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Geometry-based PSF estimation and deblurring of defocused images with depth information

机译:基于几何的PSF估计和具有深度信息的散焦图像去模糊

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We propose in this paper an algorithm to recover the blurred details of an image caused by defocusing during the photo-taking. Our algorithm takes one RGB image as well as its depth map as the input. We build up a model in which each captured image pixel is regarded as a light-emitting source that goes through a synthetic camera system. Thanks to the depth map, we have the geometrical information of the scene so that the point spread function (PSF) can be derived for each pixel more accurately as compared to conventional approaches where only RGB images are involved. Then, we make use of the derived PSFs to solve an optimization so as to reconstruct an all-in-focus image. The reconstructed results are evaluated by comparison with the original all-in-focus images. Compared to other methods for the deblurring of defocused images, our method shows a better recovery of image details.
机译:在本文中,我们提出了一种算法来恢复由于在照相过程中散焦而引起的图像模糊细节。我们的算法将一张RGB图像及其深度图作为输入。我们建立了一个模型,在该模型中,每个捕获的图像像素均被视为通过合成照相机系统的发光源。多亏了深度图,我们才有了场景的几何信息,因此与仅包含RGB图像的常规方法相比,可以为每个像素更精确地得出点扩展函数(PSF)。然后,我们利用导出的PSF来解决优化问题,从而重建全焦点图像。通过与原始全焦点图像进行比较来评估重建结果。与散焦图像去模糊的其他方法相比,我们的方法显示出更好的图像细节恢复。

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