.

A. Rizzi, C. Gatta, and D. Marini, A new algorithm for unsupervised global and local color correction, Pattern Recognition Letters, vol.24, issue.11, pp.1663-1677, 2003.

, Underwater image enhancement using an integrated colour model, IAENG International Journal of Computer Science, vol.34, issue.2, 2007.

A. Shahrizan and A. Ghani, Unsupervised contrast correction for underwater image quality enhancement through integrated-intensity stretched-rayleigh histograms, Raja Siti Nur Adiimah Raja Aris, and Muhamad Luqman Muhd Zain, vol.8, pp.1-7, 2016.

E. Collett, Polarized light. fundamentals and applications, Optical Engineering, 1992.

C. Brosseau, Fundamentals of polarized light, 1998.

H. Poincaré and ;. G. Carré, , vol.1, p.1889

C. Jones, A new calculus for the treatment of optical systems, iv. Josa, vol.32, issue.8, pp.486-493, 1942.

H. Mueller, Memorandum on the polarization optics of the photoelastic shutter, vol.2, 1943.

A. Bleunven, Contributionà la conception d'un système d'imagerie polarimétrique en vue d'applications pour la détection précoce du mélanome, 2016.

A. Le and G. , Développement d'un polarimètre de Muellerà codage spectral utilisant une Swept-source : applicationà la microscopieà balayage laser, 2016.

M. Richert, Apport de la polarimétrie en imagerie active : optimisation du contraste polarimétrique et mesure de biréfringence induite par imagerie de Mueller, 2009.

M. Dubreuil, Développement d'un polarimètre de Mueller instantané par codage en longueur d'onde. Applicationà la caractérisation de cristaux liquides ferroélectriques, 2010.

Y. Yoav, N. Schechner, and . Karpel, Recovery of underwater visibility and structure by polarization analysis, IEEE Journal of oceanic engineering, vol.30, issue.3, pp.570-587, 2005.

C. Y. Peter, J. C. Chang, K. I. Flitton, E. Hopcraft, . Jakeman et al., Improving visibility depth in passive underwater imaging by use of polarization, Applied optics, vol.42, issue.15, pp.2794-2803, 2003.

A. Kouzoubov, J. Michael, J. Brennan, and . Thomas, Treatment of polarization in laser remote sensing of ocean water, Applied optics, vol.37, issue.18, pp.3873-3885, 1998.

. Bs-pritchard and . Elliott, Two instruments for atmospheric optics measurements, JOSA, vol.50, issue.3, pp.191-202, 1960.

A. C. Holland and G. Gagne, The scattering of polarized light by polydisperse systems of irregular particles, Applied Optics, vol.9, issue.5, pp.1113-1121, 1970.

F. George and . Beardsley, Mueller scattering matrix of sea water, JOSA, vol.58, issue.1, pp.52-57, 1968.

J. Kenneth, E. Voss, and . Fry, Measurement of the mueller matrix for ocean water, Applied optics, vol.23, issue.23, pp.4427-4439, 1984.

W. George, . Kattawar, J. Milun, and . Rakovi?, Virtues of mueller matrix imaging for underwater target detection, Applied optics, vol.38, issue.30, pp.6431-6438, 1999.

F. Parnet, Imagerie polarimétrique active par brisure d'orthogonalité, Rennes, vol.1, 2018.

L. Bartolini, . De-dominicis, G. Ferri-de-collibus, M. Fornetti, M. Francucci et al., Polarimetry as tool to improve phase measurement in an amplitude modulated laser for submarine archaeological sites inspection, O3A : Optics for Arts, Architecture, and Archaeology, vol.6618, p.66180, 2007.

X. Ni, W. Sa-kartazayeva, W. Wang, . Cai, and . Sk-gayen, Polarization memory effect and visibility improvement of targets in turbid media, Optical Tomography and Spectroscopy of Tissue VII, vol.6434, p.64340, 2007.

