Ruder Boškovic Institute, Division of Electronics, Bijenicka cesta 54, Zagreb 10002, Croatia.
Soochow University, School of Electronics and Information Engineering, No. 1 Shizi Street, Suzhou City 215006, China.
J Biomed Opt. 2016 Jul 1;21(7):76008. doi: 10.1117/1.JBO.21.7.076008.
Speckle artifacts can strongly hamper quantitative analysis of optical coherence tomography (OCT), which is necessary to provide assessment of ocular disorders associated with vision loss. Here, we introduce a method for speckle reduction, which leverages from low-rank + sparsity decomposition (LRpSD) of the logarithm of intensity OCT images. In particular, we combine nonconvex regularization-based low-rank approximation of an original OCT image with a sparsity term that incorporates the speckle. State-of-the-art methods for LRpSD require a priori knowledge of a rank and approximate it with nuclear norm, which is not an accurate rank indicator. As opposed to that, the proposed method provides more accurate approximation of a rank through the use of nonconvex regularization that induces sparse approximation of singular values. Furthermore, a rank value is not required to be known a priori. This, in turn, yields an automatic and computationally more efficient method for speckle reduction, which yields the OCT image with improved contrast-to-noise ratio, contrast and edge fidelity. The source code will be available at www.mipav.net/English/research/research.html.
散斑伪影会强烈阻碍光学相干断层扫描(OCT)的定量分析,这对于评估与视力丧失相关的眼部疾病是必要的。在这里,我们引入了一种基于对数 OCT 图像的低秩 + 稀疏分解(LRpSD)的散斑减少方法。具体来说,我们将原始 OCT 图像的基于非凸正则化的低秩逼近与包含散斑的稀疏项相结合。LRpSD 的最新方法需要秩的先验知识,并通过核范数近似它,而核范数并不是一个准确的秩指标。相比之下,所提出的方法通过使用非凸正则化来诱导奇异值的稀疏逼近,从而提供更准确的秩逼近。此外,不需要预先知道秩的值。这反过来又产生了一种自动且计算效率更高的散斑减少方法,可生成对比度噪声比、对比度和边缘保真度得到改善的 OCT 图像。源代码将在 www.mipav.net/English/research/research.html 上提供。