首页> 外文期刊>IEE proceedings, Part K. Vision, image and signal processing >Locally adaptive wavelet domain Bayesian processor for denoising medical ultrasound images using Speckle modelling based on Rayleigh distribution
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Locally adaptive wavelet domain Bayesian processor for denoising medical ultrasound images using Speckle modelling based on Rayleigh distribution

机译:基于瑞利分布的散斑建模用于医学超声图像去噪的局部自适应小波域贝叶斯处理器

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The authors present a statistical approach to speckle reduction in medical ultrasound B-scan images based on maximum a posteriori (MAP) estimation in the wavelet domain. In this framework, a new class of statistical model for speckle noise is proposed to obtain a simple and tractable solution in a closed analytical form. The proposed method uses the Rayleigh distribution for speckle noise and a Gaussian distribution for modelling the statistics of wavelet coefficients in a logarithmically transformed ultrasound image. The method combines the MAP estimation with the assumption that speckle is spatially correlated within a small window and designs a locally adaptive Bayesian processor whose parameters are computed from the neighboring coefficients. Further, the locally adaptive estimator is extended to the redundant wavelet representation, which yields better results than the decimated wavelet transform. The experimental results show that the proposed method clearly outperforms the state-of-the-art medical image denoising algorithm of Pizurica et al., spatially adaptive single-resolution methods and band-adaptive multi-scale soft-thresholding techniques in terms of quantitative performance as well as in terms of visual quality of the images. The main advantage of the new method over the existing techniques is that it suppresses speckle noise well, while retaining the structure of the image, particularly the thin bright streaks, which tend to occur along boundaries between tissue layers.
机译:作者提出了一种基于小波域中最大后验(MAP)估计的医学超声B扫描图像斑点减少的统计方法。在此框架中,提出了一种新的斑点噪声统计模型,以封闭的分析形式获得简单易处理的解决方案。所提出的方法使用用于斑点噪声的瑞利分布和用于对数变换后的超声图像中小波系数统计的高斯分布建模。该方法将MAP估计与斑点在一个小窗口内在空间上相关的假设相结合,并设计了一个局部自适应贝叶斯处理器,其参数是从相邻系数中计算出来的。此外,局部自适应估计器被扩展到冗余小波表示,与抽取小波变换相比,产生了更好的结果。实验结果表明,在定量性能方面,该方法明显优于Pizurica等人的最新医学图像去噪算法,空间自适应单分辨率方法和带自适应多尺度软阈值技术。以及图像的视觉质量。与现有技术相比,新方法的主要优点在于,它可以很好地抑制斑点噪声,同时保留图像的结构,特别是沿组织层之间的边界容易出现的细亮条纹。

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