J. Milun, G. W. Rakovi?, M. Kattawar, . Mehr?beoglu, D. Brent et al., Light backscattering polarization patterns from turbid media : theory and experiment, Applied optics, vol.38, issue.15, pp.3399-3408, 1999.

S. Stocker, F. Foschum, P. Krauter, and F. Bergmann, Ansgar Hohmann, Claudia Scalfi Happ, and Alwin Kienle, Applied spectroscopy, vol.71, issue.5, pp.951-962, 2017.

Y. Piederrière, . Boulvert, . Cariou, Y. Le-jeune, G. Guern et al., Backscattered speckle size as a function of polarization : influence of particle-size and-concentration, Optics express, vol.13, issue.13, pp.5030-5039, 2005.

K. Harald, Theorie der horizontalen sichtweite : Kontrast und sichtweite, vol.12, 1924.

R. Sharma and V. Chopra, A review on different image dehazing methods, International Journal of Computer Engineering and Applications, vol.6, issue.3, 2014.

F. Pierre and P. Migerditichan, Débrumage variationnel, GRETSI, 2015.

K. Shree, . Nayar, G. Srinivasa, and . Narasimhan, Vision in bad weather, Proceedings of the Seventh IEEE International Conference on Computer Vision, vol.2, pp.820-827, 1999.

Y. Yoav, . Schechner, G. Srinivasa, S. Narasimhan, and . Nayar, Instant dehazing of images using polarization, CVPR (1), pp.325-332, 2001.

C. Feng, S. Zhuo, X. Zhang, L. Shen, and S. Süsstrunk, Near-infrared guided color image dehazing, 2013 IEEE International Conference on Image Processing, pp.2363-2367, 2013.

E. Nascimento, M. Campos, and W. Barros, Stereo based structure recovery of underwater scenes from automatically restored images, 2009 XXII Brazilian Symposium on Computer Graphics and Image Processing, pp.330-337, 2009.

T. Robby and . Tan, Visibility in bad weather from a single image, 2008 IEEE Conference on Computer Vision and Pattern Recognition, pp.1-8, 2008.

R. Fattal, Single image dehazing, ACM transactions on graphics (TOG), vol.27, issue.3, p.72, 2008.

, Raanan Fattal. ACM transactions on graphics (TOG), vol.34, issue.1, p.13, 2014.

Y. Gao, H. Li, and S. Wen, Restoration and enhancement of underwater images based on bright channel prior, Mathematical Problems in Engineering, 2016.

Y. John, Y. Chiang, and . Chen, Underwater image enhancement by wavelength compensation and dehazing, IEEE transactions on image processing, vol.21, issue.4, pp.1756-1769, 2011.

N. Carlevaris-bianco, A. Mohan, and R. M. Eustice, Initial results in underwater single image dehazing, OCEANS 2010 MTS/IEEE SEATTLE, pp.1-8, 2010.

H. Wen, Y. Tian, T. Huang, and W. Gao, Single underwater image enhancement with a new optical model, 2013 IEEE International Symposium on Circuits and Systems (ISCAS2013), pp.753-756, 2013.

A. Levin, D. Lischinski, and Y. Weiss, A closed-form solution to natural image matting, IEEE transactions on pattern analysis and machine intelligence, vol.30, pp.228-242, 2007.

C. Tomasi and R. Manduchi, , vol.98, 1998.

J. Kim, W. Jang, J. Sim, and C. Kim, Optimized contrast enhancement for real-time image and video dehazing, Journal of Visual Communication and Image Representation, vol.24, issue.3, pp.410-425, 2013.

K. Panetta, C. Gao, and S. Agaian, Human-visual-system-inspired underwater image quality measures, IEEE Journal of Oceanic Engineering, vol.41, issue.3, pp.541-551, 2015.

K. He, J. Sun, and X. Tang, Guided image filtering, European conference on computer vision, pp.1-14, 2010.

A. Falou, La corrélation optique : un outil de décision, IEEE-Canada Review, issue.49, pp.6-10, 2005.

. Vander-lugt, Signal detection by complex spatial filtering, IEEE Transactions on Information Theory, vol.10, issue.2, pp.139-145, 1964.

