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引用次数: 3

摘要

尽管取得了惊人的进步,但生成复杂场景的逼真图像仍然是一个具有挑战性的问题。最近,布局到图像的合成方法通过在边界框列表和相应的类标签上调节生成器,引起了人们的极大兴趣。然而,以前的方法是非常严格的,因为标签集是先验固定的。同时,文本到图像的合成方法也有了很大的改进,为条件图像生成提供了一种灵活的方式。在这项工作中,我们引入密集文本到图像(DT2I)合成作为一项新任务,为更直观的图像生成铺平道路。此外,我们提出了一种从语义丰富的区域描述生成图像的新方法DTC-GAN,以及一种多模态区域特征匹配损失来促进语义图像-文本匹配。我们的结果证明了我们的方法能够使用区域说明生成复杂场景的可信图像。
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DT2I: Dense Text-to-Image Generation from Region Descriptions
Despite astonishing progress, generating realistic images of complex scenes remains a challenging problem. Recently, layout-to-image synthesis approaches have attracted much interest by conditioning the generator on a list of bounding boxes and corresponding class labels. However, previous approaches are very restrictive because the set of labels is fixed a priori. Meanwhile, text-to-image synthesis methods have substantially improved and provide a flexible way for conditional image generation. In this work, we introduce dense text-to-image (DT2I) synthesis as a new task to pave the way toward more intuitive image generation. Furthermore, we propose DTC-GAN, a novel method to generate images from semantically rich region descriptions, and a multi-modal region feature matching loss to encourage semantic image-text matching. Our results demonstrate the capability of our approach to generate plausible images of complex scenes using region captions.
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