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Speckle noise reduction method combining total variation and wavelet shrinkage for clinical ultrasound imaging

机译:结合总变化和小波收缩的斑点噪声减少方法用于临床超声成像

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Ultrasound imaging is a widely used and safe medical diagnostic technique; however, the usefulness of ultrasound imaging is degraded by the presence of signal dependant noise known as speckle. In this paper, we propose a new speckle reduction method and coherence enhancement of ultrasound images based on method that combines total variation (TV) method and wavelet shrinkage. In our method, a noisy image is decomposed into subbands of LL, LH, HL, and HH in wavelet domain. LL subband contains the low frequency coefficients along with less noise, which can be easily eliminated using TV-based method. More edges and other detailed information like textures are contained in the other three subbands, and we propose a shrinkage method based on the local variance to extract them from high frequency noise. The proposed method has been compared with Median, Anisotropic diffusion filtering, Geometric, Mean and variance local statistics, Wavelet and Total variation filter using quantitative parameters. It has been found that quality evaluation metrics the proposed method performs better than all other methods while still retaining the structural details and experimental results show that this method retains the edges and textures very well while removing noise.
机译:超声成像是一种广泛使用且安全的医学诊断技术。但是,由于存在依赖于信号的噪声(称为斑点),超声成像的实用性降低了。在本文中,我们提出了一种新的斑点减少方法和基于总变化(TV)方法与小波收缩相结合的方法增强超声图像的相干性。在我们的方法中,噪声图像在小波域中分解为LL,LH,HL和HH的子带。 LL子带包含低频系数和更少的噪声,使用基于电视的方法可以轻松消除这些噪声。其他三个子带中包含更多的边缘和其他详细信息(如纹理),我们提出了一种基于局部方差的收缩方法,以从高频噪声中提取它们。将该方法与中位数,各向异性扩散滤波,几何,均值和方差局部统计,小波和总变化滤波器(使用定量参数)进行了比较。已经发现,所提出的方法的质量评估指标比所有其他方法表现更好,同时仍然保留了结构细节,并且实验结果表明,该方法在消除噪声的同时很好地保留了边缘和纹理。

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