C. S. Weaver and . Joseph-w-goodman, A technique for optically convolving two functions, Applied optics, vol.5, issue.7, pp.1248-1249, 1966.

A. Alfalou and C. Brosseau, Understanding correlation techniques for face recognition : from basics to applications. ISBN, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00579191

S. Chandra-s-yelleswarapu, D. Kothapalli, and . Rao, Optical fourier techniques for medical image processing and phase contrast imaging, Optics communications, vol.281, issue.7, pp.1876-1888, 2008.

A. Alfalou and C. Brosseau, Recent advances in optical image processing, vol.60, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01272345

I. Rekleitis, D. Meger, and G. Dudek, Simultaneous planning, localization, and mapping in a camera sensor network, Robotics and Autonomous Systems, vol.54, issue.11, pp.921-932, 2006.

A. Lee, J. Lee, S. Lee, and J. Choi, Real-time camera pose estimation for augmented reality system using a square marker, International Symposium on Wearable Computers (ISWC) 2010, pp.1-2, 2010.

D. Frederic-d-maire, M. Prasser, M. Dunbabin, and . Dawson, A vision based target detection system for docking of an autonomous underwater vehicle, Proceedings of the 2009 Australasion Conference on Robotics and Automation. Australian Robotics and Automation Association, 2009.

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

S. Garrido-jurado, R. Muñoz-salinas, F. Madrid-cuevas, and M. , Automatic generation and detection of highly reliable fiducial markers under occlusion, Pattern Recognition, vol.47, issue.6, pp.2280-2292, 2014.

J. Marek?u?i and F. Bruno, Impact of dehazing on underwater marker detection for augmented reality. Frontiers in Robotics and AI, vol.5, p.92, 2018.

M. Khadidja-ould-amer, A. Elbouz, C. Alfalou, J. Brosseau, and . Hajjami, Enhancing underwater optical imaging by using a low-pass polarization filter, Optics express, vol.27, issue.2, pp.621-643, 2019.

R. Nikhil, . Pal, K. Sankar, and . Pal, A review on image segmentation techniques, Pattern recognition, vol.26, issue.9, pp.1277-1294, 1993.

I. Kyong, K. W. Chang, M. Bowyer, and . Sivagurunath, Evaluation of texture segmentation algorithms, Proceedings. 1999 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (Cat. No PR00149), vol.1, pp.294-299, 1999.

M. Tuceryan and A. Jain, The Handbook of Pattern Recognition and Computer Vision, pp.207-248, 1998.

J. Malik, S. Belongie, T. Leung, and J. Shi, Contour and texture analysis for image segmentation, International journal of computer vision, vol.43, issue.1, pp.7-27, 2001.

B. Hans-du, Gabor phase in texture discrimination, Signal Processing, vol.21, pp.221-240, 1990.

B. Hans-du and P. Heitkamper, Texture features based on gabor phase, Signal Processing, vol.23, pp.227-244, 1991.

J. Zhang and T. Tan, Brief review of invariant texture analysis methods, Pattern Recognition, vol.35, pp.735-747, 2002.
URL : https://hal.archives-ouvertes.fr/inria-00548263

K. Anil, F. Jain, and . Farrokhnia, Unsupervised texture segmentation using gabor filters, Pattern recognition, vol.24, issue.12, pp.1167-1186, 1991.

K. Duncan and . Sarkar, Saliency in images and video : a brief survey, IET Computer Vision, vol.6, issue.6, pp.514-523, 2012.

L. Itti, C. Koch, and E. Niebur, A model of saliency-based visual attention for rapid scene analysis, IEEE Transactions on Pattern Analysis & Machine Intelligence, issue.11, pp.1254-1259, 1998.

X. Hou and L. Zhang, Saliency detection : A spectral residual approach, 2007 IEEE Conference on Computer Vision and Pattern Recognition, pp.1-8, 2007.

