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Single-image motion deblurring using an adaptive image prior

机译:使用自适应图像先验对单图像运动进行去模糊

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摘要

Blind deblurring is the restoration of a sharp image from a blurred image when the blur kernel is unknown. Most image deblurring algorithms impose a uniform sparse gradient prior on the whole image, and reconstruct the image with piecewise smooth characteristics. Although the sparse gradient prior removes ringing and noise artifacts, it inevitably removes mid-frequency structures, leading to poor visual quality. The gradient profile of fractal-like structures is close to a Gaussian distribution, and small gradients from such regions are severely penalized by the sparse gradient prior. In this paper, we introduce an image deblurring algorithm that adapts the image prior to the underlying detailed structures. The statistics of a local detailed structure can be different from those of the global structure. By identifying the correct image prior for each pixel in the image, our approach models the spatially varying motion blur exhibited by camera motion more effectively than conventional methods based on space-invariant blur kernels. Using different priors for the local region and the motion blur kernel, we derive a minimization energy function that alternates between blur kernel estimation and deblurring image restoration until convergence. Experimental results demonstrate that the proposed approach is efficient and effective in reducing motion blur in an arbitrary direction in a single image.
机译:盲去模糊是当模糊内核未知时从模糊图像恢复清晰图像。大多数图像去模糊算法会先在整个图像上施加均匀的稀疏梯度,然后重建具有分段平滑特征的图像。尽管先验的稀疏梯度消除了振铃和噪声伪像,但它不可避免地消除了中频结构,从而导致较差的视觉质量。分形状结构的梯度分布接近高斯分布,并且先验稀疏梯度会严重惩罚来自此类区域的小梯度。在本文中,我们介绍了一种图像去模糊算法,该算法先对图像进行底层详细结构调整。局部详细结构的统计信息可能与全局结构的统计信息不同。通过为图像中的每个像素先验识别正确的图像,我们的方法比基于空间不变模糊核的常规方法更有效地对相机运动表现出的空间变化运动模糊进行建模。对局部区域和运动模糊内核使用不同的先验,我们得出了一个最小化能量函数,该函数在模糊内核估计和图像去模糊处理之间交替,直到收敛为止。实验结果表明,该方法在减少单个图像中任意方向的运动模糊方面是有效的。

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