A Scale-adaptive Color Preservation Neural Style Transfer Method

Qing Shen, Lu Zou, Fangjun Wang, Zhangjin Huang
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引用次数: 2

Abstract

Since the feature maps of deep neural networks were adopted to compute the representation of style and content information, neural style transfer (NST) methods have sprung up like mushrooms. But the existing methods ignore a fundamental fact that a style or an artistic image not only contains style information but also contains content information. And we find that there may be a conflict between style and content. Motivated by this idea, we propose a novel method, which only adopts the detail layer of the style image to compute the style loss. To avoid the potential conflicts between the style loss and the content loss, we just abandon the latter. The smooth base layer of the content image will be added to the intermediate results to keep the semantic content invariant. Our ablation studies show that this strategy can make the results scale-adaptive to the style image. Furthermore, we use an interpolation method so that the overall color of our results remains unchanged and our results have a colorful stroke. The qualitative and quantitative analyses show that our results have a better visual effect than the existing methods.
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一种尺度自适应色彩保存神经风格转移方法
由于采用深度神经网络的特征映射来计算风格和内容信息的表示,神经风格迁移(NST)方法如雨后春笋般涌现。但现有的方法忽略了一个基本事实,即风格或艺术形象不仅包含风格信息,还包含内容信息。我们发现在风格和内容之间可能存在冲突。基于这一思路,我们提出了一种新的方法,即只使用风格图像的细节层来计算风格损失。为了避免风格丢失和内容丢失之间的潜在冲突,我们只是放弃了后者。将内容图像的平滑基础层添加到中间结果中,以保持语义内容不变。我们的消融研究表明,这种策略可以使结果对风格图像进行尺度自适应。此外,我们使用插值方法,使我们的结果的整体颜色保持不变,我们的结果有一个彩色的笔画。定性和定量分析表明,我们的结果比现有方法具有更好的视觉效果。
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