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Interactive Sketch Fill: Multiclass Sketch-to-Image Translation

机译:互动素描和填充:多牌素描到图像翻译

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We propose an interactive GAN-based sketch-to-image translation method that helps novice users easily create images of simple objects. The user starts with a sparse sketch and a desired object category, and the network then recommends its plausible completion(s) and shows a corresponding synthesized image. This enables a feedback loop, where the user can edit the sketch based on the network's recommendations, while the network is able to better synthesize the image that the user might have in mind. In order to use a single model for a wide array of object classes, we introduce a gating-based approach for class conditioning, which allows us to generate distinct classes without feature mixing, from a single generator network.
机译:我们提出了一个基于互动的GaN的草图 - 图像转换方法,帮助新手用户轻松创建简单对象的图像。用户从稀疏草图和所需的对象类别开始,然后网络建议其合理的完成并显示相应的合成图像。这使得反馈循环能够基于网络的建议编辑草图,而网络能够更好地合成用户可以记住的图像。为了使用单个模型进行广泛的对象类,我们介绍了一种基于门控的类调节方法,其允许我们从单个发生器网络中没有特征混合的情况生成不同的类。

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