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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A multi-scale framework for adaptive binarization of degraded document images
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A multi-scale framework for adaptive binarization of degraded document images

机译:降级文档图像自适应二值化的多尺度框架

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摘要

In this work, a multi-scale binarization framework is introduced, which can be used along with any adaptive threshold-based binarization method. This framework is able to improve the binarization results and to restore weak connections and strokes, especially in the case of degraded historical documents. This is achieved thanks to localized nature of the framework on the spatial domain. The framework requires several binarizations on different scales, which is addressed by introduction of fast grid-based models. This enables us to explore high scales which are usually unreachable to the traditional approaches. In order to expand our set of adaptive methods, an adaptive modification of Otsu's method, called AdOtsu, is introduced. In addition, in order to restore document images suffering from bleed-through degradation, we combine the framework with recursive adaptive methods. The framework shows promising performance in subjective and objective evaluations performed on available datasets.
机译:在这项工作中,介绍了一种多尺度二值化框架,该框架可与任何基于阈值的自适应二值化方法一起使用。该框架能够改善二值化结果并恢复弱连接和笔画,特别是在历史文档降级的情况下。这要归功于框架在空间域上的局部性。该框架需要在不同规模上进行几种二值化,这可以通过引入基于快速网格的模型来解决。这使我们能够探索通常是传统方法无法达到的高水平。为了扩展我们的自适应方法集,引入了对Otsu方法的自适应修改,称为AdOtsu。另外,为了恢复遭受渗色降解的文档图像,我们将框架与递归自适应方法结合在一起。该框架在对可用数据集进行的主观和客观评估中显示出令人鼓舞的性能。

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