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首页> 外文期刊>IEEE transactions on multimedia >Style-Controlled Synthesis of Clothing Segments for Fashion Image Manipulation
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Style-Controlled Synthesis of Clothing Segments for Fashion Image Manipulation

机译:用于时尚图像处理的服装片段的样式控制的综合

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We propose an approach for digitally altering peoples outfits in images. Given images of a person and a desired clothing style, our method generates a new clothing item image. The new item displays the color and pattern of the desired style while geometrically mimicking the persons original item. Through superimposition, the altered image is made to look as if the person is wearing the new item. Unlike recent works with full-image synthesis, our work relies on segment synthesis, yielding benefits in virtual try-on. For the synthesis process, we assume two underlying factors characterizing clothing segments: geometry and style. These two factors are disentangled via preprocessing and combined using a neural network. We explore several networks and introduce important aspects of the architecture and learning process. Our experimental results are three-fold: 1) on images from fashion-parsing datasets, we demonstrate the generation of high-quality clothing segments with fine-level style control; 2) on a virtual try-on benchmark, our method shows superiority over prior synthesis methods; and 3) in transferring clothing styles, we visualize the differences between our method and neural style transfer.
机译:我们提出了一种以数字方式更改图像中人们服装的方法。给定一个人的图像和所需的服装样式,我们的方法将生成一个新的服装项目图像。新项目显示所需样式的颜色和图案,同时在几何上模仿人的原始项目。通过叠加,使更改后的图像看起来像人在穿新物品。与最近使用全图像合成的作品不同,我们的作品依赖于片段合成,从而在虚拟试戴中产生了收益。对于合成过程,我们假设两个基本因素可表征服装细分:几何形状和样式。可以通过预处理解开这两个因素,并使用神经网络对其进行组合。我们探索了几个网络,并介绍了体系结构和学习过程的重要方面。我们的实验结果有三个方面:1)在来自时尚解析数据集的图像上,我们展示了具有精细样式控制的高质量服装细分的生成; 2)在虚拟试戴基准上,我们的方法显示出优于现有综合方法的优势; 3)在转移服装款式时,我们形象化了我们的方法与神经风格转移之间的差异。

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