Diagnosing Affected Organs Using Automated Iridology System
Iridology is the study of the iris of the eye for medical purposes. It is a preventive medicine since it can warn a person's tendency towards an apparent disease. Cleansing and healing of the body can be verified from changes in the iris. This study aims to design and develop an iris recognitio...
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QA71-90 Instruments and machines Albusaidi, Hilal Nasser Diagnosing Affected Organs Using Automated Iridology System |
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Iridology is the study of the iris of the eye for medical purposes. It is a preventive medicine since it can warn a person's tendency towards an apparent disease. Cleansing and healing of the body can be verified from changes in the iris. This study aims to design and develop an iris recognition system for automating iridology. The project involves 3 main steps: applying image processing techniques on eye image for data acquisition, collecting the database which is necessary for the iridology analysis and recognizing the affected organ in the body through iris analysis by using neural networks techniques. The image processing techniques are utilized for extracting eye
images. A chart of right and left eyes has been acquired through the Internet and approved by an iridologist: Then, the extracted iris image is compared to the chart to determine the affected organ. Neural network with Back propagation is used to match the iris images with affected organ. A total of 159 images retrieved from internet was preprocessed and fed into NN engine. The Backprobagation network succeeded and getting best results because it attained to 96.2 % correction percentage. |
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Albusaidi, Hilal Nasser |
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Albusaidi, Hilal Nasser |
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Albusaidi, Hilal Nasser |
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Diagnosing Affected Organs Using Automated Iridology System |
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Diagnosing Affected Organs Using Automated Iridology System |
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Diagnosing Affected Organs Using Automated Iridology System |
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Diagnosing Affected Organs Using Automated Iridology System |
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Diagnosing Affected Organs Using Automated Iridology System |
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diagnosing affected organs using automated iridology system |
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Universiti Utara Malaysia |
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College of Arts and Sciences (CAS) |
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2009 |
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https://etd.uum.edu.my/1643/1/Hilal_Nasser_Albusaidi.pdf https://etd.uum.edu.my/1643/2/1.Hilal_Nasser_Albusaidi.pdf |
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my-uum-etd.16432022-04-21T03:15:57Z Diagnosing Affected Organs Using Automated Iridology System 2009-05 Albusaidi, Hilal Nasser College of Arts and Sciences (CAS) College of Arts and Sciences QA71-90 Instruments and machines Iridology is the study of the iris of the eye for medical purposes. It is a preventive medicine since it can warn a person's tendency towards an apparent disease. Cleansing and healing of the body can be verified from changes in the iris. This study aims to design and develop an iris recognition system