[Alaei, A., Nagabhushan, P. and Pal, U. (2011). Piece-wise painting technique for line segmentation of unconstrained handwritten text: A specific study with Persian text documents, Pattern Analysis and Applications14(4): 381–394.10.1007/s10044-011-0226-x]Search in Google Scholar
[Arivazhagan, M., Srinivasan, H. and Srihari, S. (2007). A statistical approach to line segmentation in handwritten documents, Document Recognition and Retrieval XIV65000: 245–255.10.1117/12.704538]Search in Google Scholar
[Basu, S., Chaudhuri, C., Kundu, M., Nasipuri, M. and Basu, D.K. (2007). Text line extraction from multi-skewed handwritten documents, Pattern Recognition40(6): 1825–1839.10.1016/j.patcog.2006.10.002]Search in Google Scholar
[Boykov, Y. and Kolmogorov, V. (2004). An experimental comparison of min-cut/max-flow algorithms for energy minimization in vision, IEEE Transactions on Pattern Analysis and Machine Intelligence26(9): 1124–1137.10.1109/TPAMI.2004.6015742889]Search in Google Scholar
[Brodić, D. (2012). Extended approach to water flow algorithm for text line segmentation, Journal of Computer Science and Technology27(1): 187–194.10.1007/s11390-012-1216-1]Search in Google Scholar
[Brodić, D. (2015). Text line segmentation with water flow algorithm based on power function, Journal of Electrical Engineering66(3): 132–141.10.2478/jee-2015-0021]Search in Google Scholar
[Brodić, D. and Milivojević, Z. (2011). A new approach to water flow algorithm for text line segmentation, Journal of Universal Computer Science17(1): 30–47.]Search in Google Scholar
[Eskenazi, S., Gomez-Kr¨amer, P. and Ogier, J.-M. (2017). A comprehensive survey of mostly textual document segmentation algorithms since 2008, Pattern Recognition64: 1–14.10.1016/j.patcog.2016.10.023]Search in Google Scholar
[Feldbach, M. and Tönnies, K. (2001). Robust line detection in historical church registers, 23rd DAGM Symposium on Pattern Recognition, Munich, Germany, pp. 140–147.]Search in Google Scholar
[Franken, E., van Almsick, M., Rongen, P., Florack, L. and ter Haar Romeny, B. (2006). An efficient method for tensor voting using steerable filters, European Conference on Computer Vision, Graz, Austria, pp. 228–240.]Search in Google Scholar
[Gatos, B., Stamatopoulos, N. and Louloudis, G. (2011). ICDAR 2009 handwriting segmentation contest, International Journal on Document Analysis and Recognition14(1): 25–33.10.1007/s10032-010-0122-8]Search in Google Scholar
[Han, S., Lee, M.-S. and Medioni, G. (1997). Non-uniform skew estimation by tensor voting, Workshop on Document Image Analysis (DIA’97), San Juan, Puerto Rico, pp. 1–4.]Search in Google Scholar
[Kennard, D.J. and Barrett, W.A. (2006). Separating lines of text in free-form handwritten historical documents, 2nd International Conference on Document Image Analysis for Libraries (DIAL’06), Lyon, France, pp. 12–23.]Search in Google Scholar
[LeBourgeois, F. (1997). Robust multifont OCR system from gray level images, Proceedings of the 4th International Conference on Document Analysis and Recognition, Ulm, Germany, Vol. 1, pp. 1–5.]Search in Google Scholar
[Lee, M.-S. and Medioni, G. (1997). Inferred descriptions in terms of curves, regions and junctions from sparse, noisy binary data, 3rd International Workshop on Visual Form, Capri, Italy, pp. 350–367.]Search in Google Scholar
[Li, Y., Zheng, Y., Doermann, D. and Jaeger, S. (2008). Script-independent text line segmentation in freestyle handwritten documents, Pattern Analysis and Machine Intelligence, IEEE Transactions on30(8): 1313–1329.10.1109/TPAMI.2007.7079218566488]Search in Google Scholar
[Likforman-Sulem, L., Hanimyan, A. and Faure, C. (1995). A hough based algorithm for extracting text lines in handwritten documents, Proceedings of the 3rd International Conference on Document Analysis and Recognition, Montreal, Quebec, Canada, Vol. 2, pp. 774–777.]Search in Google Scholar
[Likforman-Sulem, L., Zahour, A. and Taconet, B. (2007). Text line segmentation of historical documents: A survey, International Journal of Document Analysis and Recognition9(2): 123–138.10.1007/s10032-006-0023-z]Search in Google Scholar
[Louloudis, G., Gatos, B., Pratikakis, I. and Halatsis, C. (2008). Text line detection in handwritten documents, Pattern Recognition41(12): 3758–3772.10.1016/j.patcog.2008.05.011]Search in Google Scholar
