论文标题
特定于噪声的denoising方法,并应用于高频超声图像
Noise-specific denoising method with applications to high-frequency ultrasonic images
论文作者
论文摘要
对于以低信噪比为特征的图像的可视化和处理对于可视化和处理至关重要。总变异方法是执行此任务的最流行技术之一,以改善信噪比,同时保留连贯的强度不连续性。在这项工作中,提出了一种新的方法,称为最大似然数据,从而赋予了处理特定于噪声模型和预处理阶段的能力,以赋予整个感兴趣图像。为此,数据保真度项是通过原始图像和DeNoied Image之间的最大似然估计器修改的。为了评估所提出的方法在总变异配方方面的改进,我们研究了在硅内和体内设置上高频超声图像的降解。所提出的方法提供了更好的对比度,结构的保存和定位,同时减少了多种噪声的总变化公式的强度偏置。通过deno的增强医学图像有助于改善随后应用图像处理的结果,例如注册和分割程序。
Denoising is of utmost importance for the visualization and processing of images featuring low signal-to-noise ratio. Total variation methods are among the most popular techniques to perform this task improving the signal-to-noise ratio while preserving coherent intensity discontinuities. In this work, a novel method, termed maximum likelihood data, is proposed, endowing the total variation formulation with the capability to deal with noise-specific models and pre-processing stages for a certain image of interest. To do this, the data fidelity term is modified by means of a maximum likelihood estimator between the original and the denoised image. To assess the improvements of the proposed method with respect to the total variation formulation, we study the denoising of high-frequency ultrasonic images on in-silico and in-vivo setups. The proposed method delivered a better contrast, preservation and localization of the structures while diminishing the intensity bias of the total variation formulation for the multiplicative noise. The enhancement of medical images through denoising helps to improve the outcome of subsequently applied image processing such as registration and segmentation procedures.