for automating iridology. The project involves 3 main steps: applying image processing techniques on eye image for data acquisition, collecting the database which is necessary for the iridology analysis and recognizing the affected organ in the body through iris analysis by using neural networks techniques. The image processing techniques are utilized for extracting eye images. A chart of right and left eyes has been acquired through the Internet and approved by an iridologist: Then, the extracted iris image is compared to the chart to determine the affected organ. Neural network with Back propagation is used to match the iris images with affected organ. A total of 159 images retrieved from internet was preprocessed and fed into NN engine. The Backprobagation network succeeded and getting best results because it attained to 96.2 % correction percentage. 2009-05 Thesis https://etd.uum.edu.my/1643/ https://etd.uum.edu.my/1643/1/Hilal_Nasser_Albusaidi.pdf text eng public https://etd.uum.edu.my/1643/2/1.Hilal_Nasser_Albusaidi.pdf text eng public masters masters Universiti Utara Malaysia Abhyankar, A., Hornak, L. & Schuckers, S. (2005). Off-angle iris recognition using biorthogonal wavelet network system, Fourth IEEE Workshop on Automatic Identification Advanced Technologies 2005. 17-18 Oct. 2005, Page(s):239 - 244 Abiantun, R., Savvides, M. & Khosla, P. (2005). Automatic eye-level height system for face and iris recognition systems, Fourth IEEE Workshop on Automatic Identification Advanced Technologies 2005. 17-18 Oct. 2005, Page(s):155-159 Adamopoulos, K. (2000). Application of Back-Propagation Learning Algorithms on Multilayer Perceptrons. University of Bradford Department of Computing. Afaq Husain, S. & Shigeru, E. (2000).Use of neural networks for feature based recognition of liver region on CT images, Proceedings of the 2000 IEEE Signal Neural Networks for Signal Processing X 2000. 11-13 Dec. 2000, Page(s):831 - 840, vo1.2 Arnall, A.H,(2003). Nanotechnology, Artificial Intelligence and Robotics; A technical, political and institutaional map of emerging technologies. Greenpeace Environmental Trust, ISBN 1-903907-05-5. Amer, R. (2001). Design a software application for Iris Identification by Artificial Neural Network. MSc. Thesis. Computers and Mathematical Sciences College, University of Mosul, June 2001. Anna, W., Yu, C., Jie, W. & Zhangxinhua, (2007). Iris Recognition Based on Wavelet Transform and Neural Network, IEEE/ICME International Conference on Complex Medical Engineering 2007(CME 2007). 23-27 May 2007, Page(s):758-761 Blackburn, D., Miles, C., Wing, B. & Shepard, K. (2006). Iris Recognition, Retrieved from: http://www.biometrics.gov on Sep, 1,2008 Bamberger, R. (1994). Portable tools for image processing instruction, Proceedings of IEEE InternationaI Conference on Image Processing 1994 (ICIP-94). 13- 16 Nov. 1994, Page(s):525 - 529, vol. 1 Bashir, F., Casaverde, P., Usher, D. & Friedman, M. (2008). Eagle-Eyes: A System for Iris Recognition at a Distance, IEEE Conference on Technologies for- Homeland Security 2008. 12- 13 May 2008, Page(s):426 - 431 Bashir, F., Usher, D., Casaverde, P. & Friedman, M. (2008). Video Surveillance for Biometrics: Long-Range Multi-biometric System, IEEE Fifh lnternational Conference on Advanced Video and Signal Based Surveillance 2008 (AVSS 08). 1 - 3 Sept. 2008, Page(s): 175 - 182 Basit, A. & Javed, M. (2007). Iris localization via intensity gradient and recognition through bit planes, International Conference on Machine Vision 2007 (ICMV 2007). 28-29 Dec. 2007, Page(s):23 - 28 Belkada, S., Cristea, A. I. & Okamoto, T. (2000). Adaptive Learning Environment for Designing Neural Networks. 