Neural style transfer: a paradigm shift for image-based artistic rendering?

Amir Semmo, Tobias Isenberg, J. Döllner
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引用次数: 44

Abstract

In this meta paper we discuss image-based artistic rendering (IB-AR) based on neural style transfer (NST) and argue, while NST may represent a paradigm shift for IB-AR, that it also has to evolve as an interactive tool that considers the design aspects and mechanisms of artwork production. IB-AR received significant attention in the past decades for visual communication, covering a plethora of techniques to mimic the appeal of artistic media. Example-based rendering represents one the most promising paradigms in IB-AR to (semi-)automatically simulate artistic media with high fidelity, but so far has been limited because it relies on pre-defined image pairs for training or informs only low-level image features for texture transfers. Advancements in deep learning showed to alleviate these limitations by matching content and style statistics via activations of neural network layers, thus making a generalized style transfer practicable. We categorize style transfers within the taxonomy of IB-AR, then propose a semiotic structure to derive a technical research agenda for NSTs with respect to the grand challenges of NPAR. We finally discuss the potentials of NSTs, thereby identifying applications such as casual creativity and art production.
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神经风格转移:基于图像的艺术呈现的范式转变?
在这篇元论文中,我们讨论了基于神经风格转移(NST)的基于图像的艺术渲染(IB-AR),并认为,虽然NST可能代表了IB-AR的范式转变,但它也必须发展成为一种考虑设计方面和艺术作品生产机制的互动工具。在过去的几十年里,IB-AR在视觉传达方面受到了极大的关注,涵盖了大量模仿艺术媒体吸引力的技术。基于示例的渲染代表了IB-AR中最有前途的范例之一,可以(半)自动地以高保真度模拟艺术媒体,但到目前为止,它仍然受到限制,因为它依赖于预定义的图像对进行训练,或者仅通知低级图像特征进行纹理传输。深度学习的进步表明,通过激活神经网络层来匹配内容和风格统计,从而减轻了这些限制,从而使广义风格迁移变得可行。我们在IB-AR分类法中对风格迁移进行了分类,然后提出了一个符号学结构,以针对NPAR的重大挑战为nst制定技术研究议程。我们最后讨论了nst的潜力,从而确定了诸如休闲创意和艺术制作等应用。
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