基于映像的未配对数据虚拟试戴网络

A. Neuberger, Eran Borenstein, Bar Hilleli, Eduard Oks, Sharon Alpert
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引用次数: 72

摘要

本文提出了一种新的基于图像的虚拟试穿方法(outfit - viton),它有助于可视化从各种参考图像中选择的服装项目的组合如何在查询图像中形成一个人的内聚服装。我们的算法有两个不同的特性。首先,它是廉价的,因为它只需要大量的单一(不对应的)图像(真实的和目录的),人们穿着不同的服装,没有明确的3D信息。训练阶段只需要单个图像,消除了手动创建图像对的需要,其中一个图像显示穿着特定服装的人,另一个图像单独显示相同的目录服装。其次,它可以将多套服装的图像合成成一套连贯的服装;它还可以控制在最终服装中呈现的服装类型。经过训练后,我们的方法可以从多张穿着衣服的人体模型图像中合成一套有凝聚力的服装,同时将服装与查询人的体型和姿势相匹配。在线优化步骤需要处理精细的细节,如复杂的纹理和徽标。对包含大量形状和风格变化的图像数据集进行定量和定性评估,与现有的最先进的方法相比,显示出更高的准确性,特别是在处理高度详细的服装时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Based Virtual Try-On Network From Unpaired Data
This paper presents a new image-based virtual try-on approach (Outfit-VITON) that helps visualize how a composition of clothing items selected from various reference images form a cohesive outfit on a person in a query image. Our algorithm has two distinctive properties. First, it is inexpensive, as it simply requires a large set of single (non-corresponding) images (both real and catalog) of people wearing various garments without explicit 3D information. The training phase requires only single images, eliminating the need for manually creating image pairs, where one image shows a person wearing a particular garment and the other shows the same catalog garment alone. Secondly, it can synthesize images of multiple garments composed into a single, coherent outfit; and it enables control of the type of garments rendered in the final outfit. Once trained, our approach can then synthesize a cohesive outfit from multiple images of clothed human models, while fitting the outfit to the body shape and pose of the query person. An online optimization step takes care of fine details such as intricate textures and logos. Quantitative and qualitative evaluations on an image dataset containing large shape and style variations demonstrate superior accuracy compared to existing state-of-the-art methods, especially when dealing with highly detailed garments.
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