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Joint Gap Detection and Inpainting of Line Drawings

机译:线缝的联合缝隙检测和修补

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We propose a novel data-driven approach for automatically detecting and completing gaps in line drawings with a Convolutional Neural Network. In the case of existing inpainting approaches for natural images, masks indicating the missing regions are generally required as input. Here, we show that line drawings have enough structures that can be learned by the CNN to allow automatic detection and completion of the gaps without any such input. Thus, our method can find the gaps in line drawings and complete them without user interaction. Furthermore, the completion realistically conserves thickness and curvature of the line segments. All the necessary heuristics for such realistic line completion are learned naturally from a dataset of line drawings, where various patterns of line completion are generated on the fly as training pairs to improve the model generalization. We evaluate our method qualitatively on a diverse set of challenging line drawings and also provide quantitative results with a user study, where it significantly outperforms the state of the art.
机译:我们提出了一种新颖的数据驱动方法,可通过卷积神经网络自动检测并完成线图中的间隙。在用于自然图像的现有修复方法的情况下,通常需要指示缺失区域的蒙版作为输入。在这里,我们显示了线图具有CNN可以学习的足够结构,从而无需任何此类输入就可以自动检测间隙并完成间隙。因此,我们的方法可以找到线条图中的间隙并在没有用户交互的情况下完成它们。此外,完成实际上保留了线段的厚度和曲率。从折线图数据集中自然地学到了用于这种逼真的折线的所有必要试探法,在该数据集中,动态生成了各种折线图样作为训练对,以提高模型的通用性。我们在各种具有挑战性的线条图上定性地评估了我们的方法,并通过用户研究提供了定量的结果,该结果大大优于现有技术。

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