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Fast motion deblurring

机译:快速运动去模糊

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This paper presents a fast deblurring method that produces a deblurring result from a single image of moderate size in a few seconds. We accelerate both latent image estimation and kernel estimation in an iterative deblurring process by introducing a novel prediction step and working with image derivatives rather than pixel values. In the prediction step, we use simple image processing techniques to predict strong edges from an estimated latent image, which will be solely used for kernel estimation. With this approach, a computationally efficient Gaussian prior becomes sufficient for deconvolution to estimate the latent image, as small deconvolution artifacts can be suppressed in the prediction. For kernel estimation, we formulate the optimization function using image derivatives, and accelerate the numerical process by reducing the number of Fourier transforms needed for a conjugate gradient method. We also show that the formulation results in a smaller condition number of the numerical systemthan the use of pixel values, which gives faster convergence. Experimental results demonstrate that our method runs an order of magnitude faster than previous work, while the deblurring quality is comparable. GPU implementation facilitates further speed-up, making our method fast enough for practical use.
机译:本文提出了一种快速的去模糊方法,该方法可以在几秒钟内从中等大小的单个图像中产生去模糊结果。通过引入新颖的预测步骤并处理图像导数而不是像素值,我们在迭代去模糊过程中加速了潜像估计和核估计。在预测步骤中,我们使用简单的图像处理技术从估计的潜像中预测强边缘,该潜像将仅用于内核估计。使用这种方法,由于在预测中可以抑制小的反卷积伪像,因此计算有效的高斯先验足以进行反卷积以估计潜像。对于核估计,我们使用图像导数制定优化函数,并通过减少共轭梯度法所需的傅立叶变换数量来加速数值过程。我们还表明,与使用像素值相比,该公式导致数值系统的条件数更小,从而可以更快地收敛。实验结果表明,我们的方法运行速度比以前的工作快一个数量级,而去模糊的质量是可比的。 GPU的实施有助于进一步加快速度,使我们的方法足够快地投入实际使用。

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