Very Long Natural Scenery Image Prediction by Outpainting

Zongxin Yang, Jian Dong, Ping Liu, Yi Yang, Shuicheng Yan
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引用次数: 71

Abstract

Comparing to image inpainting, image outpainting receives less attention due to two challenges in it. The first challenge is how to keep the spatial and content consistency between generated images and original input. The second challenge is how to maintain high quality in generated results, especially for multi-step generations in which generated regions are spatially far away from the initial input. To solve the two problems, we devise some innovative modules, named Skip Horizontal Connection and Recurrent Content Transfer, and integrate them into our designed encoder-decoder structure. By this design, our network can generate highly realistic outpainting prediction effectively and efficiently. Other than that, our method can generate new images with very long sizes while keeping the same style and semantic content as the given input. To test the effectiveness of the proposed architecture, we collect a new scenery dataset with diverse, complicated natural scenes. The experimental results on this dataset have demonstrated the efficacy of our proposed network.
超长自然风光图像预测
与图像内涂相比,图像外涂受到的关注较少,主要有两个方面的挑战。第一个挑战是如何在生成的图像和原始输入之间保持空间和内容的一致性。第二个挑战是如何保持生成结果的高质量,特别是对于生成区域在空间上远离初始输入的多步生成。为了解决这两个问题,我们设计了一些创新的模块,跳过水平连接和循环内容传输,并将它们集成到我们设计的编解码器结构中。通过这种设计,我们的网络可以有效地生成高度逼真的油漆预测。除此之外,我们的方法可以生成具有很长尺寸的新图像,同时保持与给定输入相同的样式和语义内容。为了测试所提出的架构的有效性,我们收集了一个包含多种复杂自然场景的新场景数据集。在该数据集上的实验结果证明了我们所提出的网络的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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