IEEE Trans Image Process. 2018 Feb;27(2):649-664. doi: 10.1109/TIP.2017.2762590. Epub 2017 Oct 12.
Anisotropic diffusion filters are one of the best choices for speckle reduction in the ultrasound images. These filters control the diffusion flux flow using local image statistics and provide the desired speckle suppression. However, inefficient use of edge characteristics results in either oversmooth image or an image containing misinterpreted spurious edges. As a result, the diagnostic quality of the images becomes a concern. To alleviate such problems, a novel anisotropic diffusion-based speckle reducing filter is proposed in this paper. A probability density function of the edges along with pixel relativity information is used to control the diffusion flux flow. The probability density function helps in removing the spurious edges and the pixel relativity reduces the oversmoothing effects. Furthermore, the filtering is performed in superpixel domain to reduce the execution time, wherein a minimum of 15% of the total number of image pixels can be used. For performance evaluation, 31 frames of three synthetic images and 40 real ultrasound images are used. In most of the experiments, the proposed filter shows a better performance as compared to the state-of-the-art filters in terms of the speckle region's signal-to-noise ratio and mean square error. It also shows a comparative performance for figure of merit and structural similarity measure index. Furthermore, in the subjective evaluation, performed by the expert radiologists, the proposed filter's outputs are preferred for the improved contrast and sharpness of the object boundaries. Hence, the proposed filtering framework is suitable to reduce the unwanted speckle and improve the quality of the ultrasound images.
各向异性扩散滤波器是超声图像中用于减少斑点的最佳选择之一。这些滤波器使用局部图像统计信息控制扩散通量流,提供所需的斑点抑制。然而,边缘特征的低效利用会导致图像过度平滑或包含错误解释的虚假边缘。因此,图像的诊断质量成为一个关注点。为了缓解这些问题,本文提出了一种新的基于各向异性扩散的斑点减少滤波器。使用沿边缘的概率密度函数以及像素相关性信息来控制扩散通量流。概率密度函数有助于去除虚假边缘,而像素相关性则减少过度平滑效果。此外,在超像素域中进行滤波以减少执行时间,其中可以使用图像总像素数的 15%以下。对于性能评估,使用了三个合成图像的 31 帧和 40 个真实超声图像。在大多数实验中,与最先进的滤波器相比,所提出的滤波器在斑点区域的信噪比和均方误差方面表现出更好的性能。它在衡量标准和结构相似性度量指数方面也表现出了相当的性能。此外,在专家放射科医生进行的主观评估中,所提出的滤波器的输出在提高对象边界的对比度和清晰度方面更受青睐。因此,所提出的滤波框架适合于减少不需要的斑点并提高超声图像的质量。