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Canny edge detection towards deep learning Arabic document classification

Published:13 May 2021Publication History

ABSTRACT

The paper describes the implementation of deep learning-based edge detection in image processing. A set of points in an image at which image brightness changes formally or sharply is called edge detection. Using edge detection filters, we can extract the feature of an object. In our work, we aim to develop a deep learning system to classify Arabic document images into four classes as follows: printed, handwritten, historical, and signboard and applying edge detection filters to extract features from document images. We will be using two edge detection methods namely Sobel, and Canny edge detection that are applied in 1000 Arabic document images to extract edges. Analyzing the performance factors are done in the terms of accuracy on the premise of Mean Squared Error (MSE) and python is employed for edge detection implementation. The experimental results show that the Canny edge detection technique results higher than the Sobel edge detection technique.

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  1. John Mancini. 2016. What Is Intelligent Document Recognition and How Does it Work? (July 2016). Retrieved November 15, 2020 from https://info.aiim.org/aiim-blog/what-the-heck-is-intelligent-document-recognition. Google ScholarGoogle Scholar
  2. Alkhateeb, F., Doush, I. A., & Albsoul, A. (2017). Arabic optical character recognition software: A review. Pattern Recognition and Image Analysis, 27(4), 763-776.‏Google ScholarGoogle ScholarDigital LibraryDigital Library
  3. Marinai, S. (2008). Introduction to document analysis and recognition. In  Machine learning in document analysis and recognition (pp. 1-20). Springer, Berlin, Heidelberg.Google ScholarGoogle Scholar
  4. Al-Ayyoub, M., Nuseir, A., Alsmearat, K., Jararweh, Y., & Gupta, B. (2018). Deep learning for Arabic NLP: A survey.  Journal of computational science, 26, 522-531.‏Google ScholarGoogle Scholar
  5. Yamina, O. J., El Mamoun, M., & Kaddour, S. (2017, December). Printed Arabic optical character recognition using support vector machine. In 2017 International Conference on Mathematics and Information Technology (ICMIT) (pp. 134-140). IEEEGoogle ScholarGoogle Scholar
  6. Sahlol, A., & Suen, C. (2014). A novel method for the recognition of isolated handwritten Arabic characters.  arXiv preprint arXiv:1402.6650.‏Google ScholarGoogle Scholar
  7. AL-Saffar, A., Awang, S., Al-Saiagh, W., Tiun, S., & S Al-khaleefa, A. (2018). Deep learning algorithms for arabic handwriting recognition: A review.  International Journal of Engineering & Technology, 7 (3.20).‏Google ScholarGoogle Scholar
  8. Adnan, K., & Akbar, R. (2019). An analytical study of information extraction from unstructured and multidimensional big data.  Journal of Big Data, 6 (1), 91.‏Google ScholarGoogle Scholar
  9. Ucuzal, H., Arslan, A. K., & Çolak, C. (2019, September). Deep learning based-classification of dementia in magnetic resonance imaging scans. In 2019 International Artificial Intelligence and Data Processing Symposium (IDAP) (pp. 1-6). IEEE.‏Google ScholarGoogle Scholar
  10. ang J., Yang J. (2009) Image Pattern Recognition. In: Li S.Z., Jain A. (eds) Encyclopedia of Biometrics. Springer, Boston, MA. https://doi.org/10.1007/978-0-387-73003-5_223.Google ScholarGoogle ScholarCross RefCross Ref
  11. Krishna, S. T., & Kalluri, H. K. (2019). Deep learning and transfer learning approaches for image classification. International Journal of Recent Technology and Engineering (IJRTE), 7(5S4), 427-432.‏Google ScholarGoogle Scholar
