Miyazawa Arata, Hong Young-Joo, Makita Shuichi, Kasaragod Deepa, Yasuno Yoshiaki
Computational Optics Group, University of Tsukuba, Tennodai 1-1-1, Tsukuba, Ibaraki 305-8573, Japan.
Biomed Opt Express. 2017 Sep 8;8(10):4396-4418. doi: 10.1364/BOE.8.004396. eCollection 2017 Oct 1.
Jones matrix-based polarization sensitive optical coherence tomography (JM-OCT) simultaneously measures optical intensity, birefringence, degree of polarization uniformity, and OCT angiography. The statistics of the optical features in a local region, such as the local mean of the OCT intensity, are frequently used for image processing and the quantitative analysis of JM-OCT. Conventionally, local statistics have been computed with fixed-size rectangular kernels. However, this results in a trade-off between image sharpness and statistical accuracy. We introduce a superpixel method to JM-OCT for generating the flexible kernels of local statistics. A superpixel is a cluster of image pixels that is formed by the pixels' spatial and signal value proximities. An algorithm for superpixel generation specialized for JM-OCT and its optimization methods are presented in this paper. The spatial proximity is in two-dimensional cross-sectional space and the signal values are the four optical features. Hence, the superpixel method is a six-dimensional clustering technique for JM-OCT pixels. The performance of the JM-OCT superpixels and its optimization methods are evaluated in detail using JM-OCT datasets of posterior eyes. The superpixels were found to well preserve tissue structures, such as layer structures, sclera, vessels, and retinal pigment epithelium. And hence, they are more suitable for local statistics kernels than conventional uniform rectangular kernels.
基于琼斯矩阵的偏振敏感光学相干断层扫描(JM-OCT)可同时测量光强、双折射、偏振均匀度和 OCT 血管造影。局部区域光学特征的统计数据,如 OCT 强度的局部均值,经常用于 JM-OCT 的图像处理和定量分析。传统上,局部统计是使用固定大小的矩形内核计算的。然而,这会导致图像清晰度和统计准确性之间的权衡。我们将超像素方法引入 JM-OCT,以生成局部统计的灵活内核。超像素是由图像像素的空间和信号值接近度形成的图像像素簇。本文提出了一种专门用于 JM-OCT 的超像素生成算法及其优化方法。空间接近度是在二维横截面空间中,信号值是四个光学特征。因此,超像素方法是一种用于 JM-OCT 像素的六维聚类技术。使用后眼的 JM-OCT 数据集详细评估了 JM-OCT 超像素及其优化方法的性能。发现超像素能够很好地保留组织结构,如层结构、巩膜、血管和视网膜色素上皮。因此,它们比传统的均匀矩形内核更适合作为局部统计内核。