[Louloudis, G., Gatos, B., Pratikakis, I. and Halatsis, C. (2009). Text line and word segmentation of handwritten documents, Pattern Recognition42(12): 3169–3183.10.1016/j.patcog.2008.12.016]Search in Google Scholar
[Maggiori, E., Manterola, H.L. and del Fresno, M. (2014). Perceptual grouping by tensor voting: A comparative survey of recent approaches, IET Computer Vision9(2): 259–277.10.1049/iet-cvi.2014.0103]Search in Google Scholar
[Medioni, G. and Kang, S.B. (2004). Emerging Topics in Computer Vision, Prentice Hall, Upper Saddle River, NJ.]Search in Google Scholar
[Mordohai, P. and Medioni, G. (2006). Tensor voting: A perceptual organization approach to computer vision and machine learning, Synthesis Lectures on Image, Video, and Multimedia Processing2(1): 1–136.10.2200/S00049ED1V01Y200609IVM008]Search in Google Scholar
[Naz, S. (2015). Segmentation techniques for recognition of Arabic-like scripts: A comprehensive survey, Springer Journal of Education and Information Technologies21(5): 1225–1241.10.1007/s10639-015-9377-5]Search in Google Scholar
[Nguyen Dinh, T. and Lee, G.S. (2011). Text line segmentation in handwritten document images using tensor voting, IEICE Transactions on Fundamentals of Electronics, Communications and Computer SciencesE94.A(11): 2434–2441.]Search in Google Scholar
[Nguyen Dinh, T., Park, J.-H. and Lee, G.-S. (2010). Voting based text line segmentation in handwritten document images, 10th IEEE International Conference on Computer and Information Technology, Bradford, UK, pp. 529–535.]Search in Google Scholar
[Pach, J.L. and Bilski, P. (2014). Robust method for the text line detection and splitting of overlapping text in the Latin manuscripts, Machine Graphics and Vision23(3–4): 11–22.10.22630/MGV.2014.23.3.2]Search in Google Scholar
[Papavassiliou, V., Katsouros, V. and Carayannis, G. (2010). A morphological approach for text-line segmentation in handwritten documents, 2010 International Conference on Frontiers in Handwriting Recognition (ICFHR), Kolkata, India, pp. 19–24.]Search in Google Scholar
[Phillips, I.T. and Chhabra, A.K. (1999). Empirical performance evaluation of graphics recognition systems, IEEE Transactions on Pattern Analysis and Machine Intelligence21(9): 849–870.10.1109/34.790427]Search in Google Scholar
[Ptak, R., Żygadło, B. and Unold, O. (2017). Projection-based text line segmentation with a variable threshold, International Journal of Applied Mathematics and Computer Science27(1): 195–206, DOI: 10.1515/amcs-2017-0014.10.1515/amcs-2017-0014]Search in Google Scholar
[Pu, Y. and Shi, Z. (1999). A natural learning algorithm based on hough transform for text lines extraction in handwritten documents, Advances in Handwriting Recognition34: 141–150.10.1142/9789812797650_0014]Search in Google Scholar
[Razak, Z., Zulkiflee, K., Idris, M.Y.I., Tamil, E.M., Noorzaily, M., Noor, M., Salleh, R., Yaakob, M., Yusof, Z.M. and Yaacob, M. (2008). Off-line handwriting text line segmentation: A review, International Journal of Computer Science and Network Security8(7): 12–20.10.3923/itj.2009.971.981]Search in Google Scholar
[Sarkar, R., Malakar, S., Das, N., Basu, S., Kundu, M. and Nasipuri, M. (2011). Word extraction and character segmentation from text lines of unconstrained handwritten Bangla document images, Journal of Intelligent Systems20(3): 227–260.10.1515/jisys.2011.013]Search in Google Scholar
[Vo, Q.N., Kim, S.H., Yang, H.J. and Lee, G.S. (2018). Text line segmentation using a fully convolutional network in handwritten document images, IET Image Processing12(3): 438–446.10.1049/iet-ipr.2017.0083]Search in Google Scholar
[Wong, K.Y., Casey, R.G. and Wahl, F.M. (1982). Document analysis system, IBM Journal of Research and Development26(6): 647–656.10.1147/rd.266.0647]Search in Google Scholar
[Wu, J.-C., Hsieh, J.-W. and Chen, Y.-S. (2008). Morphology-based text line extraction, Machine Vision and Applications19(3): 195–207.10.1007/s00138-007-0092-0]Search in Google Scholar
[Wu, T.-P., Yeung, S.-K., Jia, J., Tang, C.-K. and Medioni, G. (2012). A closed-form solution to tensor voting: Theory and applications, IEEE Transactions on Pattern Analysis and Machine Intelligence34(8): 1482–1495.10.1109/TPAMI.2011.25022184257]Search in Google Scholar
[Zhang, C. and Lee, G.S. (2011). Text line segmentation in Chinese handwritten text images, 17th Korea–Japan Joint Workshop on Frontiers of Computer Vision (FCV), Ulsan, South Korea, pp. 253–255.]Search in Google Scholar