2000, IEEE Boddeti, N. & Kumar, B. (2008). Extended Depth of Field Iris Recognition with Correlation Filters, 2nd IEEE International Conference on Biometrics: Theory, Applications and Systems 2008 (BTAS 2008). Sept. 29 2008-Oct. 1 2008, Page(s):l - 8 Boyce, C., Ross, A., Monaco, M., Hornak, L.& Li, X. (2006). Multispectral Iris Analysis: A Preliminary Study51, Conference on Computer Vision and Pattern Recognition Workshop 2006. 17-22 June, 2006 Page(s):51 - 51 Chien, S. (1994). Automated synthesis of image processing procedures for a large-scale image database, Proceedings of International Conference on Image Processing 1994 (ICIP-94). 13-16 Nov. 1994, Page(s):796 - 800, vo1.3 Chihoub, A. & Bai, Y. (2000). An imaging library for a digital still camera, IEEE Transactions on Consumer Electronics, Nov. 2000, Volume 46, Page(s):1073 - 1081 Cho, D., Park, K., Rhee, D., Kim, Y. & Yang, J. (2006). Pupil and Iris Localization for Iris Recognition in Mobile Phones, Seventh ACIS International Conference on Software Engineering, Artificial Intelligence, Networking, and Parallel/Distributed Computing 2006 (SNPD 2006). 19-20 June 2006, Page(s): 197 - 201. Conti, V., Milici, G., Sorbello, F.& Vitabile, S. (2007). Novel Iris Recognition System based on Micro-Features, IEEE Workshop on Automatic Identification Advanced Technologies 2007. 7-8 June 2007, Page(s):253 - 258 Daugman; J. (2004). How Iris Recognition Works. Retrieved from: http://www.cl.cam.ac.uk/~jgdlOOO/irisrecog.pdf on Sep,2,2008 Demirel, H.; Anbarjafari, G. (2008). Iris Recognition System Using Combined Colour Statistics, IEEE International Symposium on Signal Processing and Information Technology 2008 (ISSPIT 2008). 16- 19 Dec. 2008, Page(s): 175 - 179 Dong, W., Sun, Z. & Tan, T. (2008). How to make iris recognition easier?, 19th International Conference on Pattern Recognition 2008 (ICPR 2008). 8-11 Dec. 2008, Page(s): 1-4 Dubois, J. & Mattavelli, M. (2003). Embedded co-processor architecture for CMOS based image acquisition, Proceedings of International Conference on Image Processing, 2003 (ICIP 2003). 14- 17 Sept. 2003, Page(s):591-594, vo1.3 Elouardi, A., Bouaziz, S., Dupret, A., Lacassagne, L., Klein, J. & Reynaud, R. (2007). Image Processing Vision Systems: Standard Image Sensors Versus Retinas, IEEE Transactions on Instrumentation and Measurement. Oct. 2007 Page(s): 1675 - 1687, vol. 56 Elsherief, S., Allam, M. & Fakhr, M. (2006). Biometric Personal Identification Based on Iris Recognition, The 2006 International Conference onComputer Engineering and Systems. 5-7 Nov. 2006, Page(s):208 - 213 Fadeyev, V. & Haber, C. (2003). Reconstruction of Mechanically Recorded Sound by Image Processing, Retrieved from: http://www-cdf.lbl.gov/-av/JAES-paper-LBNL.pdf on Aug, 21,2008 Fadzilah Siraj, Nooraini Yusoff and Lam Choong Kee (2006). Emotion Classification Using Neural Network, Proceedings of International Conference on Informatics and Computing 2006 (ICOCI '06). 6 - 8 June, 2006. Kuala Lumpur, Malaysia. 6 - 8 June, 2006. Fujimasa, I., Nakazawa, H. & Miyasaka,E.(1998). Development of an image processing software for medical thermogram analysis using a commercially available image processing system, Proceedings of the 20th Annual International Conference of the IEEE Engineering in Medicine and Biology Society 1998. 29 0ct.-1 Nov. 1998, Page(s):956 - 958, vo1.2 Goller, A. & Leberl, F. (2000). Radar image processing with clusters of computers, Proceedings of Aerospace Conference (2000 IEEE). 