IEEE Trans Med Imaging. 2021 Aug;40(8):2129-2141. doi: 10.1109/TMI.2021.3073174. Epub 2021 Jul 30.
In this paper a statistical modeling, based on stochastic differential equations (SDEs), is proposed for retinal Optical Coherence Tomography (OCT) images. In this method, pixel intensities of image are considered as discrete realizations of a Levy stable process. This process has independent increments and can be expressed as response of SDE to a white symmetric alpha stable (s [Formula: see text]) noise. Based on this assumption, applying appropriate differential operator makes intensities statistically independent. Mentioned white stable noise can be regenerated by applying fractional Laplacian operator to image intensities. In this way, we modeled OCT images as s [Formula: see text] distribution. We applied fractional Laplacian operator to image and fitted s [Formula: see text] to its histogram. Statistical tests were used to evaluate goodness of fit of stable distribution and its heavy tailed and stability characteristics. We used modeled s [Formula: see text] distribution as prior information in maximum a posteriori (MAP) estimator in order to reduce the speckle noise of OCT images. Such a statistically independent prior distribution simplified denoising optimization problem to a regularization algorithm with an adjustable shrinkage operator for each image. Alternating Direction Method of Multipliers (ADMM) algorithm was utilized to solve the denoising problem. We presented visual and quantitative evaluation results of the performance of this modeling and denoising methods for normal and abnormal images. Applying parameters of model in classification task as well as indicating effect of denoising in layer segmentation improvement illustrates that the proposed method describes OCT data more accurately than other models that do not remove statistical dependencies between pixel intensities.
本文提出了一种基于随机微分方程(SDE)的统计建模方法,用于视网膜光学相干断层扫描(OCT)图像。在该方法中,图像的像素强度被视为 Levy 稳定过程的离散实现。该过程具有独立增量,可以表示为 SDE 对白色对称α稳定(s [Formula: see text])噪声的响应。基于此假设,应用适当的微分算子可以使强度在统计上独立。所提到的白色稳定噪声可以通过将分数阶拉普拉斯算子应用于图像强度来再生。通过这种方式,我们将 OCT 图像建模为 s [Formula: see text] 分布。我们将分数阶拉普拉斯算子应用于图像,并将 s [Formula: see text] 拟合到其直方图中。统计检验用于评估稳定分布及其重尾和稳定性特征的拟合优度。我们将建模的 s [Formula: see text] 分布用作 MAP 估计器中的先验信息,以降低 OCT 图像的散斑噪声。这种统计独立的先验分布将去噪优化问题简化为具有可调节收缩算子的正则化算法,用于每个图像。交替方向乘子法(ADMM)算法用于解决去噪问题。我们展示了正常和异常图像的这种建模和去噪方法的视觉和定量评估结果。应用模型参数进行分类任务以及指示去噪在层分割改进中的效果表明,与不消除像素强度之间统计依赖性的其他模型相比,该方法更准确地描述了 OCT 数据。