Abstract
Soft computing is an emerging technology, which is more powerful with fuzzy logic by choosing the degree of membership function. This work is an effort to extract the foreground character from stone inscription images using fuzzy logic. Differentiating the character pixel from the stone background is a challenging task. Moreover, several collections of stone inscriptions are available, but only few of them are estampaged and preserved in a document format, which are highly exposed to deterioration. The Department of Archeology, Government of Tamil Nadu, acquired the inscriptions by a manual method called wax rubbing, which is time-consuming. The major challenges faced in character extraction from the camera-captured stone inscriptions are difficulties in perspective distortion, various light illumination, similar background and foreground, deteriorated stones, lack of text shape, size, and noise. Many binarization methods have been proposed for printed and handwritten document images, but no such work has been reported for stone inscription images. In this paper, a new stone inscription image enhancement system is proposed by combining Modified Fuzzy Entropy-based Adaptive Thresholding (MFEAT) with degree of Gaussian membership function and iterative bilateral filter (IBF). Since there is a variation in stone color, the images are equally normalized and stretched by linear contrast stretching, followed by foreground extraction by MFEAT, and the resultant image after binarization includes some noise. Hence, IBF is used to remove unwanted noise by preserving the character edges. The proposed fuzzy system helps predicting uncertainty among the character and the background pixels. The results were tested on various light illumination images and achieved a good PSNR rate compared to other binarizing techniques.
Similar content being viewed by others
References
Alginahi Y (2010) Preprocessing techniques in character recognition. In: Character recognition. InTech
Bataineh B, Abdullah SNHS, Omar K (2017) Adaptive binarization method for degraded document images based on surface contrast variation. Pattern Anal Appl 20.3:639–652
Bernsen J (1986) Dynamic Thresholding of Grey level images. In: Proceedings of the eighth international conference on pattern recognition, pp 1251
Bhuvaneswari G, Subbiah Bharathi V (2015) An efficient positional algorithm for recognition of ancient stone inscription characters. In: 2015 seventh international conference on advanced computing (ICoAC). IEEE
Caldwell RA (1875) Comparative grammar of the Dravidian or South-Indian family of languages. Trubner, London
Chaki N, Shaikh SH, Saeed K (2014) A comprehensive survey on image binarization techniques. In: Chaki N (ed) Exploring image binarization techniques. Springer, New Delhi, pp 5–15
Das S, Mandal S, Das AK (2015) Binarization of stone inscripted documents. In: 2015 IEEE international conference on computer graphics, vision and information security (CGVIS). IEEE
Durga KD, Maheswari PU (2017) Insight on character recognition for calligraphy digitization. In: International conference on technological innovations in ICT for agriculture and rural development (TIAR), 2017. IEEE
Gatos B, Pratikakis I, Perantonis SJ (2006) Adaptive degraded document image binarization. Pattern Recognit 39(3):317–327
Jeniffer RA, Bhuvaneswari G (2014) Image glazing for thinning of ancient Tamil characters. Int J Sci Eng Res 5(6)
Jianzhuang L, Wenqing L, Yupeng T (1991) Automatic thresholding of gray-level pictures using two-dimension Otsu method. In: 1991 international conference on circuits and systems, 1991, China. IEEE
Epigraphical Society of India (1993) Journal of the Epigraphical Society of India, vol 19. The Society
Kapur JN, Sahoo PK, Wong AKC (1985) A new method for gray-level picture thresholding using the entropy of the histogram. Comput Vis Graph Image Process 29.3:273–285
Kavallieratou E, Stathis S (2006) Adaptive binarization of historical document images. In: 18th international conference on pattern recognition, 2006 (ICPR 2006), vol 3. IEEE
Lee HC et al (2016) An improved adaptive binarization algorithm based on fuzzy logic. Int J Softw Eng Appl 10.10:1–8
Liao P-S, Chen T-S, Chung Pau-Choo (2001) A fast algorithm for multilevel thresholding. J Inf Sci Eng 17(5):713–727
