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首页> 外文期刊>Journal of mathematical imaging and vision >Optimal Multivariate Gaussian Fitting with Applications to PSF Modeling in Two-Photon Microscopy Imaging
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Optimal Multivariate Gaussian Fitting with Applications to PSF Modeling in Two-Photon Microscopy Imaging

机译:应用于双光子显微镜成像的PSF造型应用的最佳多功能高斯拟合

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Fitting Gaussian functions to empirical data is a crucial task in a variety of scientific applications, especially in image processing. However, most of the existing approaches for performing such fitting are restricted to two dimensions and they cannot be easily extended to higher dimensions. Moreover, they are usually based on alternating minimization schemes which benefit from few theoretical guarantees in the underlying nonconvex setting. In this paper, we provide a novel variational formulation of the multivariate Gaussian fitting problem, which is applicable to any dimension and accounts for possible nonzero background and noise in the input data. The block multiconvexity of our objective function leads us to propose a proximal alternating method to minimize it in order to estimate the Gaussian shape parameters. The resulting FIGARO algorithm is shown to converge to a critical point under mild assumptions. The algorithm shows a good robustness when tested on synthetic datasets. To demonstrate the versatility of FIGARO, we also illustrate its excellent performance in the fitting of the point spread functions of experimental raw data from a two-photon fluorescence microscope.
机译:拟合高斯函数对经验数据是各种科学应用中的重要任务,尤其是在图像处理中。然而,大多数用于执行这种配件的现有方法限于两个维度,并且它们不能轻易扩展到更高的尺寸。此外,它们通常基于交替的最小化方案,这些方案受益于底层非凸面设置中的几个理论保证。在本文中,我们提供了多元高斯拟合问题的新型变分制剂,这适用于任何维度,并考虑到输入数据中可能的非零背景和噪声。我们的客观函数的块多态性导致我们提出了一种近端交替方法,以最小化它以估计高斯形状参数。结果图形算法显示在温和的假设下会聚到关键点。该算法在合成数据集上测试时显示出良好的鲁棒性。为了证明图形的多功能性,我们还说明了从双光子荧光显微镜的实验原始数据的点扩散功能的拟合方面的优异性能。

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