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Despeckling of ultrasound medical images using nonlinear adaptive anisotropic diffusion in nonsubsampled shearlet domain

机译:在非下采样小波域中使用非线性自适应各向异性扩散对超声医学图像进行去斑

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摘要

Despeckling is of great interest in ultrasound medical images. The inherent limitations of acquisition techniques and systems introduce the speckles in ultrasound images. These speckles are the main factors that degrade the quality and most importantly texture information present in ultrasound images. Due to these speckles, experts may not be able to extract correct and useful information from the images. This paper presents an edge preserved despeckling approach that combines the nonsubsampled shearlet transform (NSST) with improved nonlinear diffusion equations. As a new image representation method with the different features of localization, directionality and multiscale, the NSST is utilized to provide the effective representation of the image coefficients. The anisotropic diffusion approach is applied to the noisy coarser NSST coefficients to improve the noise reduction efficiency and effectively preserves the edge features. In the diffusion process, an adaptive gray variance is also incorporated with the gradient information of eight connected neighboring pixels to preserve the edges, effectively. The performance of the proposed method is evaluated by conducting extensive simulations using both the standard test images and several ultrasound medical images. Experiments show that the proposed method provides an improvement not only in noise reduction but also in the preservation of more edges as compared to several existing methods.
机译:去斑对超声医学图像非常感兴趣。采集技术和系统的固有局限性在超声图像中引入了斑点。这些斑点是降低质量的最主要因素,最重要的是降低超声图像中存在的纹理信息。由于这些斑点,专家可能无法从图像中提取正确和有用的信息。本文提出了一种边缘保留的去斑点方法,该方法结合了非下采样的小波变换(NSST)和改进的非线性扩散方程。作为具有定位,方向性和多尺度不同特征的一种新的图像表示方法,利用NSST可以有效地表示图像系数。各向异性扩散方法应用于噪声较大的NSST系数,以提高降噪效率并有效保留边缘特征。在扩散过程中,还将自适应灰度方差与八个相连的相邻像素的梯度信息合并在一起,以有效地保留边缘。通过使用标准测试图像和几个超声医学图像进行广泛的仿真来评估所提出方法的性能。实验表明,与几种现有方法相比,该方法不仅在降噪方面有所改进,而且在保留更多边缘方面也有改进。

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