Fuzzy inference based contextual dissimilarity histogram equalization algorithm for image enhancement

In order to overcome the drawback of the existing image enhancement technologies and further consider the pixel intensity expression error caused by imaging, a novel fuzzy inference‐based contextual dissimilarity histogram equalization (FICDHE) algorithm is proposed. The proposed algorithm is compos...

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Veröffentlicht in:International journal of imaging systems and technology 2021-06, Vol.31 (2), p.609-626
Hauptverfasser: Li, Songcheng, Lu, Junyong, Cheng, Long, Li, Xiangping
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container_title International journal of imaging systems and technology
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creator Li, Songcheng
Lu, Junyong
Cheng, Long
Li, Xiangping
description In order to overcome the drawback of the existing image enhancement technologies and further consider the pixel intensity expression error caused by imaging, a novel fuzzy inference‐based contextual dissimilarity histogram equalization (FICDHE) algorithm is proposed. The proposed algorithm is composed of three modules. In the first module, according to the calculated probable intensity intervals, the membership functions of intensity are generated. In the second one, fuzzy inference systems are established and the contextual dissimilarity of each pixel is calculated. In the third module, the contextual dissimilarity histograms are clipped and equalized. The fuzzy system established in this paper not only fully considers the uncertainty source of pixel gray level expression, but also has adaptability. The parameter selection of fuzzy inference system membership function in this algorithm does not need human intervention, but is automatically obtained based on the statistical information of image pixel gray. Its adaptability makes the algorithm more widely used and convenient. Experiments are conducted using four typical medical images and 800 images from the KNIX dataset and BrainWeb dataset. The performance of the proposed method was compared to a series of enhancement algorithms based on both subjective judgment and image quality measurement indexes. Experimental results demonstrate that the proposed algorithm has a better contrast enhancement ability and yields better performance.
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subjects Algorithms
contextual dissimilarity
contrast enhancement
Datasets
Equalization
fuzzy inference system
Fuzzy systems
histogram equalization
Histograms
Image enhancement
Image quality
Inference
Mathematical analysis
Medical imaging
Modules
Performance indices
Pixels
probable intensity interval
Quality assessment
title Fuzzy inference based contextual dissimilarity histogram equalization algorithm for image enhancement
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