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Optimized contrast enhancement for tumor detection
Authors:Monika Agarwal  Geeta Rani  Vijaypal Singh Dhaka
Affiliation:1. Department of School of Engineering, G. D. Goenka University, Gurugram, India;2. Department of Computer and Communication Engineering, Manipal University Jaipur, Jaipur, Rajasthan, India
Abstract:Magnetic resonance imaging (MRI) is a real assistant for doctors. It provides rich information about anatomy of human body for precise diagnosis of a diseases or disorder. But it is quite challenging to extract relevant information from low contrast and poor quality MRI images. Poor visual interpretation is a hindrance in correct diagnosis of a disease. This creates a strong need for contrast enhancement of MRI images. Study of existing literature shows that conventional techniques focus on intensity histogram equalization. These techniques face the problems of over enhancement, noise and unwanted artifacts. Moreover, these are incapable to yield the maximum entropy and brightness preservation. Thus ineffective in diagnosis of a defect/disease such as tumor. This motivates the authors to propose the contrast enhancement model namely optimized double threshold weighted constrained histogram equalization. The model is a pipelined approach that incorporates Otsu's double threshold method, particle swarm optimized weighted constrained model, histogram equalization, adaptive gamma correction, and Wiener filtering. This algorithm preserves all essential information recorded in an image by automatically selecting an appropriate value of threshold for image segmentation. The proposed model is effective in detecting tumor from enhanced MRI images.
Keywords:adaptive entropy  contrast  histogram weighted  optimum  Otsu's double threshold  particle swarm optimization  tumor
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