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首页> 外文期刊>Applied Soft Computing >Parameter-free fuzzy histogram equalisation with illumination preserving characteristics dedicated for contrast enhancement of magnetic resonance images
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Parameter-free fuzzy histogram equalisation with illumination preserving characteristics dedicated for contrast enhancement of magnetic resonance images

机译:与磁共振图像对比度增强的照明保存特性的无参数模糊直方图均衡

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Low-field MRI scanners do not offer sufficient image contrast. Hence, offline algorithms for improving image contrast are often needed. Even though modified versions of Histogram Equalisation (HE) are extensively used on panoramic images, they have serious limitations. Most of such modified algorithms have multiple operational parameters which need to be tuned manually. Parameter-free modifications lag in terms of illumination-preserving features. To address these issues, a novel formulation of Parameter-free Fuzzy Histogram Equalisation (PFHE) algorithm with good illuminationpreserving characteristics, dedicated for contrast enhancement of MRI is introduced in this paper. In PFHE, a Homogeneity Fuzzy Sub-set (HFS) and its fuzzy complement, termed as Texture Fuzzy Sub-set (TFS) are computed based on the fuzzy similarity of the pixels in the input image with their eight-connected neighbours. Following this, an approximate output is estimated by applying a transformation similar to the histogram equalisation on the Fuzzy Textural Histogram (FTH) derived from TFS. The final output is computed as a nonlinear combination of the approximate output and the input image. The fuzzy weighting vectors used in the nonlinear combination are derived from the HFS. Both Qualitative and quantitative evaluations reveal that the PFHE is superior to Bi-Histogram Equalisation (BHE), Weighted Threshold Histogram Equalisation (WTHE), Contrast Limited Adaptive Histogram Equalisation (CLAHE), Non-parametric Modified Histogram Equalisation (NMHE), Exposurebased Sub-Image Histogram Equalisation (ESIHE), Median-Mean Based Sub-Image-Clipped Histogram Equalisation (MMSICHE) and Dominant Orientation-based Texture Histogram Equalisation (DOTHE), in terms of ability to preserve diagnostically significant features in the MR image. (C) 2020 Elsevier B.V. All rights reserved.
机译:低场MRI扫描仪不提供足够的图像对比。因此,通常需要用于改善图像对比的离线算法。尽管修改了直方图均衡(HE)的修改版本广泛用于全景图像,但它们具有严重的限制。大多数这种修改的算法具有多种需要手动调谐的操作参数。参数 - 在照明保存功能方面的无参数修改滞后。为了解决这些问题,本文介绍了具有良好的照明预验证特性的无参数模糊直方图均衡(PFHE)算法的新颖,专用于MRI的对比度增强。在PFHE中,基于用其八个连接的邻居的输入图像中的像素的模糊相似性来计算称为纹理模糊子集(TFS)的同质性模糊子集(HFS)及其模糊补充。在此之后,通过应用类似于从TFS的模糊纹理直方图(FTH)上的直方图均衡,估计近似输出。最终输出被计算为近似输出和输入图像的非线性组合。非线性组合中使用的模糊加权载体来自HFS。定性和定量评估揭示了PFHE优于双直方图均衡(BHE),加权阈值直方图均衡(WTHE),对比度有限的自适应直方图均衡(CLAHE),非参数修改直方图均衡(NMHE),曝光基分图像直方图均衡(ESIHE),基于中位数的子图像剪裁直方图均衡(MMSICHE)和基于主导的基于方向的纹理直方图均衡(DOTHE),其在保持MR图像中的诊断性显着特征的能力方面。 (c)2020 Elsevier B.V.保留所有权利。

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