Multi-branch Semantic Learning Network for Text-to-Image Synthesis

Jiading Ling, Xingcai Wu, Zhenguo Yang, Xudong Mao, Qing Li, Wenyin Liu
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Abstract

In this paper, we propose a multi-branch semantic learning network (MSLN) to generate image according to textual description by taking into account global and local textual semantics, which consists of two stages. The first stage generates a coarse-grained image based on the sentence features. In the second stage, a multi-branch fine-grained generation model is constructed to inject the sentence-level and word-level semantics into two coarse-grained images by global and local attention modules, which generate global and local fine-grained image textures, respectively. In particular, we devise a channel fusion module (CFM) to fuse the global and local fine-grained features in the multi-branch fine-grained stage and generate the output image. Extensive experiments conducted on the CUB-200 dataset and Oxford-102 dataset demonstrate the superior performance of the proposed method. (e.g., FID is reduced from 16.09 to 14.43 on CUB-200).
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用于文本到图像合成的多分支语义学习网络
在本文中,我们提出了一种多分支语义学习网络(MSLN)来根据文本描述生成图像,该网络考虑了全局和局部文本语义,分为两个阶段。第一阶段根据句子特征生成粗粒度图像。第二阶段,构建多分支细粒度生成模型,通过全局关注模块和局部关注模块将句子级和词级语义注入两幅粗粒度图像中,分别生成全局和局部细粒度图像纹理;特别地,我们设计了一个通道融合模块(CFM)来融合多分支细粒度阶段的全局和局部细粒度特征并生成输出图像。在CUB-200数据集和Oxford-102数据集上进行的大量实验证明了该方法的优越性能。(例如,在cube -200上FID从16.09降低到14.43)。
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