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An efficient and robust hybrid method for segmentation of zebrafish objects from bright-field microscope images

机译:从明视场显微镜图像中分割斑马鱼对象的高效鲁棒混合方法

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摘要

Accurate segmentation of zebrafish from bright-field microscope images is crucial to many applications in the life sciences. Early zebrafish stages are used, and in these stages the zebrafish is partially transparent. This transparency leads to edge ambiguity as is typically seen in the larval stages. Therefore, segmentation of zebrafish objects from images is a challenging task in computational bio-imaging. Popular computational methods fail to segment the relevant edges, which subsequently results in inaccurate measurements and evaluations. Here we present a hybrid method to accomplish accurate and efficient segmentation of zebrafish specimens from bright-field microscope images. We employ the mean shift algorithm to augment the colour representation in the images. This improves the discrimination of the specimen to the background and provides a segmentation candidate retaining the overall shape of the zebrafish. A distance-regularised level set function is initialised from this segmentation candidate and fed to an improved level set method, such that we can obtain another segmentation candidate which preserves the explicit contour of the object. The two candidates are fused using heuristics, and the hybrid result is refined to represent the contour of the zebrafish specimen. We have applied the proposed method on two typical datasets. From experiments, we conclude that the proposed hybrid method improves both efficiency and accuracy of the segmentation of the zebrafish specimen. The results are going to be used for high-throughput applications with zebrafish.
机译:从明视场显微镜图像中准确分割斑马鱼对于生命科学中的许多应用至关重要。使用早期的斑马鱼阶段,在这些阶段中,斑马鱼是部分透明的。这种透明性导致边缘模糊,这在幼虫阶段通常会看到。因此,从图像中分割斑马鱼对象是计算生物成像中的一项艰巨任务。流行的计算方法无法分割相关边缘,从而导致测量和评估不准确。在这里,我们提出了一种混合方法,可从明场显微镜图像中完成斑马鱼标本的准确和有效分割。我们采用均值平移算法来增强图像中的颜色表示。这改善了标本对背景的辨别力,并提供了可保留斑马鱼整体形状的分割候选对象。从该分割候选者初始化距离调节的水平集函数并将其馈送到改进的水平集方法,从而我们可以获得保留该对象的显式轮廓的另一分割候选者。使用试探法将两个候选者融合在一起,并对混合结果进行细化以表示斑马鱼标本的轮廓。我们已经将建议的方法应用于两个典型的数据集。从实验中,我们得出结论,提出的混合方法提高了斑马鱼标本分割的效率和准确性。该结果将用于斑马鱼的高通量应用。

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