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Breast Cancer Classification using Feed Forward Back Propagation Neural Network (BPNN) Classifier

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Figure

Fig 1 Anatomy of breast
Fig 4 Dilation image
Fig 5 Input Mammogram Image                                Fig 6 Resizing of  input mammogram image
Table 1 CLASSIFICATION RESULTS FOR CANCER DETECTION

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