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From Motion Blur to Motion Flow: a Deep Learning Solution for Removing Heterogeneous Motion Blur

机译:从运动模糊到运动流程:用于去除异构运动模糊的深度学习解决方案

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Removing pixel-wise heterogeneous motion blur is challenging due to the ill-posed nature of the problem. The predominant solution is to estimate the blur kernel by adding a prior, but extensive literature on the subject indicates the difficulty in identifying a prior which is suitably informative, and general. Rather than imposing a prior based on theory, we propose instead to learn one from the data. Learning a prior over the latent image would require modeling all possible image content. The critical observation underpinning our approach, however, is that learning the motion flow instead allows the model to focus on the cause of the blur, irrespective of the image content. This is a much easier learning task, but it also avoids the iterative process through which latent image priors are typically applied. Our approach directly estimates the motion flow from the blurred image through a fully-convolutional deep neural network (FCN) and recovers the unblurred image from the estimated motion flow. Our FCN is the first universal end-to-end mapping from the blurred image to the dense motion flow. To train the FCN, we simulate motion flows to generate synthetic blurred-image-motion-flow pairs thus avoiding the need for human labeling. Extensive experiments on challenging realistic blurred images demonstrate that the proposed method outperforms the state-of-the-art.
机译:删除像素 - 明智的异构运动模糊是挑战,由于问题的不良性质。主要的解决方案是通过在主题上添加之前但广泛的文献来估算模糊内核,这表明难以识别适当信息的前提和一般。我们提出从数据中学习一个,而不是基于理论强加先前。在潜像上学习先前将需要建模所有可能的图像内容。然而,基于我们的方法的临界观察是学习运动流程,而是允许模型专注于模糊的原因,而不管图像内容如何。这是一个更简单的学习任务,但它还避免了潜在图像前提者的迭代过程。我们的方法直接通过完全卷积的深神经网络(FCN)从模糊图像估计运动流程,并从估计的运动流中恢复未碰巧的图像。我们的FCN是从模糊图像到密集运动流的第一个通用端到端映射。为了训练FCN,我们模拟运动流动以产生合成模糊图像 - 运动流动对,从而避免需要人类标记。关于具有挑战性的现实模糊图像的广泛实验表明,所提出的方法优于最先进的方法。

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