Open Access Journal

ISSN : 2394-2320 (Online)

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

Open Access Journal

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

ISSN : 2394-2320 (Online)

Content-Based Lung Image Categorization by Metric Learning for Interstitial Lung Diseases

Author : Geethu Gopal . G 1

Date of Publication :7th September 2016

Abstract: Content Based Image Retrieval (CBIR) systems retrieve lung images from that database which are similar to the query image. CBIR is the application of computer vision. That has been one on the most vivid research areas in the field of computer vision over the last 10 years. Instead of text based searching, CBIR efficiently retrieves images that are visually similar to query image. In CBIR query is given in the form of image. This paper aims to provide an efficient medical image data Retrieval in Lung Diseases. Finding similar images or reference is one way to assist radiologist for differential diagnosis of Interstitial Lung Diseases (ILDs). Content Based Image Retrieval (CBIR) has been identified as an important research topic in this direction. This motivated us to design a special purpose CBIR system (Med-IR) for Interstitial Lung Diseases (ILDs), where the user can provide one interstitial disease pattern as input and the system will retrieve few most similar patterns available in the database. CBIR is an effective technique, which is appropriate for large-scale indexing, is adopted, extended and integrated to the proposed framework so as to achieve optimized search and retrieval of rich media content even from large database.

Reference :

