A Task is Worth One Word: Learning with Task Prompts for High-Quality Versatile Image Inpainting

Junhao Zhuang, Yanhong Zeng, WENRAN LIU, Chun Yuan*, Kai Chen* ;

Abstract


"Advancing image inpainting is challenging as it requires filling user-specified regions for various intents, such as background filling and object synthesis. Existing approaches focus on either context-aware filling or object synthesis using text descriptions. However, achieving both tasks simultaneously is challenging due to differing training strategies. To overcome this challenge, we introduce , the first high-quality and versatile inpainting model that excels in multiple inpainting tasks. First, we introduce learnable task prompts along with tailored fine-tuning strategies to guide the model’s focus on different inpainting targets explicitly. This enables to accomplish various inpainting tasks by utilizing different task prompts, resulting in state-of-the-art performance. Second, we demonstrate the versatility of the task prompt in by showcasing its effectiveness as a negative prompt for object removal. Moreover, we leverage prompt interpolation techniques to enable controllable shape-guided object inpainting, enhancing the model’s applicability in shape-guided applications. Finally, we conduct extensive experiments and applications to verify the effectiveness of . We release our codes and models on our project page: https://powerpaint.github.io/."

Related Material


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