首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Multiresolution-based weighted regularization for denoised image interpolation from scattered samples with application to confocal microscopy
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Multiresolution-based weighted regularization for denoised image interpolation from scattered samples with application to confocal microscopy

机译:基于多分辨率的散射样本与施用到共聚焦显微镜的图像插值的加权正则化

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摘要

The problem of reconstructing an image from nonuniformly spaced, spatial point measurements is frequently encountered in bioimaging and other scientific disciplines. The most successful class of methods in handling this problem uses the regularization approach involving the minimization of a derivative-based roughness functional. It has been well demonstrated, in the presence of noise, that nonquadratic roughness functionals such as l(1), measure yield better performance compared to the quadratic ones in inverse problems in general and in deconvolution in particular. However, for the present problem, all well-evaluated methods use quadratic roughness measures; indeed, l(1) performs worse than the quadratic roughness when the sampling density is low. This is due to the fact that the mutual incoherence between the measurement operator (dirac-delta) and the regularization operator (derivative) is low in the present problem. Here we develop a new multiresolution-based roughness functional that performs better than l(1) and quadratic functionals under a wide range of sampling densities. We also propose an efficient iterative method for minimizing the resulting cost function. We demonstrate the superiority of the proposed regularization functional in the context of reconstructing full images from nonuniformly undersampled data obtained from a confocal microscope. (C) 2018 Optical Society of America
机译:从非均匀间隔,空间点测量重建图像的问题经常遇到在生物体和其他科学学科中。处理此问题的最成功的方法使用涉及最小化基于衍生的粗糙度功能的正则化方法。在噪声存在下,它得到了很好的说明,即L(1),例如L(1),测量与一般反转问题的二次出现问题相比,测量的性能更好。但是,对于目前的问题,所有良好评估的方法都使用二次粗糙度措施;实际上,当采样密度低时,L(1)比二次粗糙度更差。这是由于测量运算符(DIRAC-DELTA)与正则化操作员(衍生物)之间的相互间断不相停在目前的问题中。在这里,我们开发了一种基于新的多分辨率的粗糙度函数,该粗糙度函数优于L(1)和在各种采样密度下的二次功能。我们还提出了一种有效的迭代方法,可最大限度地减少所产生的成本函数。我们在从共聚焦显微镜中获得的非均匀性上采样数据重建完整图像的背景下,展示了所提出的正则化功能的优越性。 (c)2018年光学学会

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