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首页> 外文期刊>Biocybernetics and biomedical engineering >A full reference Morphological Edge Similarity Index to account processing induced edge artefacts in magnetic resonance images
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A full reference Morphological Edge Similarity Index to account processing induced edge artefacts in magnetic resonance images

机译:用于处理磁共振图像中诱导边缘伪影的完整参考形态边缘相似性指数

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An objective measure of edge similarity between the original and processed images to quantify the processing induced artefacts in medical image computing is proposed in this article. Globally accepted Image Quality Analysis (IQA) indices such as Peak Signal Noise Ratio (PSNR) and Structural Similarity Index Metric (SSIM) measure the structural similarity between the original and processed image and do not specifically reflect the resemblance of the edge content. Most of the IQA indices either do not comply with the subjective quality ratings or they are prone to noise level. In the proposed Morphological Edge Similarity Index (MESI), the binary edge maps of the reference and processed images are generated via gradient based threshold and these edge maps are objectively compared to yield a reliable edge quality metric. The index is found superior to Edge Preservation Index (EPI), Edge Strength Similarity based Image quality Metric (ESSIM) and SSIM in terms of dynamic variability, correlation with subjective quality ratings, robustness to noise and sensitivity to degradation in edge quality caused by blockiness artefacts in image compression. MESI exhibits a correlation of 0.9985, very close to unity, with the subjective quality ratings. It is useful for objectively evaluating the performance of denoising, sharpening and enhancement schemes and for the selection of optimum value of the arbitrary parameters used in them. (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:本文提出了一种客观测量原始图像和处理图像之间的边缘相似性的方法,以量化医学图像计算中处理诱导的伪影。全球公认的图像质量分析 (IQA) 指数(如峰值信号噪声比 (PSNR) 和结构相似性指数指标 (SSIM))衡量原始图像和处理图像之间的结构相似性,并不专门反映边缘内容的相似性。大多数IQA指数要么不符合主观质量评级,要么容易产生噪音水平。在所提出的形态边缘相似性指数(MESI)中,通过基于梯度的阈值生成参考图像和处理图像的二元边缘图,并客观地比较这些边缘图,以产生可靠的边缘质量指标。该指数在动态变异性、与主观质量评级的相关性、对噪声的鲁棒性以及对图像压缩中块状伪影引起的边缘质量下降的敏感性方面优于边缘保留指数 (EPI)、基于边缘强度相似性的图像质量指标 (ESSIM) 和 SSIM。MESI与主观质量评级的相关性为0.9985,非常接近统一。它有助于客观地评估去噪、锐化和增强方案的性能,并用于选择其中使用的任意参数的最佳值。(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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