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首页> 外文期刊>Journal of Microscopy >Generalized approach for accelerated maximum likelihood based image restoration applied to three-dimensional fluorescence microscopy.
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Generalized approach for accelerated maximum likelihood based image restoration applied to three-dimensional fluorescence microscopy.

机译:基于加速最大似然的图像恢复的通用方法应用于三维荧光显微镜。

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For deconvolution applications in three-dimensional microscopy we derived and implemented a generic, accelerated maximum likelihood image restoration algorithm. A conjugate gradient iteration scheme was used considering either Gaussian or Poisson noise models. Poisson models are better suited to low intensity fluorescent image data; typically, they show smaller restoration errors and smoother results. For the regularization, we modified the standard Tikhonov method. However, the generic design of the algorithm allows for more regularization approaches. The Hessian matrix of the restoration functional was used to determine the step size. We compared restoration error and convergence behaviour between the classical line-search and the Hessian matrix method. Under typical working conditions, the restoration error did not increase over that of the line-search and the speed of convergence did not significantly decrease allowing for a twofold increase in processing speed. To determine the regularization parameter, we modified the generalized cross-validation method. Tests that were done on both simulated and experimental fluorescence wide-field data show reliable results.
机译:对于三维显微镜中的反卷积应用,我们推导并实现了一种通用的,加速的最大似然图像恢复算法。考虑了高斯或泊松噪声模型,使用了共轭梯度迭代方案。泊松模型更适合于低强度荧光图像数据。通常,它们显示出较小的恢复误差并获得更平滑的结果。为了进行正则化,我们修改了标准的Tikhonov方法。但是,算法的通用设计允许使用更多的正则化方法。恢复功能的Hessian矩阵用于确定步长。我们比较了经典线搜索和Hessian矩阵方法之间的恢复误差和收敛行为。在典型的工作条件下,恢复误差不会超过线搜索的误差,并且收敛速度不会显着降低,从而使处理速度提高了两倍。为了确定正则化参数,我们修改了通用交叉验证方法。在模拟和实验荧光广域数据上进行的测试均显示出可靠的结果。

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