论文标题
通过形状匹配和多个扭曲,朝着准确和现实的虚拟试验
Toward Accurate and Realistic Virtual Try-on Through Shape Matching and Multiple Warps
论文作者
论文摘要
虚拟的尝试方法采用产品图像和模型的图像,并生成佩戴产品的模型图像。大多数方法基本上将WARP从产品图像计算为模型图像,并使用图像生成方法组合。但是,获得现实的形象是具有挑战性的,因为服装的运动学很复杂,并且由于图像中的轮廓,纹理和阴影提示揭示了对人类观众的错误。衣服必须有适当的窗帘;必须扭曲质地,以与悬垂衣服的形状保持一致;小细节(按钮,项圈,翻领,口袋等)必须适当地放在服装上,依此类推。评估特别困难,通常是定性的。 本文对充满挑战的新型数据集使用定量评估,以证明(a)对于任何翘曲方法,人们可以自动选择目标模型以改善结果,并且(b)学习多个协调的专业卫队提供了进一步改进结果。目标模型是通过学习的嵌入过程选择的,该程序可以预测该模型所佩戴的产品的表示。该预测用于将产品与型号匹配。专门的巡回手接受了一种鼓励第二兵在第一个效果不佳的位置表现良好的方法。然后使用U-NET合并WARPS。定性评估证实,这些改进是批发大纲,纹理阴影和服装细节。
A virtual try-on method takes a product image and an image of a model and produces an image of the model wearing the product. Most methods essentially compute warps from the product image to the model image and combine using image generation methods. However, obtaining a realistic image is challenging because the kinematics of garments is complex and because outline, texture, and shading cues in the image reveal errors to human viewers. The garment must have appropriate drapes; texture must be warped to be consistent with the shape of a draped garment; small details (buttons, collars, lapels, pockets, etc.) must be placed appropriately on the garment, and so on. Evaluation is particularly difficult and is usually qualitative. This paper uses quantitative evaluation on a challenging, novel dataset to demonstrate that (a) for any warping method, one can choose target models automatically to improve results, and (b) learning multiple coordinated specialized warpers offers further improvements on results. Target models are chosen by a learned embedding procedure that predicts a representation of the products the model is wearing. This prediction is used to match products to models. Specialized warpers are trained by a method that encourages a second warper to perform well in locations where the first works poorly. The warps are then combined using a U-Net. Qualitative evaluation confirms that these improvements are wholesale over outline, texture shading, and garment details.