18-25 March 2000, Page(s):281 - 285, vo1.3 Gour, B., Bandopadhayaya, T. K. & Sharma, S. (2008). Fingerprint Feature Extraction using Midpoint Ridge Counter Method and Neural Network. IJCSNS International Journal of Computer Science and Network Security,Vol.8,No.7,July, 2008. He, Z., Sun, Z., Tan, T. & Qiu, X. (2008). Enhanced usability of iris recognition via efficient user interface and iris image restoration, 15th IEEE International Conference on Image Processing 2008 (ICIP 2008). 12- 15 Oct. 2008, Page(s):261 - 264 Hemalatha, T., Athisha, G. & Jeyanthi, S. (2008). Dynamic Web Service Based Image Processing System, 16th International Conference on Advanced Computing and Communications 2008 (ADCOM 2008). 14-17 Dec. 2008, Page(s):323 - 328 Hong, J.Y. & Wang, M.D. (2004). High speed processing of biomedical images using programmable GPU, International Conference on Image Processing 2004 (ICIP'04). 24-27 Oct. 2004, Page(s):2455 - 2458, Vol. 4 Huang, J. Wang, Y., Tan, T. & Cui, J. (2004). A new iris segmentation method for recognition, Proceedings of the 17th International Conference on Pattern Recognition 2004 (ICPR 2004). 23-26 Aug. 2004, Page(s):554 - 557, Vo1.3 Ives, R., Bonney, B. & Etter, D. (2005). Effect of Image Compression on Iris Recognition, Proceedings of the IEEE Instrumentation and Measurement Technology Conference 2005 (IMTC 2005). 16-19 May 2005, Page(s):2054 - 2058 Kang, J. & Doraiswami, R. (2003). Real-time image processing system for endoscopic applications, Canadian Conference on Electrical and Computer Engineering 2003 (IEEE CCECE 2003). 4-7 May 2003, Page(s): 1469 - 1472, vo1.3 Koutsofios, K., Nikoletopoulos, S., Episkopakis, A. & Kandarakis, I. (2006). Sequential Contrast Enhancement of Portal Images: Study of the Influence on Image Quality and Clinical Usefulness, Nuclear Science Symposium Conference Record 2006. Oct. 29 2006-Nov. 1 2006, Page(s):2629 - 2631 Kyaw, K. (2009). Iris Recognition System Using Statistical Features for Biometric Identification, International Conference on Electronic Computer Technology 2009. 20-22 Feb. 2009, Page(s):554 - 556 Lee, S., Lee, D., Jin, S., Jeon, J. & Kwon, K. (2007). MicroBlaze based image processing system using IEEE1394a, International Conference on Control, Automation and Systems 2007 (ICCAS 07). 17-20 Oct. 2007, Page(s):644 - 648 Li, Z., Zhu, X. & Wang, Y. (2008). A Study on Designing Iris Recognition System Based on TMS320DM642, IEEE International Conference on Networking, Sensing and Control 2008 (ICNSC 2008). 6-8 April 2008, Page(s):1395 - 1399 Liam, L., Chekima, A., Fan, L. & Dargham, J. (2002). Iris recognition using self-organizing neural network, Student Conference on Research and Development 2002(SCOReD 2002). 16- 17 July 2002, Page(s): 169 - 172 Liu, X., Bowyer, K. & Flynn, P. (2005). Experiments with an improved iris segmentation algorithm, Fourth IEEE Workshop on Automatic Identification Advanced Technologies 2005. 17- 18 Oct. 2005, Page(s): 118 - 123 Ludwig, A. (1994). An image processing language for digital radiography systems, Proceedings of Seventh Symposium on Computer-Based Medical Systems (1994 IEEE). 10-12 June 1994, Page(s):276 - 280 Ma, L., Tan, T., Wang, Y. & Zhang, D. (2003). Personal identification based on iris texture analysis, IEEE Transactions on Pattern Analysis and Machine Intelligence. Dec. 2003, Page(s): 1519 - 1533, vol. 25 Matey, J., Naroditsky, O., Hanna, K., Kolczynski, R., LoIacono, D., Mangru, S., Tinker, M., Zappia, T. & Zhao, W. (2006). Iris on the Move: Acquisition of Images for Iris Recognition in Less Constrained Environments, Proceedings of the IEEE. Nov. 2006 Page(s): 1936 - 1947, vol. 94 Meng, H. & Xu, C. (2006). Iris Recognition Algorithms Based on Gabor Wavelet Transforms, Proceedings of the 2006 IEEE International Conference on Mechatronics and Automation. 