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A Convolutional Neural Network Based Two-Stage Document Deblurring

机译:基于卷积神经网络的两阶段文档去模糊

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Blurring often happens when capturing documents with hand held cameras, which has negative effects on the Optical Character Recognition systems. In this paper, we propose a Convolutional Neural Network (CNN) based two-stage deblurring method. The method can deal with both real motion blur and focal blur situations, while it does not require exact estimation of the blur kernel. To achieve this, the whole blur kernel space is divided into several degradative sub-spaces. Firstly, a CNN classifier is trained to predict which sub-space the blurry image belongs to at the patch level. Then, several patches voting for the specific blur kernel sub-space is developed. Given the strong learning ability of CNN, only one CNN model corresponding to a degradative kernel sub-space is trained to restore the sharp images in the image restoration step. Experimental results show that the proposed approach performs well on the real blurring document images. In addition, we demonstrate that the proposed method could also handle the spatially-varying blurring.
机译:当使用手持摄像机捕获文档时,经常会出现模糊现象,这会对光学字符识别系统产生负面影响。在本文中,我们提出了一种基于卷积神经网络(CNN)的两阶段去模糊方法。该方法可以处理真实的运动模糊和聚焦模糊情况,而无需精确估计模糊内核。为此,将整个模糊内核空间划分为几个退化的子空间。首先,对CNN分类器进行训练,以预测斑块级别上模糊图像属于哪个子空间。然后,开发了投票给特定模糊内核子空间的补丁。鉴于CNN的强大学习能力,在图像恢复步骤中,仅训练一个与退化内核子空间相对应的CNN模型以恢复清晰的图像。实验结果表明,该方法在真实的模糊文档图像上表现良好。另外,我们证明了所提出的方法还可以处理空间变化的模糊。

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