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A LEVEL SET BASED HYBRID FRAMEWORK FOR CONFOCAL IMAGE SEGMENTATION

机译:基于水平集的混合框架用于共聚焦图像分割

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Based on level set approaches, a hybrid framework with quality control for nuclear segmentation of confocal images is presented. To overcome non homogeneous background, nuclei are firstly modeled into circles with some additive noise and Laplacian of Gaussian filter as a blob-detector is applied. Then, nuclei centers are obtained by energy minimization of fast marching towards the boundaries of desired objects. Here, multiple optimal points are selected as the initial condition to avoid under-segmentation. In order to achieve higher accuracy, the system is designed in a hybrid-structure so that selectable modules will permit manual adjustment to prevent errors propagation. The appropriate centers of nuclei divide the original image into Voronoi meshes. In each mesh, geodesic active contour evolves toward the minimum energy, and the influence of internal and external forces fit the accurate nuclear edge. The algorithm is successfully applied 3D nuclei segmentation from bovine trophoblast. Experiments show that noise in images can be effectively reduced and touching in clusters can be naturally managed.
机译:基于水平集方法,提出了一种具有质量控制的共焦图像核分割混合框架。为了克服非均匀背景,首先将原子核建模为带有附加噪声的圆,并使用高斯滤波器的拉普拉斯算子作为斑点检测器。然后,通过使能量快速向所需目标的边界最小化来获得核中心。在此,选择多个最佳点作为初始条件,以避免分割不足。为了获得更高的精度,系统采用混合结构设计,因此可选模块将允许手动调整以防止错误传播。适当的核中心将原始图像划分为Voronoi网格。在每个网格中,测地活动轮廓向最小能量方向发展,内外力的影响与精确的核边缘相吻合。该算法已成功应用于牛滋养细胞的3D核分割。实验表明,可以有效减少图像中的噪点,并且可以自然地管理群集中的触摸。

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