COMPARISON OF MULTIMODAL TUMOR IMAGE SEGMENTATION TECHNIQUES
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Abstract
Use of multimodal imaging for the classification of tumors in human body is on the rise. Segmentation is an important step of such classification process. There is need of carrying out a benchmark study by considering the leading segmentation techniques. This may help researchers in future to select a better segmentation technique.
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