DiffSketching:用扩散模型合成草图控制图像

Qiang Wang, Di Kong, Fengyin Lin, Yonggang Qi
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引用次数: 4

摘要

创意素描是一种普遍的视觉表达方式,但从抽象素描中翻译图像是非常具有挑战性的。传统上,为草图到图像的合成创建深度学习模型需要克服没有视觉细节的扭曲输入草图,并且需要收集大规模的草图图像数据集。我们首先通过使用扩散模型来研究这个任务。我们的模型通过跨域约束匹配草图,并使用分类器更准确地指导图像合成。大量实验证明,我们的方法既能忠实于用户输入的草图,又能保持合成图像结果的多样性和想象力。我们的模型在生成质量和人工评估方面优于基于gan的方法,并且不依赖于大量的草图图像数据集。此外,我们还介绍了我们的方法在图像编辑和插值中的应用。
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DiffSketching: Sketch Control Image Synthesis with Diffusion Models
Creative sketch is a universal way of visual expression, but translating images from an abstract sketch is very challenging. Traditionally, creating a deep learning model for sketch-to-image synthesis needs to overcome the distorted input sketch without visual details, and requires to collect large-scale sketch-image datasets. We first study this task by using diffusion models. Our model matches sketches through the cross domain constraints, and uses a classifier to guide the image synthesis more accurately. Extensive experiments confirmed that our method can not only be faithful to user's input sketches, but also maintain the diversity and imagination of synthetic image results. Our model can beat GAN-based method in terms of generation quality and human evaluation, and does not rely on massive sketch-image datasets. Additionally, we present applications of our method in image editing and interpolation.
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