A. Giotis, G. Sfikas, B. Gatos, and C. Nikou, A survey of document image word spotting techniques, Pattern Recognition, vol.68, pp.310-332, 2017.

A. Rosenfeld, Multiresolution image processing and analysis, vol.12, 2013.

P. Mukhopadhyay and B. Chaudhuri, A survey of Hough Transform, Pattern, vol.430, pp.993-1010, 2015.

R. Gonzalez and R. Woods, Digital Image Processing, 2017.

W. Postl, Detection of linear oblique structures and skew scan in digitized documents, Pattern Recognition Letters, pp.687-689, 1986.

D. Bloomberg, G. Kopec, and L. Dasari, Measuring document image skew and orientation, Proc. SPIE, Document Recognition II, vol.2422, pp.302-316, 1995.

B. Jain and M. Borah, A comparison paper on skew detection of scanned document images based on horizontal and vertical projection profile 440 analysis, International Journal of Scientific and Research Publications, vol.4, issue.6, pp.1-6, 2014.

A. Papandreou, B. Gatos, S. Perantonis, and I. Gerardis, Efficient skew detection of printed document images based on novel combination of enhanced profiles, IJDAR, vol.17, pp.433-454, 2014.

A. Hashizume, P. Yeh, and A. Rosenfeld, A method of detecting the orientation of aligned components, Pattern Recognition Letters, vol.4, issue.7, pp.125-132, 1986.

F. Farahani, A. Ahmadi, and M. Zarandi, Hybrid intelligent approach for diagnosis of the lung nodule from CT images using spatial kernelized fuzzy c-means and ensemble learning, Mathematics and Computers in Simulation, vol.450, pp.48-68, 2018.

N. Liolios, N. Fakotakis, and G. Kokkinakis, Improved document skew detection based on text line connected-component clustering

, Conf. Image Process, vol.1, pp.1098-1101, 2001.

Y. Lu and C. Tan, A nearest-neighbor chain based approach to skew 455 estimation in document images, Pattern Recognition Letters, vol.24, pp.2315-2323, 2003.

A. Mascaro, G. Cavalcanti, and C. Mello, Fast and robust skew estimation of scanned documents through background area information, Pattern Recognition, vol.31, issue.2, pp.1403-1411, 2010.

D. Le, G. Thoma, and H. Wechsler, Automated page orientation and skew angle detection for binary document images, Pattern Recognition, vol.27, issue.10, pp.1325-1344, 1994.

A. Amin and S. Fisher, A document skew detection method using the Hough transform, Pattern Anal. Appl, vol.3, issue.3, pp.243-253, 2000.

A. Boukharouba, A new algorithm for skew correction and baseline detection based on the randomized Hough Transform, Journal of King Saud University, Computer and Information Sciences, vol.29, issue.1, pp.29-38, 2017.

P. Yu, V. Anastassopoulos, and A. Venetsanopoulos, Pattern recognition based on morphological shape analysis and neural networks, vol.40, pp.577-595, 1996.

H. Yan, Skew correction of document images using interline crosscorrelation, CVGIP: Graphical Models and Image Process, vol.55, issue.6, pp.538-543, 1993.

S. Avanindra and B. Chaudhuri, Robust detection of skew in document 475 images, IEEE Trans. Image Process, vol.6, issue.2, pp.344-349, 1997.

P. V. Grinten and W. Krijger, Processing of the auto and cross-correlation functions to step response, Mathematics and Computers in Simulation, vol.5, issue.3, pp.160-161, 1963.

S. Chen and R. Haralick, An automatic algorithm for text skew estimation 480 in document images using recursive morphological transforms, Proc

. Internat and . Conf, on Image Processing, vol.1, pp.139-143, 1994.

C. Chou, S. Chu, and F. Chang, Estimation of skew angles for scanned documents based on piecewise covering by parallelograms, Pattern, vol.485, issue.2, pp.443-455, 2007.

M. Shafii, Optical Character Recognition of Printed Persian/Arabic Documents, Canada, 2014.

A. Egozi and I. Dinstein, Statistical mixture model for documents skew angle estimation, Pattern Recognition Letters, vol.32, pp.1912-1921, 2011.

A. Dempster, N. Laird, and D. Rubin, Maximum likelihood from incomplete data via the EM algorithm, J. Roy. Statist, Soc. 39, Series B, pp.1-38, 1977.

R. Verma and G. Latesh, Review of Illumination and Skew Correction Techniques for Scanned Documents, International Conference on, pp.322-327

A. Almhdie, O. Rozenbaum, E. Lespessailles, and R. Jennane, Image processing for the non-destructive characterization of porous media. Application to limestones and trabecular bones, Mathematics and Computers in Simulation, vol.99, pp.82-94, 2014.
URL : https://hal.archives-ouvertes.fr/insu-00856868

P. Burrow, Arabic Handwriting Recognition, 2004.

R. Bodade, R. Pachori, A. Gupta, P. Kanani, and D. Yadav, A Novel Approach for Automated Skew Correction of Vehicle Number Plate Using Principal Component Analysis, IEEE International Conference on Computational 505 Intelligence and Computing Research, pp.1-6, 2012.

J. Patel, A. Shah, and H. Patel, Skew Angle Detection and Correction using Radon Transform, International Journal of Electronics, Electrical and Computational System IJEECS, vol.4, pp.1-6, 2015.

B. Raducanu, C. Boiangiu, A. Olteanu, A. S. Tefanescu, F. Pop et al., , p.510

, Skew Detection Using the Radon Transform, International Conference on Control Systems and Computer Science (CSCS-18), pp.1-5, 2014.

S. Milan, V. Hlavac, and R. Boyle, Image processing, analysis, and machine vision, 2014.

S. Belhaj, H. B. Kahla, M. Dridi, and M. Moakher, Blind image deconvolution via Hankel based method for computing the GCD of polynomials, Mathematics and Computers in Simulation, vol.144, pp.138-152, 2018.

J. Fabrizio, A precise skew estimation algorithm for document images using KNN clustering and Fourier transform, International Conference on

J. Matas, C. Galambos, and J. Kittler, Robust Detection of Lines Using the Progressive Probabilistic Hough Transform, CVIU, vol.78, issue.1, pp.119-137, 2000.

G. Klette, Skeletons in Digital Image Processing, p.525

N. Auckland and . Zealand, , 2002.

K. Khurshid, Analysis and Retrieval of Historical Document Images, 2009.

O. Boudraa, W. Hidouci, and D. Michelucci, A robust multi stage technique for image binarization of degraded historical documents, p.530
URL : https://hal.archives-ouvertes.fr/hal-01858390

. Engineering-boumerdes, 2017 5th International Conference on IEEE, pp.1-6, 2017.

K. Khurshid, I. Siddiqi, C. Faure, and N. Vincent, Comparison of Niblack inspired binarization methods for ancient documents, Document Recognition and Retrieval XVI, pp.72470-535, 2009.

E. Dougherty, An introduction to morphological image processing, p.161, 1992.

F. Abecassis, OpenCV -Morphological Skeleton

, The OpenCV Reference Manual, 2016.

A. Antonacopoulos, C. Clausner, C. Papadopoulos, and S. Pletschache, Historical document layout analysis competition, Proc. of the International Conference on Document Analysis and Recognition, pp.545-1516, 2011.

A. Papandreou, B. Gatos, G. Louloudis, and N. Stamatopoulos, ICDAR 2013 document image skew estimation contest (DISEC 2013), in: ICDAR 2013, pp.1444-1448, 2013.