使用连续可扩展的墨西哥帽样模板快速检测细胞

K. Chaudhury, Zsuzsanna Püspöki, A. Muñoz-Barrutia, D. Sage, M. Unser
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引用次数: 10

摘要

我们提出了一种荧光图像中细胞检测的快速算法。该算法估计细胞的数量及其各自的中心和半径,依赖于细胞之间基于强度的相关性的快速计算和一个近乎各向同性的墨西哥帽子式探测器。该算法最吸引人的特点是速度快、精度高。前一个属性源于这样一个事实,即我们可以使用O(1)操作计算单元和各种大小的检测器之间的相关性;然而,它是我们的能力,连续控制的中心和半径的探测器,导致一个精确的估计细胞的位置和大小。我们在模拟数据和真实数据上提供了实验结果来证明该算法的速度和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast detection of cells using a continuously scalable Mexican-hat-like template
We propose a fast algorithm for the detection of cells in fluorescence images. The algorithm, which estimates the number of cells and their respective centers and radii, relies on the fast computation of intensity-based correlations between the cells and a near-isotropic Mexican-hat-like detector. The attractive features of our algorithm are its speed and accuracy. The former attribute is derived from the fact that we can compute correlations between a cell and detectors of various sizes using O(1) operations; whereas, it is our ability to continuously control the center and the radius of the detector that results in a precise estimate of the position and size of the cell. We provide experimental results on both simulated and real data to demonstrate the speed and accuracy of the algorithm.
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