文档增强使用可见性检测

Netanel Kligler, S. Katz, A. Tal
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引用次数: 44

摘要

本文重新探讨了文献增强中的经典问题。我们不是针对特定问题提出新的算法,而是引入一种新的通用方法。关键思想是修改任何最先进的算法,通过提供新的信息(输入),改进它自己的结果。有趣的是,这些信息是基于R3中一个看似无关的可见性检测问题的解决方案。我们展示了将图像简单地表示为3D点云,从而为该云的可见性检测提供了一种新的解释。一个点是可见的意味着什么?尽管这个问题在计算机视觉领域已经得到了广泛的研究,但人们总是假设点集是真实场景的采样。我们表明,在我们的上下文中,这个问题的答案揭示了关于图像的独特和有用的信息。我们将演示这种思想对文档二值化和去阴影的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Document Enhancement Using Visibility Detection
This paper re-visits classical problems in document enhancement. Rather than proposing a new algorithm for a specific problem, we introduce a novel general approach. The key idea is to modify any state-of-the-art algorithm, by providing it with new information (input), improving its own results. Interestingly, this information is based on a solution to a seemingly unrelated problem of visibility detection in R3. We show that a simple representation of an image as a 3D point cloud, gives visibility detection on this cloud a new interpretation. What does it mean for a point to be visible? Although this question has been widely studied within computer vision, it has always been assumed that the point set is a sampling of a real scene. We show that the answer to this question in our context reveals unique and useful information about the image. We demonstrate the benefit of this idea for document binarization and for unshadowing.
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