Novel Enrichment of Brightness-Distorted Chest X-Ray Images Using Fusion-Based Contrast-Limited Adaptive Fuzzy Gamma Algorithm

Pub Date : 2023-07-21 DOI:10.1142/s021946782450058x
K. Kiruthika, Rashmita Khilar
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Abstract

As innovations for image handling, image enrichment (IE) can give more effective information and image compression can decrease memory space. IE plays a vital role in the medical field for which we have to use a noiseless image. IE applies to all areas of understanding and analysis of images. This paper provides an innovative algorithm called contrast-limited adaptive fuzzy gamma (CLAFG) for IE using chest X-ray (CXR) images. The image dissimilarity is enriched by computing several histograms and membership planes. The proposed algorithm comprises various steps. Firstly, CXR is separated into contextual region (CR). Secondly, the cliplimit, a threshold value which alters the dissimilarity of the CXR and applies it to the histogram which, is generated by CR and then applies the fuzzification technique via the membership plane to the CXR. Thirdly, the clipped histograms are performed in two ways, i.e. it is merged using bi-cubic interpolation techniques and it is modified with membership function. Finally, the resulting output from bi-cubic interpolation and membership function are fond of using upgrade contemplate standard methods for a richer CXR image.
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基于融合的对比度受限自适应模糊Gamma算法对亮度失真胸部X射线图像的新富集
作为图像处理的创新,图像增强(IE)可以提供更有效的信息,图像压缩可以减少内存空间。IE在医学领域发挥着至关重要的作用,我们必须使用无噪声图像。IE适用于理解和分析图像的所有领域。本文提出了一种基于胸部X射线(CXR)图像的IE的创新算法,称为对比度受限自适应模糊伽玛(CLAFG)。通过计算几个直方图和隶属度平面来丰富图像的相异性。所提出的算法包括各种步骤。首先,将CXR划分为上下文区域(CR)。其次,cliplimit,一个改变CXR的相异性并将其应用于直方图的阈值,由CR生成,然后通过隶属平面将模糊化技术应用于CXR。第三,截取的直方图有两种方法,即使用双三次插值技术对其进行合并,并使用隶属函数对其进行修改。最后,双三次插值和隶属函数的结果输出喜欢使用升级设想的标准方法来获得更丰富的CXR图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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