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Art2Contour: Salient Contour Detection in Artworks Using Generative Adversarial Networks

机译:Art2Contour:使用生成对抗网络在艺术品中进行显着轮廓检测

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Artists or art workshops often reuse their motifs directly or in a slightly amended form. To allow a better comparison of these artworks, salient contours are extracted that reduce them to the most important lines or boundaries. For this task, we propose a generative adversarial network (GAN) based approach to learn the mapping from artwork images to contour drawings in a supervised manner. We introduce the combination of multiple regression task losses to encourage the learning of salient contours. For the evaluation, we created a dataset of high-resolution prints and paintings and corresponding annotated ground truth drawings. We show that our method visually and quantitatively outperforms competing methods in contour detection on prints and paintings.
机译:艺术家或艺术研讨会经常直接重复使用他们的主题或以略微修正的形式重复使用。为了更好地比较这些艺术品,提取突出轮廓,从而将它们减少到最重要的线条或边界。对于此任务,我们提出了一种基于生成的对抗性网络(GAN)方法,用于以监督方式从图稿图像到轮廓图的映射。我们介绍了多元回归任务损失的组合,以鼓励学习突出轮廓。对于评估,我们创建了一个高分辨率打印和绘画的数据集,以及相应的注释地面真相图。我们表明我们的方法在视觉上和定量地优于竞争方法在印刷和绘画上的轮廓检测中。

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