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Deepzzle: Solving Visual Jigsaw Puzzles With Deep Learning and Shortest Path Optimization

机译:Defezzle:使用深度学习和最短路径优化解决视觉拼图谜题

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摘要

We tackle the image reassembly problem with wide space between the fragments, in such a way that the patterns and colors continuity is mostly unusable. The spacing emulates the erosion of which the archaeological fragments suffer. We crop-square the fragments borders to compel our algorithm to learn from the content of the fragments. We also complicate the image reassembly by removing fragments and adding pieces from other sources. We use a two-step method to obtain the reassemblies: 1) a neural network predicts the positions of the fragments despite the gaps between them; 2) a graph that leads to the best reassemblies is made from these predictions. In this paper, we notably investigate the effect of branch-cut in the graph of reassemblies. We also provide a comparison with the literature, solve complex images reassemblies, explore at length the dataset, and propose a new metric that suits its specificities.
机译:我们在碎片之间的宽空间中解决图像重新组装问题,以这样的方式,即模式和颜色连续性大多是不可用的。间距模拟了考古片段遭受的侵蚀。我们裁剪碎片边界以迫使我们的算法从片段的内容中学习。我们还通过删除片段并从其他来源添加部分来复杂化图像重新组装。我们使用两步方法获取重组:1)神经网络尽管它们之间存在差距,但是碎片的位置; 2)导致最佳重组的图表是由这些预测进行的。在本文中,我们显着研究分支切割在重组图中的影响。我们还提供与文献的比较,解决复杂的图像重组,探索数据集的探索,并提出了一种适合其特殊性的新度量。

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