Li D, Deng L, Gupta BB, Wang H, Choi C (2018) A novel CNN based security guaranteed image watermarking generation scenario for smart city applications. Inf Sci. https://doi.org/10.1016/j.ins.2018.02.060
Lu S, Su B, Tan Chew Lim (2010) Document image binarization using background estimation and stroke edges. Int J Doc Anal Recognit 13.4:303–314
Mahadevan I (2003) Early tamil epigraphy from the earliest times to the sixth century AD. Harvard oriental series, vol 62. Harvard University Press, Cambridge. ISBN 0-674-01227-5
Mohana HS, Pradeepa R, Kammar PN, Rajithkumar BK (2015) Identification and recognition of ancient stone in-scripted Hoysala characters using support vector machine (SVM ) model. In: IJIRT | 1(12). ISSN: 2349-6002
Niblack W (1986) Introduction to digital image processing. Prentice Hall, Englewood Cliffs, pp 115–116
Otsu N (1979) A threshold selection method from gray-level histograms. IEEE Trans Syst Man Cybern 9(1):62–66
Raj MAR, Abirami S (2012) A survey on Tamil handwritten character recognition. vol 5, pp 115–127
Rajakumar S, Bharathi VS (2011) Century identification and recognition of ancient Tamil character recognition. Int J Comput Appl (0975–8887) 26(4):32–35
Rajakumar S, Bharathi VS (2012) Eighth century Tamil consonants recognition from stone inscriptions. In: ICRTIT. ISBN: 978-1-4673-1601-9/12 (09758887)
Sauvola J, Pietikinen M (2000) Adaptive document image binarization. Pattern Recogn 33(2):225–236
Sesadri U, Sankar BS, Nagaraju C (2015) Fuzzy entropy based optimal thresholding technique for image enhancement. Int J Soft Comput IJSC 6(2):17–26
Shaus A, Turkel E, Piasetzky E (2012) Binarization of first temple period inscriptions: performance of existing algorithms and a new registration-based scheme. In: 2012 international conference on frontiers in handwriting recognition (ICFHR). IEEE
Singh TR, et al (2012) A new local adaptive thresholding technique in binarization. arXiv preprint arXiv:1201.5227
Soumya A, Kumar GH (2014) Preprocessing of camera captured inscriptions and segmentation of handwritten Kannada text. Int J Adv Res Comput Commun Eng 3(5):6794–6803
Su B, Lu S, Tan CL (2013) Robust document image binarization technique for degraded document images. IEEE Trans Image Process 22(4):1408–1417
Tomasi C, Manduchi R (1998) Bilateral filtering for gray and color images. In: Proceedings of the IEEE international conference on computer vision, pp 839–846
Wang H, Li Z, Li Y, Gupta BB, Choi C (2018) Visual saliency guided complex image retrieval. Pattern Recogn Lett. https://doi.org/10.1016/j.patrec.2018.08.010
Wenqing LJL (1993) The automatic thresholding of gray-level pictures via two-dimensional otsu method. Acta Autom Sin 1:015
Zhang S, Wang H, Huang W, Zhang C (2018a) Combining modified LBP and weighted SRC for palmprint recognition. Signal Image Video Process 12(6):1035–1042
Zhang S, Wang H, Huang W, You Z (2018b) Plant diseased leaf segmentation and recognition by fusion of super pixel, K-means and PHOG. Optik Int J Light Electron Opt 157:866–872
Zhang J, Williams SO, Wang H (2017) Intelligent computing system based on pattern recognition and data mining algorithms. Sustain Comput Inf Syst. https://doi.org/10.1016/j.suscom.2017.10.010
Zhou S-f et al (2009) An improved adaptive document image binarization method. In: 2nd international congress on image and signal processing, 2009 (CISP’09). IEEE
Acknowledgements
The research was supported by Anna University by granting Anna centenary Research Fellowship (ACRF) CFR/ACRF/2017/17.
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflict of interest
Authors declare that they have no conflict of interest.
Ethical approval
This article does not contain any studies with human participants performed by any of the authors.
Informed consent
No individual participants are included in the study
Additional information
Communicated by P. Pandian.
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Durga Devi, K., Uma Maheswari, P. Digital acquisition and character extraction from stone inscription images using modified fuzzy entropy-based adaptive thresholding. Soft Comput 23, 2611–2626 (2019). https://doi.org/10.1007/s00500-018-3610-2
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00500-018-3610-2