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Ultrasound b-scans image denoising via expectation maximization-based unsharp masking

机译:超声波b扫描通过基于期望最大化的锐化蒙版进行图像降噪

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In this paper, we present an unsharp maskingbased approach with subsequent bilateral filtering stage to noise smoothing of ultrasound (US) image. At our first processing stage, we propose image segmentation via EM to segregate two pixels populations instead of separating original image into the low- and high-frequency components. Our proposed method then enhances the edge by shifting the mean of the two pixels populations away from each other. This is similar to the conventional unsharp masking structure, except that the concept is reformulated and worked in probabilistic setting. At our second stage, we use bilateral filtering to attenuate the retained noise in the flat areas. Performance of synthetic and real clinical B-scan US images based on several dominant image quality measures, e.g., signal-to-noise ratio (SNR) and contrast-to-noise-ratio (CNR), is evaluated. The performance is improved over the conventional US image de-speckling methods. The CNR-SNR performance tradeoff is also addressed here for the first time.
机译:在本文中,我们提出了一种基于锐化遮罩的方法,并在随后的双边滤波阶段对超声(US)图像进行了噪声平滑。在我们的第一个处理阶段,我们建议通过EM进行图像分割,以分离两个像素种群,而不是将原始图像分为低频和高频分量。然后,我们提出的方法通过将两个像素总体的均值彼此远离来增强边缘。这与常规的不锐利的蒙版结构相似,不同之处在于该概念已重新构造并在概率环境中起作用。在第二阶段,我们使用双边滤波来衰减平坦区域中的保留噪声。评估了基于几种主要图像质量度量(例如信噪比(SNR)和对比度与噪声比(CNR))的合成和实际临床B扫描US图像的性能。与常规的美国图像去斑点方法相比,该性能得到了改善。 CNR-SNR性能折衷也第一次在这里解决。

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