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Weakly Supervised High-Fidelity Clothing Model Generation

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arxiv 2112.07200 v1 pith:FC77YN2R submitted 2021-12-14 cs.CV cs.AI

Weakly Supervised High-Fidelity Clothing Model Generation

classification cs.CV cs.AI
keywords imagesmodelclothesclothingwearingexperienceexperimentsgenerating
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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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.

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