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Multiframe blind deconvolution, super-resolution, and saturation correction via incremental EM

机译:通过增量EM进行多帧盲解卷积,超分辨率和饱和度校正

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We formulate the multiframe blind deconvolution problem in an incremental expectation maximization (EM) framework. Beyond deconvolution, we show how to use the same framework to address: (i) super-resolution despite noise and unknown blurring; (ii) saturation-correction of overexposed pixels that confound image restoration. The abundance of data allows us to address both of these without using explicit image or blur priors. The end result is a simple but effective algorithm with no hyperparameters. We apply this algorithm to real-world images from astronomy and to super resolution tasks: for both, our algorithm yields increased resolution and deconvolved images simultaneously.
机译:我们在增量期望最大化(EM)框架中制定了多帧盲反卷积问题。除反卷积之外,我们还将展示如何使用相同的框架来解决:(i)尽管有噪声和未知的模糊,但仍具有超分辨率; (ii)对图像复原造成混淆的曝光过度像素的饱和度校正。大量的数据使我们能够在不使用显式图像或模糊先验的情况下解决这两个问题。最终结果是一种简单但有效的算法,没有超参数。我们将此算法应用于天文学和超分辨率任务的现实世界图像:对于这两种算法,我们的算法都能同时产生分辨率提高和反卷积的图像。

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