使用深度学习方法的美术风格迁移模型

Q3 Physics and Astronomy Cybernetics and Physics Pub Date : 2021-10-30 DOI:10.35470/2226-4116-2021-10-3-127-137
Ngo Le Huy Hien, Luu Van Huy, Hieu Nguyen Van
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引用次数: 5

摘要

一般艺术,尤其是美术,在人类生活中发挥着重要作用,以特定的方式娱乐和消除压力,激发他们的创造力。许多知名艺术家都为人类留下了丰富的绘画宝库,通过独特的艺术风格保存着他们精湛的才华和创造力。近年来,一种名为“风格转移”的技术允许计算机将著名的艺术风格应用到图片或照片的风格中,同时保留图像的形状,创造卓越的视觉体验。Leon A.Gatys很有希望地介绍了这个过程的基本模型,名为“神经风格转移”;然而,它在输出质量和实现时间方面存在一些限制,这使得它在实践中的应用具有挑战性。基于这一基本模型,本文提出了一种图像变换网络,以生成更高质量的艺术品和更高的能力来处理更大的图像量。所提出的模型显著缩短了执行时间,并且可以在实时应用程序中实现,提供了有希望的结果和性能。结果是好的,可以作为颜色分级或语义图像分割的参考模型,未来的研究重点是改进其应用。
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Artwork style transfer model using deep learning approach
Art in general and fine arts, in particular, play a significant role in human life, entertaining and dispelling stress and motivating their creativeness in specific ways. Many well-known artists have left a rich treasure of paintings for humanity, preserving their exquisite talent and creativity through unique artistic styles. In recent years, a technique called ’style transfer’ allows computers to apply famous artistic styles into the style of a picture or photograph while retaining the shape of the image, creating superior visual experiences. The basic model of that process, named ’Neural Style Transfer,’ has been introduced promisingly by Leon A. Gatys; however, it contains several limitations on output quality and implementation time, making it challenging to apply in practice. Based on that basic model, an image transform network was proposed in this paper to generate higher-quality artwork and higher abilities to perform on a larger image amount. The proposed model significantly shortened the execution time and can be implemented in a real-time application, providing promising results and performance. The outcomes are auspicious and can be used as a referenced model in color grading or semantic image segmentation, and future research focuses on improving its applications.
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来源期刊
Cybernetics and Physics
Cybernetics and Physics Chemical Engineering-Fluid Flow and Transfer Processes
CiteScore
1.70
自引率
0.00%
发文量
17
审稿时长
10 weeks
期刊介绍: The scope of the journal includes: -Nonlinear dynamics and control -Complexity and self-organization -Control of oscillations -Control of chaos and bifurcations -Control in thermodynamics -Control of flows and turbulence -Information Physics -Cyber-physical systems -Modeling and identification of physical systems -Quantum information and control -Analysis and control of complex networks -Synchronization of systems and networks -Control of mechanical and micromechanical systems -Dynamics and control of plasma, beams, lasers, nanostructures -Applications of cybernetic methods in chemistry, biology, other natural sciences The papers in cybernetics with physical flavor as well as the papers in physics with cybernetic flavor are welcome. Cybernetics is assumed to include, in addition to control, such areas as estimation, filtering, optimization, identification, information theory, pattern recognition and other related areas.
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