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A local linear level set method for the binarization of degraded historical document images

机译:降级历史文档图像二值化的局部线性水平集方法

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摘要

Document image binarization is a difficult task, especially for complex document images. Nonuniform background, stains, and variation in the intensity of the printed characters are some examples of challenging document features. In this work, binarization is accomplished by taking advantage of local probabilistic models and of a flexible active contour scheme. More specifically, local linear models are used to estimate both the expected stroke and the background pixel intensities. This information is then used as the main driving force in the propagation of an active contour. In addition, a curvature-based force is used to control the viscosity of the contour and leads to more natural-looking results. The proposed implementation benefits from the level set framework, which is highly successful in other contexts, such as medical image segmentation and road network extraction from satellite images. The validity of the proposed approach is demonstrated on both recent and historical document images of various types and languages. In addition, this method was submitted to the Document Image Binarization Contest (DIBCO'09), at which it placed 3rd.
机译:文档图像二值化是一项艰巨的任务,尤其是对于复杂的文档图像。不均匀的背景,污点和打印字符强度的变化是具有挑战性的文档功能的一些示例。在这项工作中,通过利用局部概率模型和灵活的主动轮廓方案来实现二值化。更具体地说,局部线性模型用于估计预期笔划和背景像素强度。然后将该信息用作有效轮廓传播的主要驱动力。此外,基于曲率的力可用于控制轮廓的粘度,并获得更自然的效果。提议的实施受益于级别集框架,该级别集框架在其他情况下非常成功,例如医学图像分割和从卫星图像提取道路网络。各种类型和语言的最新和历史文档图像都证明了该方法的有效性。此外,该方法已提交给文档图像二值化竞赛(DIBCO'09),并在该竞赛中排名第三。

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