This paper is withdrawn in Volume-6, Issue-3, 2020
Area
Electronics Engineering
Author
Gourav Chakraborty, Suman Das, Tannistha Sarkar, Souvik Kar, Sangita Roy, Dr. Saradindu Panda
Org/Univ
Narula Institute of Technology, Kolkata, West Bengal, India
Sub. Date
12 May, 2020
Paper ID
V6I3-1215
Publisher
Keywords
Breast Cancer detection, Balance Contrast Enhancement Techniques (BCET), DWT, Breast Tumor, Probabilistic Neural Network (PNN), Fuzzy c-Means (FCM)

Abstract

The goal of this paper is to detect the breast cancer using neural networks. Image processing techniques play an important role in the diagnostics and detection of diseases and monitoring the patients having these diseases. Breast Cancer detection of medical images is one of the most important elements of this field. Because of low contrast and ambiguous the structure of the tumor cells in breast images, it is still a challenging task to automatically segment the breast tumors. Our method presents an innovative approach to the diagnosis of breast tumor incorporates with some noise removal functions, followed by improvement features and gain better characteristics of medical images for a right diagnosis using balance contrast enhancement techniques (BCET). The results of second stage is subjected to image segmentation using Fuzzy c-Means (FCM) clustering method and Thresholding method to segment the out boundaries of the breast and to locate the Breast Tumor boundaries (shape, area, spatial sizes, etc.) in the images. The third stage feature extraction using Discrete Wavelet Transform (DWT). Finally the artificial neural network will be used to classify the stage of Breast Tumor that is benign, malignant or normal. The early detection of Breast tumor will improves the chances of survival for the patient. Probabilistic Neural Network (PNN) with radial basis function will be employed to implement an automated breast tumor classification.