Abstract

Medical image classification is one of the most widely used methodologies in the biomedical field for abnormality detection in the anatomy of the human body. Image classification belongs to the broad category of pattern recognition in which different abnormal images are grouped into different categories based on the nature of the pathologies. Nowadays, these techniques are automated and high accuracy combined with low convergence rate has become the desired features of automated techniques. Artificial Intelligence (AI) techniques are the highly preferred automated techniques because of superior performance measures. In this chapter, the application of AI techniques for pattern recognition is explored in the context of abnormal Magnetic Resonance (MR) brain image classification. This chapter illustrates the theory behind the AI techniques and their effectiveness for practical application in medical image classification. Few experimental results are also provided to aid the conclusions. Algorithmic approach of the AI techniques such as neural networks, fuzzy theory, and genetic algorithm are also dealt in this chapter.

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