Coverage segmentation of thin structures by linear unmixing and local centre of gravity attraction

Kristína Lidayová, Joakim Lindblad, Natasa Sladoje, H. Frimmel
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引用次数: 4

Abstract

We present a coverage segmentation method for extracting thin structures in two-dimensional images. These thin structures can be, for example, retinal vessels, or microtubules in cytoskeleton, which are often 1-2 pixels thick. There exist several methods for coverage segmentation, but when it comes to thin and long structures, the segmentation is often unreliable. We propose a method that does not shrink the structures inappropriately and creates a trustworthy segmentation. In addition, as a by-product a high-resolution crisp reconstruction is provided. The method needs a reliable crisp segmentation as an input and uses information from linear unmixing and the crisp segmentation to create a high-resolution crisp reconstruction of the object. After a procedure where holes and protrusions are removed, the high-resolution crisp image is optionally downsampled back to its original size, creating a coverage segmentation that preserves thin structures.
利用线性分解和局部重心吸引对薄结构进行覆盖分割
提出了一种用于二维图像薄结构提取的覆盖分割方法。例如,这些薄结构可以是视网膜血管或细胞骨架中的微管,其厚度通常为1-2像素。目前已有几种覆盖分割方法,但当涉及到细结构和长结构时,这种分割方法往往不可靠。我们提出了一种不会不适当地缩小结构并创建可信分割的方法。此外,作为副产品,提供了高分辨率的清晰重建。该方法需要一个可靠的清晰分割作为输入,并使用线性解混和清晰分割的信息来创建物体的高分辨率清晰重建。在去除孔和突起的过程后,高分辨率的清晰图像被选择性地降采样回其原始尺寸,创建保留薄结构的覆盖分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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