C. Guo, Q. Ma, and L. Zhang, Spatio-temporal saliency detection using phase spectrum of quaternion fourier transform, 2008 IEEE Conference on Computer Vision and Pattern Recognition, pp.1-8, 2008.

X. Hou, J. Harel, and C. Koch, Image signature : Highlighting sparse salient regions, IEEE transactions on pattern analysis and machine intelligence, vol.34, pp.194-201, 2011.

M. Cerf, J. Harel, W. Einhäuser, and C. Koch, Predicting human gaze using low-level saliency combined with face detection, Advances in neural information processing systems, pp.241-248, 2008.

R. Achanta, S. Hemami, F. Estrada, and S. Süsstrunk, Frequency-tuned salient region detection, IEEE International Conference on Computer Vision and Pattern Recognition (CVPR 2009), number CONF, pp.1597-1604, 2009.

D. Gabor, Theory of communication, Inst. Elec. Eng, vol.93, pp.429-457, 1946.

J. Gustav-gauman, Uncertainty relation for resolution in space, spatial frequency, and orientation by two-dimensional visual cortical filters, J. Opt. Soc. Am, vol.12, pp.1160-1169, 1985.

A. C. Bovik, M. Clark, and W. S. Geisler, Multichannel texture analysis using localized spatial filters, IEEE Transactions on Pattern Analysis & Machine Intelligence, issue.1, pp.55-73, 1990.

Y. Attaf, A. O. Boudraa, and C. Ray, Amplitude-based dominant component analysis for underwater mines extraction in side scans sonar, OCEANS 2016-Shanghai, pp.1-4, 2016.

J. Zhang, T. Tan, and L. Ma, Invariant texture segmentation via circular gabor filters. In Object recognition supported by user interaction for service robots, vol.2, pp.901-904, 2002.

A. David, M. Clausi, and . Jernigan, Designing gabor filters for optimal texture separability, Pattern Recognition, vol.33, issue.11, pp.1835-1849, 2000.

K. Hammouda and E. Jernigan, Texture segmentation using gabor filters, 2000.

. It-joliffe and . Morgan, Principal component analysis and exploratory factor analysis. Statistical methods in medical research, vol.1, pp.69-95, 1992.

A. Likas, N. Vlassis, and J. J. Verbeek, The global k-means clustering algorithm, Pattern recognition, vol.36, issue.2, pp.451-461, 2003.
URL : https://hal.archives-ouvertes.fr/inria-00321515

H. Michael-b-dillencourt, M. Samet, and . Tamminen, A general approach to connected-component labeling for arbitrary image representations, Journal of the ACM (JACM), vol.39, issue.2, pp.253-280, 1992.

F. James and . Kaiser, On a simple algorithm to calculate the'energy'of a signal, International conference on acoustics, speech, and signal processing, pp.381-384, 1990.

P. Maragos, A. C. Bovik, and T. F. Quatieri, Multidimensional energy operator for image processing, Visual Communications and Image Processing'92, vol.1818, pp.177-186, 1992.

P. Maragos and A. C. Bovik, Demodulation of images modeled by amplitude-frequency modulations using multidimensional energy separation, Proceedings of 1st International Conference on Image Processing, vol.3, pp.421-425, 1994.

J. Paul and H. , Am-fm image models, 1996.

Y. Attaf, Segmentation d'images par modèles AM-FM Application aux images Sonar et MSG, 2016.

S. El-hadji and . Diop, Modèles AM-FM et approche paréquations aux dérivées partielles de la décomposition modale empirique pour l'analyse des signaux et des images, Rennes, vol.1, 2009.

C. Alan and . Bovik, Annexe Le modèle AM-FM Le modèle AM-FM (AM pour Amplitude Modulation et FM pour Frequency Modulation) aété initialement introduit par Kaiser et al. [142] pour le traitement du signal de la parole, 2010.

, Ces deux algorithmes sont basés sur l'opérateur d'énergie de Teager-kaiser (TKEO)