论文标题

一致的样式转移

Consistent Style Transfer

论文作者

Luo, Xuan, Han, Zhen, Yang, Lingkang, Zhang, Lingling

论文摘要

最近,已经提出了注意力的样式转移方法来实现细粒度的结果,这操纵了智慧和样式功能之间的点相似性,以实现样式化。但是,基于特征点的注意机制忽略了特征多曼if分布,其中每个特征歧管对应于图像中的语义区域。因此,与各种样式语义区域的高度不同的模式呈现了统一内容的语义区域,从而与视觉伪像产生不一致的风格化结果。我们提出了渐进的注意歧管对准(PAMA)来减轻此问题,该问题反复应用了注意操作和空间感知的插值。注意操作根据内容功能的空间分布动态重新安排样式。这使内容和样式的歧管在功能图上对应。然后,空间感知的插值会在相应的内容和样式歧管之间适应插值,以提高它们的相似性。通过逐渐使内容歧管与样式歧管保持一致,拟议的PAMA在避免语义区域的不一致的同时,实现了最先进的性能。代码可在https://github.com/computer-vision2022/pama上找到。

Recently, attentional arbitrary style transfer methods have been proposed to achieve fine-grained results, which manipulates the point-wise similarity between content and style features for stylization. However, the attention mechanism based on feature points ignores the feature multi-manifold distribution, where each feature manifold corresponds to a semantic region in the image. Consequently, a uniform content semantic region is rendered by highly different patterns from various style semantic regions, producing inconsistent stylization results with visual artifacts. We proposed the progressive attentional manifold alignment (PAMA) to alleviate this problem, which repeatedly applies attention operations and space-aware interpolations. The attention operation rearranges style features dynamically according to the spatial distribution of content features. This makes the content and style manifolds correspond on the feature map. Then the space-aware interpolation adaptively interpolates between the corresponding content and style manifolds to increase their similarity. By gradually aligning the content manifolds to style manifolds, the proposed PAMA achieves state-of-the-art performance while avoiding the inconsistency of semantic regions. Codes are available at https://github.com/computer-vision2022/PAMA.

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