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Adaptive Hierarchy Segmentation of Bone Tumor Using Neural Network in MATLAB

Hemant Markhande, Prajwal Selokar, Nisha Raut, Ateef Ahmad, Vijay V. Chakole

Abstract


A tumor is an abnormal growth of new cells that can developed in any of the body's organs. In past few decades, there are numerous kinds of tumors that are found in the human body like Bone tumor, Brain tumor, Breast tumor, etc. that are detected physically by doctors, but because of low pixel quality and noise to the X-ray images of infected body parts, the tumor detection is a complex task and it also time taking. This proposed work is based Convolution Neural Network (CNN) technology collaborated with the MATLAB with the help of Digital X-rays

 

Keywords: Tumor, CNN, digital radiography

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References


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