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Convolution Neural Network Based Brain Tumour Detection Using Efficient Classification Technique – A Robotics Approach

Mr. B. Vinod, Dr. M. Subas Chandra Bose

Abstract


Medical image processing has become an important and essential element in the fields of biomedical and biological research such as tumor recognition and detection process is automatically determining the volume of a heart chamber and screening the brain scans for probable damages and diseases. Various techniques and methods for automatic detection and recognition of brain tumor which involved many steps viz. image acquisition through scan, segmentation of images, classification of images using neural network, optimization of developed images and identification of exact tumor category. This research paper dealt with a novel approach to identify and segment brain related tumors. The recognition and detection followed by segmentation of brain tumors can be formulized as novelty detection by using a new methodology of Hybrid probability based segmentation model which is straightened and bound. The main purpose and objective of this proposed novel method is to use precisely to identify the existence of tumour cells in brain images as an premature and early indication of malignant cells that may cause life threat and fatal to human beings.


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References


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