一种基于模型约束的递归区域分割算法

W. Xiong, S. Ong, Joo-Hwee Lim
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引用次数: 3

摘要

细胞团块分解是一项困难的分割任务,需要区域分割技术。不采用先验形状约束的技术通常无法实现准确的分割。使用形状约束的人无法处理大的团块和闭塞。在这项工作中,我们提出了一种模型约束区域分割算法用于细胞团块分解。我们利用不变形状特征的联合概率分布建立细胞模型。利用形状模型、轮廓平滑度和沿切口的梯度信息以递归方式优化分割。捷径规则也是一种加快流程的策略。在包含4516个细胞和520个团块的60幅图像的验证实验中,该算法表现良好。
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A Recursive and Model-Constrained Region Splitting Algorithm for Cell Clump Decomposition
Decomposition of cells in clumps is a difficult segmentation task requiring region splitting techniques. Techniques that do not employ prior shape constraints usually fail to achieve accurate segmentation. Those using shape constraints are unable to cope with large clumps and occlusions. In this work, we propose a model-constrained region splitting algorithm for cell clump decomposition. We build the cell model using joint probability distribution of invariant shape features. The shape model, the contour smoothness and the gradient information along the cut are used to optimize the splitting in a recursive manner. The short cut rule is also adopted as a strategy to speed up the process. The algorithm performs well in validation experiments using 60 images with 4516 cells and 520 clumps.
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