张量投票法重建胚胎细胞膜

G. Michelin, L. Guignard, Ulla-Maj Fiúza, G. Malandain
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引用次数: 9

摘要

基于图像的器官或胚胎发育研究产生了大量的数据。为了处理这种高通量的实验协议,自动化的计算机辅助方法是非常可取的。本文旨在设计一种高效的显微图像细胞分割方法。提出的方法有两个方面:首先,通过基于结构的过滤器增强或提取细胞膜,然后感知分组(即张量投票)允许纠正分割间隙。为了减少最后一步的计算成本,我们提出了不同的方法来减少选民的数量。对真实数据的评估使我们能够推断出最有效的方法。
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Embryo cell membranes reconstruction by tensor voting
Image-based studies of developing organs or embryos produce a huge quantity of data. To handle such high-throughput experimental protocols, automated computer-assisted methods are highly desirable. This article aims at designing an efficient cell segmentation method from microscopic images. The proposed approach is twofold: first, cell membranes are enhanced or extracted by the means of structure-based filters, and then perceptual grouping (i.e. tensor voting) allows to correct for segmentation gaps. To decrease the computational cost of this last step, we propose different methodologies to reduce the number of voters. Assessment on real data allows us to deduce the most efficient approach.
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