Scharcanski Jacob, Jung Cláudio Rosito
UFRGS, Universidade Federal do Rio Grande do Sul Caixa Postal 15064, 91501-970 Porto Alegre, RS, Brasil.
Comput Med Imaging Graph. 2006 Jun;30(4):243-54. doi: 10.1016/j.compmedimag.2006.05.002. Epub 2006 Jul 12.
Dense regions in digital mammographic images are usually noisy and have low contrast, and their visual screening is difficult. This paper describes a new method for mammographic image noise suppression and enhancement, which can be effective particularly for screening image dense regions. Initially, the image is preprocessed to improve its local contrast and the discrimination of subtle details. Next, image noise suppression and edge enhancement are performed based on the wavelet transform. At each resolution, coefficients associated with noise are modelled by Gaussian random variables; coefficients associated with edges are modelled by Generalized Laplacian random variables, and a shrinkage function is assembled based on posterior probabilities. The shrinkage functions at consecutive scales are combined, and then applied to the wavelets coefficients. Given a resolution of analysis, the image denoising process is adaptive (i.e. does not require further parameter adjustments), and the selection of a gain factor provides the desired detail enhancement. The enhancement function was designed to avoid introducing artifacts in the enhancement process, which is essential in mammographic image analysis. Our preliminary results indicate that our method allows to enhance local contrast, and detect microcalcifications and other suspicious structures in situations where their detection would be difficult otherwise. Compared to other approaches, our method requires less parameter adjustments by the user.
数字乳腺X线图像中的致密区域通常噪声较大且对比度低,对其进行视觉筛查很困难。本文描述了一种用于乳腺X线图像噪声抑制和增强的新方法,该方法对筛查图像致密区域特别有效。首先,对图像进行预处理以提高其局部对比度和细微细节的辨别力。接下来,基于小波变换进行图像噪声抑制和边缘增强。在每个分辨率下,与噪声相关的系数由高斯随机变量建模;与边缘相关的系数由广义拉普拉斯随机变量建模,并基于后验概率组装一个收缩函数。将连续尺度的收缩函数组合起来,然后应用于小波系数。在给定的分析分辨率下,图像去噪过程是自适应的(即不需要进一步调整参数),增益因子的选择提供了所需的细节增强。增强函数旨在避免在增强过程中引入伪影,这在乳腺X线图像分析中至关重要。我们的初步结果表明,我们的方法能够增强局部对比度,并在其他情况下难以检测到微钙化和其他可疑结构的情况下检测到它们。与其他方法相比,我们的方法需要用户调整的参数更少。