With the increasing development of garment manufacturing industry, the method of combining neural network with industry to reduce product redundancy has been paid more and more attention.In order to reduce garment redundancy and achieve personalized customization, more researchers have appeared in the field of virtual trying on.They try to transfer the target clothing to the reference figure, and then stylize the clothes to meet user's requirements for fashion.But the biggest problem of virtual try on is that the shape and motion blocking distort the clothes, causing the patterns and texture on the clothes to be impossible to restore. This paper proposed a new stylized virtual try on network, which can not only retain the authenticity of clothing texture and pattern, but also obtain the undifferentiated stylized try on. The network is divided into three sub-networks, the first is the user image, the front of the target clothing image, the semantic segmentation image and the posture heat map to generate a more detailed human parsing map. Second, UV position map and dense correspondence are used to map patterns and textures to the deformed silhouettes in real time, so that they can be retained in real time, and the rationality of spatial structure can be guaranteed on the basis of improving the authenticity of images. Third,Stylize and adjust the generated virtual try on image. Through the most subtle changes, users can choose the texture, color and style of clothing to improve the user's experience.
翻译:随着服装制造业的日益发展,将神经网络与工业结合起来以减少产品冗余的方法得到了越来越多的关注。 为了减少服装冗余,实现个性化定制,更多的研究人员出现在虚拟尝试领域。 他们试图将目标服装转换为参考图, 然后将衣服拼凑成一个符合用户对时装的要求。 但虚拟尝试的最大问题是, 形状和运动屏蔽扭曲服装, 导致服装的型态和纹理无法恢复。 本文提议在网络上进行一个新的系统化虚拟尝试, 这不仅可以保持服装纹理和型态的真实性, 而且也可以获得无差别的纹理尝试。 网络被分为三个子网络, 第一个是用户图像、 目标服装图像的前端、 语义分割图和姿态热图, 以产生更详细的人称地图。 其次, UV 位置地图和密集的通信被用来在真实时间里将模式和纹理化的轮廓进行地图绘制, 这样他们就可以在真实时间里保持无差别的纹理质度, 从而可以将真实的图像保存在真实的图像结构上, 将真实的颜色和真实性调整。