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Autors principals: Zheng, Haitian, Lin, Zhe, Lu, Jingwan, Cohen, Scott, Shechtman, Eli, Barnes, Connelly, Zhang, Jianming, Liu, Qing, Zhou, Yuqian, Amirghodsi, Sohrab, Luo, Jiebo
Format: Preprint
Publicat: 2022
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Accés en línia:https://arxiv.org/abs/2212.06310
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author Zheng, Haitian
Lin, Zhe
Lu, Jingwan
Cohen, Scott
Shechtman, Eli
Barnes, Connelly
Zhang, Jianming
Liu, Qing
Zhou, Yuqian
Amirghodsi, Sohrab
Luo, Jiebo
author_facet Zheng, Haitian
Lin, Zhe
Lu, Jingwan
Cohen, Scott
Shechtman, Eli
Barnes, Connelly
Zhang, Jianming
Liu, Qing
Zhou, Yuqian
Amirghodsi, Sohrab
Luo, Jiebo
contents Structure-guided image completion aims to inpaint a local region of an image according to an input guidance map from users. While such a task enables many practical applications for interactive editing, existing methods often struggle to hallucinate realistic object instances in complex natural scenes. Such a limitation is partially due to the lack of semantic-level constraints inside the hole region as well as the lack of a mechanism to enforce realistic object generation. In this work, we propose a learning paradigm that consists of semantic discriminators and object-level discriminators for improving the generation of complex semantics and objects. Specifically, the semantic discriminators leverage pretrained visual features to improve the realism of the generated visual concepts. Moreover, the object-level discriminators take aligned instances as inputs to enforce the realism of individual objects. Our proposed scheme significantly improves the generation quality and achieves state-of-the-art results on various tasks, including segmentation-guided completion, edge-guided manipulation and panoptically-guided manipulation on Places2 datasets. Furthermore, our trained model is flexible and can support multiple editing use cases, such as object insertion, replacement, removal and standard inpainting. In particular, our trained model combined with a novel automatic image completion pipeline achieves state-of-the-art results on the standard inpainting task.
format Preprint
id arxiv_https___arxiv_org_abs_2212_06310
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Structure-Guided Image Completion with Image-level and Object-level Semantic Discriminators
Zheng, Haitian
Lin, Zhe
Lu, Jingwan
Cohen, Scott
Shechtman, Eli
Barnes, Connelly
Zhang, Jianming
Liu, Qing
Zhou, Yuqian
Amirghodsi, Sohrab
Luo, Jiebo
Computer Vision and Pattern Recognition
Graphics
Structure-guided image completion aims to inpaint a local region of an image according to an input guidance map from users. While such a task enables many practical applications for interactive editing, existing methods often struggle to hallucinate realistic object instances in complex natural scenes. Such a limitation is partially due to the lack of semantic-level constraints inside the hole region as well as the lack of a mechanism to enforce realistic object generation. In this work, we propose a learning paradigm that consists of semantic discriminators and object-level discriminators for improving the generation of complex semantics and objects. Specifically, the semantic discriminators leverage pretrained visual features to improve the realism of the generated visual concepts. Moreover, the object-level discriminators take aligned instances as inputs to enforce the realism of individual objects. Our proposed scheme significantly improves the generation quality and achieves state-of-the-art results on various tasks, including segmentation-guided completion, edge-guided manipulation and panoptically-guided manipulation on Places2 datasets. Furthermore, our trained model is flexible and can support multiple editing use cases, such as object insertion, replacement, removal and standard inpainting. In particular, our trained model combined with a novel automatic image completion pipeline achieves state-of-the-art results on the standard inpainting task.
title Structure-Guided Image Completion with Image-level and Object-level Semantic Discriminators
topic Computer Vision and Pattern Recognition
Graphics
url https://arxiv.org/abs/2212.06310