Author : Dr. V. Usharani 1
Date of Publication :20th December 2017
Abstract: Medical image investigation is carried out through some intelligent ideas and techniques that require distinctive solid information and reports. Nobody is very clear about what type of information and proofs are used for the sharp finding but however some low ranking features like shapes, texture and other pixel related statistics which are taken from the images may be used for prediction. Based on this understanding medical images can be identified through the use of exclusive pattern recognition algorithms. In this paper for cancer analysis through the use of unique forms in medical pictures, varieties of tumours’ and pattern recognition process in medical image diagnosis might be studied considerably.
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