针对无配对图像到图像翻译的背景聚焦对比学习

IF 1 4区 计算机科学 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Journal of Electronic Imaging Pub Date : 2024-07-01 DOI:10.1117/1.jei.33.4.043023
Mingwen Shao, Minggui Han, Lingzhuang Meng, Fukang Liu
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引用次数: 0

摘要

用于无配对图像到图像转换的对比学习(CUT)旨在利用无配对数据集学习从源域到目标域的映射,该映射结合了对比损失以最大化真实图像和生成图像之间的互信息。然而,现有的基于 CUT 的方法由于对物体和背景的错误定位而表现出不尽人意的视觉质量,特别是在布局变化的数据集中,它错误地转换背景以匹配物体模式。为了缓解这一问题,我们提出了针对无配对图像到图像转换的背景聚焦对比学习(BFCUT),以改善真实图像和生成图像之间的背景一致性。具体来说,我们首先生成热图,明确定位对象和背景,以进行后续的对比度损失和全局背景相似性损失。然后,选择具有代表性的对象和背景查询,而不是随机抽样查询进行对比度损失,以促进对象的真实性和背景的维护。同时,借助热图提取对象信息较少的全局语义向量,并进一步对齐真实图像的向量及其对应的生成图像,以促进全局背景相似性损失中的背景维护。我们的 BFCUT 可减轻背景的错误平移,生成更逼真的图像。在三个数据集上进行的广泛实验证明了更好的定量结果和定性视觉效果。
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Background-focused contrastive learning for unpaired image-to-image translation
Contrastive learning for unpaired image-to-image translation (CUT) aims to learn a mapping from source to target domain with an unpaired dataset, which combines contrastive loss to maximize the mutual information between real and generated images. However, the existing CUT-based methods exhibit unsatisfactory visual quality due to the wrong locating of objects and backgrounds, particularly where it incorrectly transforms the background to match the object pattern in layout-changing datasets. To alleviate the issue, we present background-focused contrastive learning for unpaired image-to-image translation (BFCUT) to improve the background’s consistency between real and its generated images. Specifically, we first generate heat maps to explicitly locate the objects and backgrounds for subsequent contrastive loss and global background similarity loss. Then, the representative queries of objects and backgrounds rather than randomly sampling queries are selected for contrastive loss to promote reality of objects and maintenance of backgrounds. Meanwhile, global semantic vectors with less object information are extracted with the help of heat maps, and we further align the vectors of real images and their corresponding generated images to promote the maintenance of the backgrounds in global background similarity loss. Our BFCUT alleviates the wrong translation of backgrounds and generates more realistic images. Extensive experiments on three datasets demonstrate better quantitative results and qualitative visual effects.
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来源期刊
Journal of Electronic Imaging
Journal of Electronic Imaging 工程技术-成像科学与照相技术
CiteScore
1.70
自引率
27.30%
发文量
341
审稿时长
4.0 months
期刊介绍: The Journal of Electronic Imaging publishes peer-reviewed papers in all technology areas that make up the field of electronic imaging and are normally considered in the design, engineering, and applications of electronic imaging systems.
期刊最新文献
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