CVGRLGJun 11, 2021

Toward Accurate and Realistic Outfits Visualization with Attention to Details

arXiv:2106.06593v158 citations
Originality Incremental advance
AI Analysis

This addresses the problem of low-quality virtual try-on for fashion e-commerce, offering incremental but practical enhancements over prior methods.

The paper tackles the challenge of generating realistic and artifact-free virtual try-on images for multiple garments, achieving substantial improvements in quality and detail accuracy for commercial applications.

Virtual try-on methods aim to generate images of fashion models wearing arbitrary combinations of garments. This is a challenging task because the generated image must appear realistic and accurately display the interaction between garments. Prior works produce images that are filled with artifacts and fail to capture important visual details necessary for commercial applications. We propose Outfit Visualization Net (OVNet) to capture these important details (e.g. buttons, shading, textures, realistic hemlines, and interactions between garments) and produce high quality multiple-garment virtual try-on images. OVNet consists of 1) a semantic layout generator and 2) an image generation pipeline using multiple coordinated warps. We train the warper to output multiple warps using a cascade loss, which refines each successive warp to focus on poorly generated regions of a previous warp and yields consistent improvements in detail. In addition, we introduce a method for matching outfits with the most suitable model and produce significant improvements for both our and other previous try-on methods. Through quantitative and qualitative analysis, we demonstrate our method generates substantially higher-quality studio images compared to prior works for multi-garment outfits. An interactive interface powered by this method has been deployed on fashion e-commerce websites and received overwhelmingly positive feedback.

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