Classifying content-based Images using Self Organizing Map Neural Networks Based on Nonlinear Features
نویسندگان
چکیده
Classifying content-based Images using Self Organizing Map Neural Networks Based on Nonlinear Features Ebrahim Parcham Electrical and Computer Engineering Department, Tehran Science & Research University Tehran, Iran Email: [email protected] Monireh Pournazari Department of Electrical Computer and BiomedicalEngineering,Qazvin Branch Islamic Azad University Qazvin,Iran Email: [email protected] Mina Hojati Department of Electrical Computer and BiomedicalEngineering,Qazvin Branch Islamic Azad University Qazvin,Iran Email: [email protected] Mehrdad Jalili Monir Shatel Isp technical Employer Email: [email protected] Bahareh Mirzaei Sohrevardi private high educational institute,school of computer engineering Qazvin,Iran Email: [email protected]
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