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Skeletonization of Low-Quality Characters Based on Point Cloud Model

机译:基于点云模型的低质字符骨架化

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Skeletonization of low-quality Characters (LCs) is a very difficult problem. Since only detected contours (DCs) are known, existing methods focus on how to extract skeletons only from well located real contours (RCs), named real contour model (RCM), perform very badly. A new model, named point cloud model (PCM) is proposed to replace RCM in extracting skeletons for LCs. PCM can preserve more information for LCs and can obtain satisfied skeletons for LCs based on principal curves. The experimental results also show that our method proposed in this paper can obtain satisfied skeletons for LCs, especially in preserving topology and being consistent with the human perception even in serious quality reduction.
机译:劣质字符(LC)的骨架化是一个非常困难的问题。由于仅已知检测到的轮廓(DC),因此现有方法集中于如何仅从定位良好的真实轮廓(RC)(称为真实轮廓模型(RCM))中提取骨骼的效果非常差。提出了一种新的模型,命名为点云模型(PCM)来代替RCM提​​取LC的骨架。 PCM可以保留有关LC的更多信息,并可以基于主曲线获得满意的LC骨架。实验结果还表明,本文提出的方法能够获得满意的LC骨架,特别是在保留拓扑结构的同时,甚至在严重降低质量的情况下也能与人的感知保持一致。

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