    1. C.B. Akgul, et al., “Content-Based Image Retrieval in Radiology: Current Status and Future Directions”, Journal of Digital Imaging, Vol. 24, No. 2, pp. 208-222, 2011.
    2. V.S. Murthy, E.Vamsidhar, J.N.V.R. Swarup Kumar, and P. Sankara Rao,“Content based Image Retrieval using Hierarchical and Kmeans Clustering Techniques”, International Journal of Engineering Science and Technology, Vol. 2, No. 3, 2010, pp. 209-212.
    3. B. Ramamurthy, and K.R. Chandran, “CBMIR:Shapebased Image Retrieval using Canny Edge Detection and Kmeans Clustering Algorithms for Medical Images”, International Journal of Engineering Science and Technology, Vol. 3, No. 3, 2011, pp. 209-212.
    4. Roberto Parades, Daniel Keysers, Thomas M. Lehman, Berthold Wein, Herman Ney, and Enrique Vidal,“Classification of Medical Images Using Local Representation”, Workshop Bildverarbeitung fur die Medizin, 2002, pp.171-174.
    5. Wei Zhang, Sven Dickinson, Stanley Sclaroff, Jacob Feldman, and Stanley Dunn,“Shape – Based Indexing in a Medical Image Database”, Biomedical Image Analysis, 1998, pp. 221230.
    6. Simel, D., Drummond, R.: The rational clinical examination: evidence– based clinical diagnosis. McGraw– Hill (2008)
    7. Doi, K.: Computer–aided diagnosis in medical imaging: Historical review, current status and future potential. Computerized Medical Imaging and Graphics 31(4–5), 198–211 (2007)
    8. Duncan, J.S., Ayache, N.: Medical image analysis: Progress over two decades and the challenges ahead. IEEE Transactions on Pattern Analysis and Machine Intelligence 22(1), 85–106 (2000)
    9. Engle, R.L.: Attempts to use computers as diagnostic aids in medical decision making: a thirty–year experience. Perspectives in biology and medicine 35(2), 207– 219 (1992)
    10. Mu¨ller, H., Michoux, N., Bandon, D., Geissbuhler, A.: A review of content–based image retrieval systems in medicine–clinical benefits and future directions. Internation Journal of Medical Informatics 73(1), 1–23 (2004)
    11. Nishikawa, R.M.: Current status and future directions of computer–aided diagnosis in mammography. Computerized Medical Imaging and Graphics 31(4–5), 224–235 (2007)
    12. Engle, R.L.: Attempts to use computers as diagnostic aids in medical decision making: a thirty–year experience. Perspectives in biology and medicine 35(2), 207– 219 (1992).
    13. Y. Liu, D. Zhang, G. Lu, W.Y. Ma, “A Survey of Content Based Image Retrieval with High Level Semantics”, Pattern Recogn., Vol. 40, pp. 262- 82, 2007
    14. H. Müller, N. Michoux, D. Bandon, and A. Geissbuhler,“ A review of content-based image retrieval systems in medical applications- Clinical benefits and future directions”, International Journal of Medical Informatics, Vol. 73, No. 1, 2004, pp. 1-23.
    15. T.M. Lehmann, M.O. Guld, C Thies,B Fischer , K. Spitzer, and D. Keysers,“ Content-based image retrieval in medical applications”, Methods of Info in Med, IOS Press , Vol. 43, No. 4, 2004, pp. 354–361.
    16. S. Antani, L.R. Long, and G.R. Thoma, “Contentbased image retrieval for large biomedical image Archives”, Proceedings of 11th World Congress Medical Informatics, 2004, pp. 829–833
    17. L.R. Long, S.K. Antani, and G.R. Thoma, “Image informatics at a national research center”, Computer Medical Imaging & Graphics (ELSEVIER), Vol. 29, 2005, pp. 171–193
    18. G.R. Thoma, L.R. Long, and S.K. Antani, “Biomedical imaging research and development: knowledge from images in the medical enterprise”,Technical Report Lister Hill National Centre for Biomedical Communications, 2006.
    19. E.G.M. Petrakis, and C. Faloutsos, “ImageMap: An Image Indexing Method Based on Spatial Similarity”, IEEE Transaction on Knowledge and Data Engineering, 2002, pp. 979–987
    20. Chi-Ren Shyu, Carla E. Brodley, Avinash C. Kak, and Akio Kosaka,“ ASSERT:A Physician-in-the-Loop Content-Based Retrieval System for HRCT Image Databases”, Computer Vision and Image Understanding, Vol. 75, No. 1, 1999, pp. 111–132.
    21. L.R. Long, S.R. Pillemer, R.C. Lawrence, G- H Goh, L. Neve, and G.R. Thoma,“WebMIRS: Web-based Medical Information Retrieval System” , Proceedings of SPIE Storage and Retrieval for Image and Video Databases VI, SPIE , Vol. 3312, 1998, pp. 392-403.
    22. Z. Xue, L.R. Long, S. Antani, J. Jeronimo, and G.R. Thoma,“A Webaccessible content-based cervicographic image retrieval system”, Proceedings of SPIE medical imaging, Vol. 6919, 2008, pp. 1-9.
    23. S.K. Antani, T.M. Deserno, L.R. Long, M.O. Guld, L. Neve, and G.R. Thoma,“Interfacing global and local CBIR systems for medical image retrieval”, Proceedings of the workshop on Medical Imaging Research, 2007, pp.166171.
    24. Chandan Singh* , and Pooja, “An effective image retrieval using the fusion of global and local transforms based features”, Optics & Laser Technology 44 (2012) 2249-2259
    25. Bikesh Kr. Singh, G. R Sinha, Bidyut Mazumar, and Md. Imrose Khan, “Content Based Retrieval of X-ray Images Using Fusion of Spectral Texture and Shape Descriptors”, 2010 International Conference on Advances in Recent Technologies in Communication and Computing 9789-0-7695-4201-0/10DOI 10.1.1109/ARTCom.2010.51
    26. Hai Jin, Aobing Sun, Ran Zheng, Ruhan He, Qin Zhang, Yingjie Shi, and Wen Yang, “Content and Semantic Context Based Image Retrieval for Medical Image Grid”, National High Technology Research and Development Program of China, No.2006AA02Z347 and No.2006AA01A115
    27. Soumya Dutta, Dr. Madhurima Chattopadhyay, “A Change Detection Algorithm for Medical Cell Images”, International Journal on Computer Science and Engineering (IJCSE), Feb 2011
    28. Ch. Kavitha, Dr. B. Prabhakara Roa, and Dr. A. Govandhan, “Image Retrieval based on combined features of image subblocks”, Ch. Kavitha et al. / International Journal on Computer Science and Engineering (IJCSE), ISSN: 0975-3397, Vol. 3 No. 4 Apr 2011
    29. Keysers D, et al: Statistical framework for modelbased image retrieval in medical applications. J Electron Imaging 12 (1):59–68, 2003.
    30. Müller H, et al: The Use of MedGIFT and EasyIR for ImageCLEF 2005. in Accessing Multilingual Information Repositories. 2005: Springer LNCS 4022.
    31. Cauvin JM, et al: Computer-assisted diagnosis system in digestive endoscopy. IEEE Trans Inf Technol Biomed 7 (4):256–262, 2003.

Recent Article