A Review on Breast Cancer Detection Using Ultrasound Images
Keywords:
Breast Cancer, Classification, Segmentation, Region Of InterestAbstract
In order to diagnose the breast cancer radiologists prefer to use mammogram and breast ultrasound imaging techniques. To identify cancer, the Region of Interest (ROI) is mapped in the tumor location. The segmentation process becomes difficult if the image is noisy, blurred and of low contrast. Pre-processing is the first step done to enhance the contrast and to remove the unwanted information from the image. Various segmentation techniques have been proposed in the literature to identify the Region of Interest (ROI) and to analyze the size and the shape of the tumor. This paper provides a detailed review of these techniques, particularly for ultrasound images.
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