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首页> 外文期刊>Journal of the Optical Society of America, A. Optics, image science, and vision >Iterative linear minimum mean-square-error image restoration from partially known blur
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Iterative linear minimum mean-square-error image restoration from partially known blur

机译:从部分已知的模糊中进行迭代线性最小均方误差图像恢复

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摘要

We address the problem of space-invariant image restoration when the blurring operator is not known exactly, a situation that arises regularly in practice. To account for this uncertainty, we model the point-spread function as the sum of a known deterministic component and an unknown random one. Such an approach has been studied before, but the problem of estimating the parameters of the restoration filter to our knowledge has not been addressed systematically. We propose an approach based on a Gaussian statistical assumption and derive an iterative, expectation-maximization algorithm that simultaneously restores the image and estimates the required filter parameters. We obtain two versions of the algorithm based on two different models for the statistics of the image. The computations are performed in the discrete Fourier transform domain; thus they are computationally efficient even for large images. We examine the convergence properties of the resulting estimators and evaluate their performance experimentally.
机译:当模糊算子不确切知道时,我们解决了空间不变图像恢复的问题,这种情况在实践中经常出现。为了解决这种不确定性,我们将点扩展函数建模为已知确定性分量和未知随机分量之和。以前已经研究过这种方法,但是根据我们的知识估计恢复滤波器的参数的问题尚未得到系统解决。我们提出了一种基于高斯统计假设的方法,并推导了一种迭代,期望最大化算法,该算法可同时还原图像并估算所需的滤波器参数。我们基于两个不同的模型获得了两个版本的算法,用于图像统计。计算在离散傅立叶变换域中进行;因此,即使对于大图像,它们的计算效率也很高。我们检查了结果估计量的收敛性,并通过实验评估了它们的性能。

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