The development of online economics arouses the demand of generating images of models on product clothes, to display new clothes and promote sales. However, the expensive proprietary model images challenge the existing image virtual try-on methods in this scenario, as most of them need to be trained on considerable amounts of model images accompanied with paired clothes images. In this paper, we propose a cheap yet scalable weakly-supervised method called Deep Generative Projection (DGP) to address this specific scenario. Lying in the heart of the proposed method is to imitate the process of human predicting the wearing effect, which is an unsupervised imagination based on life experience rather than computation rules learned from supervisions. Here a pretrained StyleGAN is used to capture the practical experience of wearing. Experiments show that projecting the rough alignment of clothing and body onto the StyleGAN space can yield photo-realistic wearing results. Experiments on real scene proprietary model images demonstrate the superiority of DGP over several state-of-the-art supervised methods when generating clothing model images.
翻译:在线经济学的发展引发了制作产品服装模型图像的需求,以展示新服装和促进销售。然而,昂贵的专有型模型图像挑战了这一情景中现有的图像虚拟试验方法,因为其中多数需要接受大量与配对服装图像相伴的模型图像培训。在本文中,我们提出了一个廉价但可缩放但受微弱监督的方法,名为“深创预测”(DGP),以应对这一特定情景。拟议方法的核心是模仿人类预测磨损效应的过程,这是基于生活经验而不是基于从监督中学习的计算规则的不受监督的想象力。在这里,一个经过预先训练的StyleGAN用来捕捉穿衣的实际经验。实验表明,在StyleGAN空间上对服装和身体进行粗化的调整,可以产生光现实的穿戴结果。在真实场的专利模型图像上进行的实验表明,DGP在生成服装模型图像时优于若干受监管的状态方法。