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首页> 外文期刊>Biocybernetics and biomedical engineering >Automatic contrast enhancement of brain MR images using Average Intensity Replacement based on Adaptive Histogram Equalization (AIR-AHE)
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Automatic contrast enhancement of brain MR images using Average Intensity Replacement based on Adaptive Histogram Equalization (AIR-AHE)

机译:使用基于自适应直方图均衡的平均强度替换 (AIR-AHE) 自动增强脑 MR 图像的对比度

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摘要

Medical imaging is the most established technique of visualizing the interior of the human body without the risk of the non-invasive effect. This technology is designed to produce images, and it is also capable of representing information about the screening location. In MRI imaging, the poor image quality particularly the low contrast image may provide insufficient data for the visual interpretation of such affected locations. Therefore, the need of image enhancement arises to improve image visions and also to computationally support the image processing technique. In general, conventional contrast enhancement methods may work well for some images. However, in MRI brain image, there are often more complex situations where the WMH signal is high but it may mistakenly be considered as other brain tissues such as CSF. With the motivation to classify the most possible WMH regions, this paper proposes a novel image contrast algorithm of WMH enhancement for MRI image. This algorithm is also known as the Average Intensity Replacement Adaptive Histogram Equalization (AIR-AHE). The proposed algorithm is applied to the FLAIR image based on the intensity adjustment and contrast mapping techniques. The proposed algorithm for the image enhancement is superior to the existing methods by using image evaluation quantitative methods of PSNR, average gradient values and MSE. Furthermore, the edge information pertaining to the potential WMH regions can effectively increase the accuracy of the results. (C) 2017 Nalecz Institute of Biocybemetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:医学成像是最成熟的可视化人体内部技术,没有非侵入性影响的风险。该技术旨在生成图像,并且还能够表示有关放映位置的信息。在 MRI 成像中,较差的图像质量,尤其是低对比度图像,可能为此类受影响位置的视觉解释提供足够的数据。因此,需要图像增强来改善图像视觉,并在计算上支持图像处理技术。一般来说,传统的对比度增强方法可能适用于某些图像。然而,在 MRI 脑图像中,通常存在更复杂的情况,即 WMH 信号很高,但它可能被错误地认为是其他脑组织,例如 CSF。为了对最可能的WMH区域进行分类,该文提出了一种新的MRI图像WMH增强图像对比算法。该算法也称为平均强度替换自适应直方图均衡 (AIR-AHE)。所提算法基于强度调整和对比度映射技术应用于FLAIR图像。所提出的图像增强算法优于现有方法,采用PSNR、平均梯度值和MSE等图像评价定量方法。此外,与潜在WMH区域相关的边缘信息可以有效地提高结果的准确性。(C) 2017 波兰科学院 Nalecz 生物生物学和生物医学工程研究所。由以下开发商制作:Elsevier B.V.保留所有权利。

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