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Computer Vision for Skin Cancer Diagnosis and Recognition using RBF and SOM
Abrham Debasu Mengistu, Dagnachew Melesew Alemayehu
Pages - 311 - 319 | Revised - 30-11-2015 | Published - 31-12-2015
Published in International Journal of Image Processing (IJIP)
MORE INFORMATION
KEYWORDS
SOM, RBF, KNN, Digital Image Processing, Dermofit.
ABSTRACT
Human skin is the largest organ in our body which provides protection against heat, light, infections and injury. It also stores water, fat, and vitamin. Cancer is the leading cause of death in economically developed countries and the second leading cause of death in developing countries. Skin cancer is the most commonly diagnosed type of cancer among men and women. Exposure to UV rays, modernize diets, smoking, alcohol and nicotine are the main cause. Cancer is increasingly recognized as a critical public health problem in Ethiopia. There are three type of skin cancer and they are recognized based on their own properties. In view of this, a digital image processing technique is proposed to recognize and predict the different types of skin cancers using digital image processing techniques. Sample skin cancer image were taken from American cancer society research center and DERMOFIT which are popular and widely focuses on skin cancer research. The classification system was supervised corresponding to the predefined classes of the type of skin cancer. Combining Self organizing map (SOM) and radial basis function (RBF) for recognition and diagnosis of skin cancer is by far better than KNN, Naïve Bayes and ANN classifier. It was also showed that the discrimination power of morphology and color features was better than texture features but when morphology, texture and color features were used together the classification accuracy was increased. The best classification accuracy (88%, 96.15% and 95.45% for Basal cell carcinoma, Melanoma and Squamous cell carcinoma respectively) were obtained using combining SOM and RBF. The overall classification accuracy was 93.15%.
A Morrone, Skin Cancer in Ethiopia,21st world congress of dermatology, 2007 | |
Aswin.R.B, J. Abdul Jaleel, Sibi Salim, Implementation of ANN Classifier using MATLAB for Skin Cancer Detection,2013 | |
Cancer in Africa, World Health Organization, International Agency for Research on cancer; 2009. | |
Catarina Barata, Margarida Ruela, Mariana Francisco, Teresa Mendonça, and Jorge S. Marques Detection of Melanomas in Dermoscopy Images Using Texture and Color Features | |
Dr. J. Abdul Jaleel, Sibi Salim, Aswin.R.B, Diagnosis and Detection of Skin Cancer Using Artificial Intelligence | |
Dr. J. Abdul Jaleel, Sibi Salim, Aswin.R.B, Artificial Neural Network Based Detection of Skin Cancer,2012 | |
http://www.cancer.org/cancer/skincancer | |
http://www.cdc.gov/cancer/skin/statistics/ | |
http://www.skincancer.org/skin-cancer-information/skin-cancer-facts | |
http://www.skincancer.org/skin-cancer-information/skin-cancer-facts | |
http://www.skincancer.org/skin-cancer-information/skin-cancer-facts | |
Ilias Maglogiannis, Dimitrios I. Kosmopoulos, Computational vision systems for the detection of malignant melanoma | |
Ioana Dumitrache, Alina Elena Sultana, and Radu Dogaru Automatic Detection of Skin Melanoma from Images using Natural Computing Approaches | |
Ioana Dumitrache, Alina Elena Sultana, and Radu Dogaru Automatic Detection of Skin Melanoma from Images using Natural Computing Approaches | |
John Breneman towards early stages of malignant melanoma detection Using Consumer Mobile Devices | |
Lin Li, Qizhi Zhang, Yihua Ding, Huabei Jiang, Bruce H Thiersand, Automatic diagnosis of melanoma using machine learning methods | |
Luís Filipe Caeiro M argalho Guerra Rosado, Automatic System for Diagnosis of Skin Lesions Based on Dermoscopic Images | |
Luís Filipe Caeiro M argalho Guerra Rosado, Automatic System for Diagnosis of Skin Lesions Based on Dermoscopic Images | |
Mariam A. Sheha , Mai S. Mabrouk , Amr Sharawy, Automatic Detection of Melanoma Skin Cancer using Texture Analysis | |
Mariam A.Sheha and Mai S.Mabrouk Automatic Detection of Melanoma Skin Cancer using Texture Analysis | |
Nandini M.N., M.S.Mallikarjunaswamy, Detection of Melanoma Skin Disease using Dermoscopy Images | |
Nilkamal S. Ramteke and Shweta V. Jain ABCD rule based automatic computer-aided skin cancer detection using MATLAB | |
Peyman Sabouri, Hamid GholamHosseini, John Collins, Border Detection of Mela noma Skin Lesions, 2013 | |
Santosh Achakanalli & G. Sadashivappa, Skin Cancer Detection And Diagnosis Using Image Processing And Implementation Using Neural Networks And ABCD Parameters | |
Santosh Achakanalli and G. Sadashivappa Skin Cancer Detection and Diagnosis Using Image Processing and Implementation Using Neural Networks and ABCD Parameters | |
Sarika Choudhari, Seema Biday, Artificial Neural Network for SkinCancer Detection | |
Snehal Salunke, Survey on Skin lesion segmentation and classification,2014 | |
T Y Satheesha,, Dr. D Sathya Narayana, Dr. M N Giriprasad, review on early detection of melanoma:2012 | |
Tinku Acharya and Ajoy K. Ray, Image Processing Principles and Applications, Jhon Wiley, 2005. | |
William K. Pratt: Digital image processing, PIKS Scientific inside, John Wiley, 4th Edition, 2007. | |
William K. Pratt: Digital image processing, PIKS Scientific inside, John Wiley, 4th Edition, 2007 | |
World Health Organization, the global burden of disease: 2008 Update Geneva: World Health Organization,2008 | |
Mr. Abrham Debasu Mengistu
Bahir Dar University - Ethiopia
abrhamd@bdu.edu.et
Mr. Dagnachew Melesew Alemayehu
Bahir Dar University - Ethiopia
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