25-28 June 2006, Page(s): 1785 - 1789 Messner, R. & Bloomfield, J. (1996). A modular advanced pipeline image processing accelerator, Proceedings of Aerospace Applications Conference 1996 (1996 IEEE). 3- 10 Feb. 1996, Page(s):407 - 422, vo1.4 Min, T. & Park, R. (2008). Comparison of eyelid and eyelash detection algorithms for performance improvement of iris recognition, 15th IEEE International Conference on Image Processing 2008(ICIP 2008). 12-15 Oct. 2008, Page(s):257-260 Miyazawa, K., Ito, K., Aoki, T., Kobayashi, K. & Katsumata, A. (2006). An Iris Recognition System Using Phase-Based Image Matching, IEEE International Conference on Image Processing 2006. 8-11 Oct. 2006, Page(s):325 - 328 Miyazawa, K., Ito, K., Aoki, T., Kobayashi, K. & Nakajima, H. (2005). An efficient iris recognition algorithm using phase-based image matching, IEEE International Conference on Image Processing 2005 (ICIP 2005). 11-14 Sept. 2005 Page(s): 49-52, vol. 2 Miyazawa,K.,Ito,K.,Aoki,T.,Kobayashi,K.& Nakajima, H(2006) An Implementation-Oriented Iris Recognition Algorithm Using Phase-Based Image Matching, International Symposium on Intelligent Signal Processing and Communications 2006 (ISPACS 06). 12-15 Dec. 2006, Page(s):231-234 Miyazawa, K., Ito, K., Aoki, T., Kobayashi, K. & Nakajima, H. (2008). An Effective Approach for Iris Recognition Using Phase-Based Image Matching, IEEE Transactions on Pattern Analysis and Machine Intelligence. Oct. 2008, Page(s): 1741 - 1756, vol. 30 Munemoto,T.,Yung-hui Li & Savvides,M.(2008)."Hallucinating Irises" - Dealing with Partial & Occluded Iris Regions, 2nd IEEE International Conference on Biometrics: Theory, Applications and Systems 2008 (BTAS 2008). Sept. 29 2008- Oct. 1 2008, Page(s): 1 - 6. Muramatsu, S., Kobayashi, Y., Araoka, M., Naoi, S., Kaneta, T., Hirose, K. & Onizawa, S.(1998). Image processing LSI "ISP-IV" based on local parallel architecture and its applications, Proceedings of International Conference on Image Processing 1998(ICIP 98), 4-7 Oct. 1998, Page(s): 1000 - 1004, vo1.3 Nabti, M. & Bouridane, A. (2007). An effective iris recognition system based on wavelet maxima nad Gabor filter bank, 9th International Symposium on Signal Processing and Its Applications 2007 (ISSPA 2007). 12-15 Feb. 2007, Page(s):l - 4 Ng, R., Tay, Y. & Mok, K. (2008). Iris recognition algorithms based on texture analysis, International Symposium on Information Technology 2008 (ITSim 2008). 26-28 Aug. 2008, Page(s): 1 - 5 Park, S.-B., Teuner, A. & Hosticaka, B.J. (1998). A motion detection system based on a CMOS photo sensor array, Proceedings of International Conference on Image Processing 1998 (ICIP 98). 4-7 Oct. 1998, Page(s):967 - 971, vo1.3 Pesek, D. (2005) HOLISTIC IRIDOLOGY, Retrieved from: http://www.instituteofholisticnutrition.com/PDF/Holistic%20Iridology%208- 17-O5.pdf on Aug, 19,2008 Popovici, A. & Popovici, D. (2002). Cellular Automata in Image Processing, Retrieved from: http://www.nd.edu/~mtns/papers/17761_4.pdf on Aug, 21, 2008 Proenca, H. & Alexandre, L. (2006). Iris Recognition: Measuring Feature's Quality for the Feature Selection in Unconstrained Image Capture Environments, Proceedings of IEEE International Conference on Computational Intelligence for Homeland Security and Personal Safety 2006. 16-17 Oct. 2006, Page(s):35 - 40 Proenca, H. & Alexandre, L.A. (2007). Toward Noncooperative Iris Recognition: A Classification Approach Using Multiple Signatures, IEEE Transactions on Pattern Analysis and Machine Intelligence. April 2007, Page(s):607 - 612, vol. 29 Roizenblatt, R. Schor, P. Dante, F. Roizenblatt, J. Belfort, R. (2004). "Iris recognition as a biometric method after cataract surgery", BioMedical Engineering 3:2, pp.1-7. Roy, K. & Bhattacharya, P. (2007). Application of Multi-objective Genetic Algorithm and asymmetrical Support Vector Machine to improve the reliability of an iris recognition system, IEEE International Conference on Systems, Man and Cybernetics 2007. 