  12. Kumar, G., & Bhatia, P. K. (2014, February). A detailed review of feature extraction in image processing systems. In 2014 Fourth international conference on advanced computing & communication technologies (pp. 5-12). IEEE.‏Google ScholarGoogle Scholar
  13. Sornam, M., Muthusubash, K., & Vanitha, V. (2017, December). A survey on image classification and activity recognition using deep convolutional neural network architecture. In 2017 Ninth International Conference on Advanced Computing (ICoAC) (pp. 121-126). IEEE.‏Google ScholarGoogle ScholarCross RefCross Ref
  14. Yamashita, R., Nishio, M., Do, R. K. G., & Togashi, K. (2018). Convolutional neural networks: an overview and application in radiology. Insights into imaging, 9(4), 611-629.‏Google ScholarGoogle Scholar
  15. Harley, A. W., Ufkes, A., & Derpanis, K. G. (2015, August). Evaluation of deep convolutional nets for document image classification and retrieval. In 2015 13th International Conference on Document Analysis and Recognition (ICDAR)(pp. 991-995). IEEE.‏Google ScholarGoogle ScholarDigital LibraryDigital Library
  16. Shaheen, F., Verma, B., & Asafuddoula, M. (2016, November). Impact of automatic feature extraction in deep learning architecture. In 2016 International conference on digital image computing: techniques and applications (DICTA) (pp. 1-8). IEEE.‏Google ScholarGoogle ScholarCross RefCross Ref
  17. Hossain, M. A., & Sajib, M. S. A. (2019). Classification of image using convolutional neural network (CNN).  Global Journal of Computer Science and Technology.‏Google ScholarGoogle Scholar
  18. O'Mahony, N., Campbell, S., Carvalho, A., Harapanahalli, S., Hernandez, G. V., Krpalkova, L., ... & Walsh, J. (2019, April). Deep learning vs. traditional computer vision. In Science and Information Conference (pp. 128-144). Springer, Cham.‏Google ScholarGoogle Scholar
  19. El-Sayed, M. A., Estaitia, Y. A., & Khafagy, M. A. (2013). Automated edge detection using convolutional neural network. Int. J. Adv. Comput. Sci. Appl.(IJACSA), 4(10).‏Google ScholarGoogle Scholar
  20. Poobathy, D., & Chezian, R. M. (2014). Edge detection operators: Peak signal to noise ratio based comparison. IJ Image, Graphics and Signal Processing, 10, 55-61.‏Google ScholarGoogle Scholar
  21. Vijayarani, S., & Vinupriya, M. (2013). Performance analysis of canny and sobel edge detection algorithms in image mining. International Journal of Innovative Research in Computer and Communication Engineering, 1(8), 1760-1767.‏Google ScholarGoogle Scholar
  22. Ahmed, A. S. (2018). Comparative study among Sobel, Prewitt and Canny edge detection operators used in image processing. J. Theor. Appl. Inf. Technol, 96(19), 6517-6525.‏Google ScholarGoogle Scholar
  23.  Pooja A. S and Smitha Vas P. 2018. Edge Detection Using Deep Learning.International Research Journal of Engineering and Technology (IRJET)(July 2018).Google ScholarGoogle Scholar
  24. Arden Dertat. 2017. Applied Deep Learning - Part 4: Convolutional Neural Networks. (November 2017). https://towardsdatascience.com/applied-deep-learning-part-4-convolutional-neural-networks-584bc134c1e2.Google ScholarGoogle Scholar
  25. IFN/ENIT - database Arabic OCR handwritten arabic word recognition, Arabic database. http://www.ifnenit.com/Google ScholarGoogle Scholar
  26. KAHTT Database. http://khatt.ideas2serve.net/Google ScholarGoogle Scholar
  27. ALPH-REGIM-database. https://ewh.ieee.org/r8/tunisia/regim/alph_regim/Google ScholarGoogle Scholar

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  • Published in

    cover image ACM Other conferences
    ICFNDS '20: Proceedings of the 4th International Conference on Future Networks and Distributed Systems
    November 2020
    313 pages
    ISBN:9781450388863
    DOI:10.1145/3440749

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    Publication History

    • Published: 13 May 2021

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