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SingleGAN: Image-to-Image Translation by a Single-Generator Network Using Multiple Generative Adversarial Learning

机译:SYPERINGGAN:使用多个生成对抗性学习的单一发电机网络图像到图像转换

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Image translation is a burgeoning field in computer vision where the goal is to learn the mapping between an input image and an output image. However, most recent methods require multiple generators for modeling different domain mappings, which are inefficient and ineffective on some multi-domain image translation tasks. In this paper, we propose a novel method, SingleGAN, to perform multi-domain image-to-image translations with a single generator. We introduce the domain code to explicitly control the different generative tasks and integrate multiple optimization goals to ensure the translation. Experimental results on several unpaired datasets show superior performance of our model in translation between two domains. Besides, we explore variants of SingleGAN for different tasks, including one-to-many domain translation, many-to-many domain translation and one-to-one domain translation with multimodality. The extended experiments show the universality and extensibility of our model.
机译:图像转换是计算机视觉中的新兴字段,其中目标是学习输入图像和输出图像之间的映射。然而,大多数最近的方法需要多个生成器来建模不同的域映射,这对一些多域图像转换任务对效率低和无效。在本文中,我们提出了一种新的方法,单一的方法,用单个发电机执行多域图像到图像转换。我们介绍域代码以显式控制不同的生成任务,并集成多种优化目标以确保翻译。几个未配对数据集的实验结果显示了我们在两个域之间翻译模式的卓越性能。此外,我们探索Singlegan的不同任务的变体,包括一对多域名翻译,多对多域转换和一个具有多模的一对一域转换。扩展实验显示了我们模型的普遍性和可扩展性。

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