
REDUCE OVERLAPPING IN MAMMOGRAPHY BY DEEP LEARNING CLASSIFICATION
USING CONVOLUTION NEURAL NETWORK
LAP Lambert Academic Publishing
Published on 30. September 2021
Book
Paperback/Softback
72 pages
978-620-4-20807-7 (ISBN)
Description
Breast cancer is the leading cause of cancer death among women. Screening mammography is the only method currently available for the reliable detection of early and potentially curable breast cancer. Research indicates that the mortality rate could decrease by 30% if women age 50 and older have regular mammograms. In this dissertation, we propose a new full-field mammogram analysis method focusing on characterizing and identifying normal mammograms. A mammogram is analyzed region by region and is classified as normal or abnormal. The methods for extracting features are presented in this thesis which are used to distinguish normal and abnormal regions of a mammogram. In this book, convolution neural network classifier is used to boost the classification performance. This classifier performs better than previous classifiers. In that it shows more accuracy than the others classifiers, the misclassification rate of normal mammograms as abnormal.This approach performs good on overlapping problem.
More details
Language
English
Dimensions
Height: 220 mm
Width: 150 mm
Thickness: 5 mm
Weight
125 gr
ISBN-13
978-620-4-20807-7 (9786204208077)
Schweitzer Classification
Persons
Working in the field of Image Processing, my major research area includes disease detection through various machine learning models.