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Frequency division denoising algorithm based on VIF adaptive 2D-VMD ultrasound image

机译:基于VIF自适应2D-VMD超声图像的频分去噪算法

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摘要

Ultrasound imaging has developed into an indispensable imaging technology in medical diagnosis and treatment applications due to its unique advantages, such as safety, affordability, and convenience. With the development of data information acquisition technology, ultrasound imaging is increasingly susceptible to speckle noise, which leads to defects, such as low resolution, poor contrast, spots, and shadows, which affect the accuracy of physician analysis and diagnosis. To solve this problem, we proposed a frequency division denoising algorithm combining transform domain and spatial domain. First, the ultrasound image was decomposed into a series of sub-modal images using 2D variational mode decomposition (2D-VMD), and adaptively determined 2D-VMD parameter K value based on visual information fidelity (VIF) criterion. Then, an anisotropic diffusion filter was used to denoise low-frequency sub-modal images, and a 3D block matching algorithm (BM3D) was used to reduce noise for high-frequency images with high noise. Finally, each sub-modal image was reconstructed after processing to obtain the denoised ultrasound image. In the comparative experiments of synthetic, simulation, and real images, the performance of this method was quantitatively evaluated. Various results show that the ability of this algorithm in denoising and maintaining structural details is significantly better than that of other algorithms.
机译:由于其独特的优势,超声成像在医学诊断和治疗应用中发挥了不可或缺的成像技术,例如安全,负担能力和便利性。随着数据信息采集技术的发展,超声成像越来越容易受到斑点噪声的影响,这导致缺陷,例如低分辨率,对比度,斑点和阴影,影响医师分析和诊断的准确性。为了解决这个问题,我们提出了一种结合变换域和空间域的频分去噪算法。首先,使用2D变分模式分解(2D-VMD)和基于视觉信息保真度(VIF)标准的自适应确定的2D-VMD参数k值,将超声图像分解成一系列子模态图像。然后,使用各向异性扩散滤波器来表示低频子模态图像,并且使用3D块匹配算法(BM3D)来降低具有高噪声的高频图像的噪声。最后,在处理之后重建每个子模态图像以获得去噪超声图像。在合成,仿真和实图像的比较实验中,定量评估该方法的性能。各种结果表明,该算法在去噪和维持结构细节方面的能力明显优于其他算法。

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