7- 10 Oct. 2007, Page(s): 1952 - 1957. Samsudin, R., Saad, P. & Shabri, A.(2008). A Comparison of Neural Network, Arima Model and Multiple Regression Analysis in Modeling Rice Yields. International Journal of Soft Computing Applications, ISSN: 1453-2277 Issue 3 (2008), pp. 113- 127. Sarma, D. J. & Sarma, S. G. (2000). Neural Networks and their Applications in Industry. ESIDOC Bulletin of Information Technology, vol. 20, Nos. 1 & 2, January & March 2000, pp. 29 - 36. Schuckers, S., Schmid, N., Abhyankar, A., Dorairaj, V., Boyce, C.K. & Hornak, L. (2007). On Techniques for Angle Compensation in Nonideal Iris Recognition, IEEE Transactions on Systems, Man, and Cybernetics. Oct. 2007, Page(s): 1176 - 1190, vol. 37 Smith, S. W. (2008). The Scientist and Engineer's Guide to Digital Signal Processing. California Technical Publishing. ISBN 0-9660176-3-3, Ch. 23, Second Edition, 1999, Retrieved from: http://www.dspguide.com/pdfbook.htm ,On July, 30. Sohi, D.S. & Devgan, S.S. (2000). Application to enhance the teaching and understanding of basic image processing techniques, Proceedings of the IEEE Southeastcon 2000. 7-9 April 2000, Page(s):413 - 416 Sudha, N., Puhan, N., Xia, H. & Jiang, X. (2007). Iris recognition on edge maps, 6th International Conference on Information, Communications & Signal Processing 2007. 10-13 Dec. 2007, Page(s): 1 - 4 Sung, E., Chen, X., Zhu, J. & Yang, J. (2002). Towards non-cooperative iris recognition systems, 7th International Conference on Control, Automation, Robotics and Vision 2002 (ICARCV2002). 2-5 Dec. 2002 Page(s):990 - 995 vo1.2 Taniguchi, R., Amamiya, M. & Kawaguchi, E.(1989). Knowledge-based image processing system: IPSSENS-11, Third International Conference on Image Processing and its Applications. 18-20 Jul 1989, Page(s):462 - 466 Uhring, R. E. (1995). Introduction to Artificial Neural Network. 1995, IEEE Wang, Y. & Han, J. (2005). Iris recognition using independent component analysis, Proceedings of 2005 International Conference on Machine Learning and Cybernetics 2005. 18-21 Aug. 2005, Page(s):4487-4492, Vol.7 Whelan, R. (2004). Understanding from Science Treatment with Nature, Retrieved from: http://www.rjwhelan.co.nz/services.html,On July, 30,2008 Wibawa, A. & Puronomo, M. (2006). Early Detection on the Condition of Pancreas Organ as the Cause of Diabetes Mellitus by Real Time Iris Image Processing. Retrieved from: http://ieeexplore.ieee.org/stamp/stamp.jsp?arnumber=O4l45566 on Aug, 20,2008. Williams, L. (2000). Equine Iridology. A valuable tool, Retrieved from: http://www.naturalhorsetalk.com/PDF/Equine%2OIridology%2Oa%2Ovaluable%20tool.pdf on sep, 19, 2008 Wolfe, F. (2002). Irido1ogy:A Window Into Health, Retrieved from:http://www.healingfeats.com/iridart.htm on Aug,20,2008 Wu, D.M., Guan, L., Lau, G. & Rahija, D. (1995). Design and implementation of a distributed real-time image processing system, Proceedings of First IEEE International Conference on Engineering of Complex Computer Systems, 1995. Held jointly with 5th CSESAW, 3rd IEEE RTAW and 20th IFAC/IFIP WRTP. 6-10 Nov. 1995,Page(s):266 - 269 Ye, X., He, Z. & Zhang, W. (2008). A data hiding method for improving the self-security of iris recognition, International Conference on Communications, Circuits and Systems 2008 (ICCCAS 2008). 25-27 May 2008, Page(s):762-766 |