Affiliation:
1. Federal University of Agriculture
2. First Technical University
Abstract
Abstract
This paper is concerned with combinations of un-sharp masking, logarithmic transformation and adaptive histogram equalization techniques to arrive at a hybrid method for enhancement different types of medical image’ contrast. Motivation behind the hybridization is the need to have a contrast enhancement method that is not application specific and that can be deplored to several medical image enhancement. Four different types of medical images: X-ray, ultrasound, magnetic resonance and computer tomographic images are utilized in the evaluations of the proposed hybrid contrast enhancement method. As performance metrics, absolute mean brightness error, mean square error, peak signal to noise ratio and entropy are used. Comparative results both qualitative and quantitative, were conducted at the end of the research, and the proposed method out-perform other three (CLAHE, Fuzzy-based and Wavelet Transform-based) related selected methods in the field which used the same dataset in terms of testing accuracy. The enhancement quality of the proposed method was found to be satisfactory and can be used for any time of medical image, thus, the proposed hybrid technique produces better enhanced medical images from different medical image inputs.
Publisher
Research Square Platform LLC
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