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Image prior combination in space-variant blur deconvolution for the dual exposure problem

机译:针对双曝光问题的空间变量模糊反卷积中的图像先验组合

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In this paper we propose a space-variant blur estimation and effective deconvolution method when combining a long exposure blurry image with a short exposure noisy one. The blur in the long exposure shot is mainly caused by camera shake or object motion, and the noise of the underexposed image is introduced by the gain factor applied to the sensor when the ISO is set to a high value. The image pair is divided in overlapping patches for processing. The main idea in this work is to incorporate a combination of prior image models to a spatially-varying deblurring/denoising framework which is applied to each patch. The method exploits kernel and parameters estimation to choose between denoise or deblur each patch. In addition, the proposed approach estimates all necessary parameters automatically without user supervision. Experiments on both synthetic and real images validate the used approach.
机译:本文提出了一种将长曝光模糊图像和短曝光噪声图像组合在一起的空间变量模糊估计和有效的去卷积方法。长时间曝光拍摄中的模糊主要是由相机震动或物体运动引起的,当ISO设置为高值时,曝光不足的图像的噪声是由应用于传感器的增益系数引起的。图像对分为重叠的小块进行处理。这项工作的主要思想是将先前的图像模型结合到应用于每个补丁的空间变化的去模糊/去噪框架中。该方法利用内核和参数估计在每个补丁的降噪或去模糊之间进行选择。另外,所提出的方法自动估计所有必要的参数,而无需用户监督。在合成图像和真实图像上进行的实验验证了所使用的方法。

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