Please use this identifier to cite or link to this item: http://localhost:8081/xmlui/handle/123456789/14430
Title: BRAIN TUMOR SEGMENTATION USING REGION SPLIT AND MERGE TECHNIQUE
Authors: Thampi, Amala
Keywords: Brain Tumor Segmentation;Neuroimaging Machine;Brain Tissue;3-Dimensional Algorithm;BRATS 2014 Dataset
Issue Date: 2016
Publisher: Department of Computer Science and Engineering,IITR.
Abstract: Brain tumor segmentation involves detecting the presence of tumor in the available brain scan image which is obtained from any neuroimaging machine. The main goal of any tumor segmentation algorithm is to automatically segment the tumor tissues, in whole or components (tumor core and edema), with maximum accuracy despite the nature of the tumor present. This involves studying the differences between normal brain tissue in various imaging modalities and choosing the most effective modality followed by applying a suitable algorithm to segment the tumor. The diagnostic machines used these days provide complete 3-dimensional data of the subject’s brain. Hence a 3-dimensional algorithm is more suitable and effective in detecting the tumor tissues. The proposed algorithm combines the concepts of region split & merge and co-occurrence matrix to segment the tumor from the FLAIR modality slices. It also uses region growing method to further improve the result obtained in the first phase. The implementation involves the use of BRATS 2014 dataset. This is an automatic method which detects the tumor of various shapes, sizes and locations with a considerably high accuracy. The dice coefficient value to evaluate the test cases has an average value of 0.89 in case of High Grade Tumors and 0.85 in case of Low Grade Tumors.
URI: http://hdl.handle.net/123456789/14430
metadata.dc.type: Other
Appears in Collections:DOCTORAL THESES (E & C)

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