用于人物图像合成的结构变换纹理增强网络

Munan Xu, Yuanqi Chen, Sha Liu, Thomas H. Li, Gezhong Li
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引用次数: 3

摘要

姿态引导虚拟试穿任务是基于姿态转移任务对时尚单品进行修改。这两个任务都属于人物图像合成,具有很强的相关性和相似性。然而,现有的方法将它们视为两个独立的任务,并没有探索它们之间的相关性。此外,由于存在较大的错位和遮挡,这两项任务具有挑战性,因此大多数方法容易产生不清晰的人体结构和模糊的细粒度纹理。在本文中,我们设计了一个结构转换的纹理增强网络来生成高质量的人物图像,并构建两个任务之间的关系。它由两个模块组成:结构转换渲染器和纹理增强样式器。引入结构转换渲染器将源人物结构转换为目标人物结构,引入纹理增强造型器增强细节纹理,并在结构转换的基础上可控地注入时尚风格。通过这两个模块,我们的模型可以生成各种姿势甚至各种时尚风格的逼真人物图像。大量的实验表明,我们的方法在两个任务上达到了最先进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structure-transformed Texture-enhanced Network for Person Image Synthesis
Pose-guided virtual try-on task aims to modify the fashion item based on pose transfer task. These two tasks that belong to person image synthesis have strong correlations and similarities. However, existing methods treat them as two individual tasks and do not explore correlations between them. Moreover, these two tasks are challenging due to large misalignment and occlusions, thus most of these methods are prone to generate unclear human body structure and blurry fine-grained textures. In this paper, we devise a structure-transformed texture-enhanced network to generate high-quality person images and construct the relationships between two tasks. It consists of two modules: structure-transformed renderer and texture-enhanced stylizer. The structure-transformed renderer is introduced to transform the source person structure to the target one, while the texture-enhanced stylizer is served to enhance detailed textures and controllably inject the fashion style founded on the structural transformation. With the two modules, our model can generate photorealistic person images in diverse poses and even with various fashion styles. Extensive experiments demonstrate that our approach achieves state-of-the-art results on two tasks.
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