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A heavy-tailed levy distribution for despeckling ultrasound image

机译:考察超声图像的重型尾征分布

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A new homomorphic approached, Bayesian based, filter is proposed for de-noising ultrasound image. The presence of speckle noise degrades the quality and detail structure in ultrasound image. This reduces the signal-to-noise ratio in ultrasound image. A heavy-tailed Levy probability distribution function (PDF) is used to model the wavelet coefficients. The noise variance is estimated by exploiting the orthogonal property of wavelet transform. A Bayesian Minimum Mean Absolute Error (MMAE) estimator is used to estimate the noise free wavelet coefficients. The proposed method in this paper is able to reduce the speckle noise and improves the image assessment and visual evaluation. Quality and performance parameters such as Peak Signal to Noise Ratio (PSNR), Structural similarity index (SSIM) and Correlation coefficient (CoC) are used to evaluate the effectiveness of the proposed method. The improvement of PSNR, SSIM and CoC is 10.11%, 1.5% and 0.4% than the standard wavelet based technique.
机译:提出了一种新的同性恋方法,基于贝叶斯的过滤器,用于去噪超声图像。斑点噪声的存在降低了超声图像中的质量和细节结构。这降低了超声图像中的信噪比。重尾征概率分布函数(PDF)用于模拟小波系数。通过利用小波变换的正交性来估计噪声方差。贝叶斯最小平均绝对误差(MMAE)估计器用于估计无噪声小波系数。本文中所提出的方法能够降低散斑噪声并提高图像评估和视觉评估。诸如峰值信号的质量和性能参数(PSNR),结构相似性指数(SSIM)和相关系数(COC)用于评估所提出的方法的有效性。 PSNR,SSIM和COC的改进为10.11 %,1.5 %和0.4 %而不是基于标准小波的技术。

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