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Design of Semantic-Based Colorization of Graphical User Interface Through Conditional Generative Adversarial Nets

机译:通过条件生成对冲网设计图形用户界面的语义颜色设计

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ABSTRACT There has recently been a significant movement toward aiding graphic design tasks based on artificial intelligence or machine learning. In addition, colorization plays an important role within the topic of GUI design. Previous studies regarding automatic colorization have focused on a consideration of the realistic aspects of an image without consideration of the design semantics or usability, which are critical aspects for a practical GUI design. We, therefore, propose an end-to-end network for a generative combination of color sets for a GUI design based on the design semantics, while utilizing thousands of actual GUI design datasets acquired from LG Electronics to train the network. By utilizing the GUI design dataset, our network effectively generates color sets for a GUI design by considering various design aspects, such as the usability factors. In detail, we concatenate the textual design concept, characteristics of the application, and usage frequency for the elements of the design semantics. We then construct a conditional generative adversarial net processing of the design semantics as a condition to generate suitable color sets and construct the GUI design based on these sets. The experiments indicate that our proposed method effectively generates color sets for a GUI design based on the design semantics. In addition, our proposed method shows a better score than other methods on a user test conducted to verify the practicality, perception, recognition, diversity, and esthetic features. Moreover, experimental results prove that users can effectively grasp the intended design concept of our generated GUI design with higher top-1, top-2, and top-3 levels of accuracy.
机译:摘要最近,基于人工智能或机器学习的辅助图形设计任务,最近有一个重要的运动。此外,着色在GUI设计主题中起着重要作用。以前关于自动彩色的研究专注于考虑图像的现实方面而不考虑设计语义或可用性,这是实际GUI设计的关键方面。因此,我们提出了一种基于设计语义的GUI设计的GUI设计的生成组合的端到端网络,同时利用从LG电子获取的数千个实际的GUI设计数据集来训练网络。通过利用GUI设计数据集,我们的网络通过考虑各种设计方面,我们的网络有效地为GUI设计生成了颜色集,例如可用性因素。详细地,我们连接了设计语义元素的文本设计概念,应用程序的特征和使用频率。然后,我们将设计语义的条件生成的对手净化净处理作为生成合适的颜色集的条件,并基于这些组构造GUI设计。实验表明,我们的提出方法基于设计语义有效地为GUI设计产生了颜色集。此外,我们的提出方法显示比在进行实用性,感知,识别,多样性和美学特征的用户测试中的其他方法比得分更好。此外,实验结果证明,用户可以有效地掌握我们所产生的GUI设计的预期设计理念,高级1,前2和前3层精度。

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