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首页> 外文期刊>Applied optics >BLIND DECONVOLUTION OF FLUORESCENCE MICROGRAPHS BY MAXIMUM-LIKELIHOOD ESTIMATION
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BLIND DECONVOLUTION OF FLUORESCENCE MICROGRAPHS BY MAXIMUM-LIKELIHOOD ESTIMATION

机译:荧光显微图像的最大似然估计盲卷积

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摘要

We report some recent algorithmic refinements and the resulting simulated and real image reconstructions of fluorescence micrographs by using a blind-deconvolution algorithm based on maximum-likelihood estimation. Blind-deconvolution methods encompass those that do not require either calibrated or theoretical predetermination of the point-spread function (PSF). Instead, a blind deconvolution reconstructs the PSF concurrently with deblurring of the image data. Two-dimensional computer simulations give some definitive evidence of the integrity of the reconstructions of both the fluorescence concentration and the PSF. A reconstructed image and a reconstructed PSF from a two-dimensional fluorescent data set show that the blind version of the algorithm produces images that are comparable with those previously produced by a precursory nonblind version of the algorithm. They furthermore show a remarkable similarity, albeit not perfectly identical, with a PSF measurement taken for the same data set, provided by Agard and colleagues. A reconstructed image of a three-dimensional confocal data set shows a substantial axial smear removal. There is currently an existing trade-off in using the blind deconvolution in that it converges at a slightly slower rate than the nonblind approach. Future research, of course, will address this present limitation. [References: 33]
机译:我们报告了一些最近的算法改进和通过使用基于最大似然估计的盲反卷积算法对荧光显微照片进行模拟和真实图像重建。盲解卷积方法包括那些不需要对点扩展函数(PSF)进行校准或理论上预先确定的方法。取而代之的是,盲解卷积在对图像数据进行去模糊的同时重建PSF。二维计算机模拟为荧光浓度和PSF重建的完整性提供了确定的证据。来自二维荧光数据集的重建图像和PSF重建结果表明,该算法的盲版产生的图像与以前由该算法的先验非盲版产生的图像相当。他们还显示出了惊人的相似性,尽管并非完全相同,但由Agard及其同事对同一数据集进行了PSF测量。三维共聚焦数据集的重建图像显示了基本的轴向涂片去除。当前使用盲解卷积存在一个折衷,因为它会以比非盲法慢的速率收敛。当然,未来的研究将解决这个当前的限制。 [参考:33]

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