Fine-Grained Image Style Transfer with Visual Transformers

Jianbo Wang, Huan Yang, Jianlong Fu, T. Yamasaki, B. Guo
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引用次数: 4

Abstract

With the development of the convolutional neural network, image style transfer has drawn increasing attention. However, most existing approaches adopt a global feature transformation to transfer style patterns into content images (e.g., AdaIN and WCT). Such a design usually destroys the spatial information of the input images and fails to transfer fine-grained style patterns into style transfer results. To solve this problem, we propose a novel STyle TRansformer (STTR) network which breaks both content and style images into visual tokens to achieve a fine-grained style transformation. Specifically, two attention mechanisms are adopted in our STTR. We first propose to use self-attention to encode content and style tokens such that similar tokens can be grouped and learned together. We then adopt cross-attention between content and style tokens that encourages fine-grained style transformations. To compare STTR with existing approaches, we conduct user studies on Amazon Mechanical Turk (AMT), which are carried out with 50 human subjects with 1,000 votes in total. Extensive evaluations demonstrate the effectiveness and efficiency of the proposed STTR in generating visually pleasing style transfer results.
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细粒度图像风格转移与视觉变压器
随着卷积神经网络的发展,图像风格迁移越来越受到人们的关注。然而,大多数现有的方法采用全局特征转换来将样式模式转移到内容图像中(例如AdaIN和WCT)。这样的设计通常会破坏输入图像的空间信息,无法将细粒度的风格模式转化为风格转移结果。为了解决这个问题,我们提出了一种新的风格转换(STTR)网络,它将内容和风格图像分解为视觉标记,以实现细粒度的风格转换。具体来说,我们的STTR采用了两种注意机制。我们首先提出使用自关注对内容和样式标记进行编码,使相似的标记可以分组并一起学习。然后,我们采用内容和样式标记之间的交叉关注,以鼓励细粒度的样式转换。为了将STTR与现有方法进行比较,我们对Amazon Mechanical Turk (AMT)进行了用户研究,该研究由50名人类受试者进行,总共有1000票。广泛的评估证明了所建议的STTR在产生视觉上令人愉悦的风格迁移结果方面的有效性和效率。
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