IEEE Trans Image Process. 2018 Feb;27(2):606-621. doi: 10.1109/TIP.2017.2761543. Epub 2017 Oct 9.
Tree-like structures, such as retinal images, are widely studied in computer-aided diagnosis systems for large-scale screening programs. Despite several segmentation and tracking methods proposed in the literature, there still exist several limitations specifically when two or more curvilinear structures cross or bifurcate, or in the presence of interrupted lines or highly curved blood vessels. In this paper, we propose a novel approach based on multi-orientation scores augmented with a contextual affinity matrix, which both are inspired by the geometry of the primary visual cortex (V1) and their contextual connections. The connectivity is described with a 5D kernel obtained as the fundamental solution of the Fokker-Planck equation modeling the cortical connectivity in the lifted space of positions, orientations, curvatures, and intensity. It is further used in a self-tuning spectral clustering step to identify the main perceptual units in the stimuli. The proposed method has been validated on several easy as well as challenging structures in a set of artificial images and actual retinal patches. Supported by quantitative and qualitative results, the method is capable of overcoming the limitations of current state-of-the-art techniques.
树状结构,如视网膜图像,在计算机辅助诊断系统中广泛用于大规模筛查计划。尽管文献中提出了几种分割和跟踪方法,但在两条或多条曲线结构交叉或分支时,或者在存在中断线或高度弯曲的血管时,仍然存在一些局限性。在本文中,我们提出了一种基于多方向得分的新方法,该方法通过上下文亲和力矩阵进行增强,这两个方法都受到初级视觉皮层(V1)的几何形状及其上下文连接的启发。连接性通过 5D 核来描述,该核是在位置、方向、曲率和强度的提升空间中对皮质连接建模的福克-普朗克方程的基本解。它进一步用于一个自调整的谱聚类步骤,以识别刺激中的主要感知单元。该方法已经在一组人工图像和实际视网膜斑块中的几个简单和具有挑战性的结构上进行了验证。基于定量和定性的结果,该方法能够克服当前最先进技术的局限性。