Microcalcification Detection by Morphology, Singularities of Contourlet Transform and Neural Network

نویسندگان

  • Rekha Lakshmanan
  • Vinu Thomas
چکیده

-The proposed method presents a new classification approach to microcalcification detection in mammograms using morphology, Contourlet Transform and Artificial Neural Network. Early detection of breast cancer is possible by enhancing microcalcification features obtained using morphology and singularities of Contourlet Transform. The significant edge information indicating the relevant features in various decomposition levels are preserved while removing the artifacts. These features are utilized to detect microcalcifications by classification employing the Back Propagation Neural Network. Target to background contrast ratio, Contrast and Peak Signal to Noise ratio are considered for performance evaluation of the enhancement algorithm. The accuracy of the classification algorithm is 95%. The miniMIAS mammographic database is employed for testing the accuracy of the proposed method and the results are promising. Keywords--Breast Cancer, Back Propagation Neural Network, Contourlet Transform, Morphology

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تاریخ انتشار 2013