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Quantifying aesthetics of visual design applied to automatic design

机译:量化视觉设计应用于自动设计的美学

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摘要

In today\u27s \u22Instagram\u22 world, with advances in ubiquitous computing and access to social networks, digital media is adopted by art and culture. In this dissertation, we study what makes a good design by investigating mechanisms to bring aesthetics of design from realm of subjection to objection. These mechanisms are a combination of three main approaches: learning theories and principles of design by collaborating with professional designers, mathematically and statistically modeling good designs from large scale datasets, and crowdscourcing to model perceived aesthetics of designs from general public responses. We then apply the knowledge gained in automatic design creation tools to help non-designers in self-publishing, and designers in inspiration and creativity. Arguably, unlike visual arts where the main goals may be abstract, visual design is conceptualized and created to convey a message and communicate with audiences. Therefore, we develop a semantic design mining framework to automatically link the design elements, layout, color, typography, and photos to linguistic concepts. The inferred semantics are applied to a design expert system to leverage user interactions in order to create personalized designs via recommendation algorithms based on the user\u27s preferences.
机译:在当今世界,随着无处不在的计算和访问社交网络的发展,数字媒体已被艺术和文化所采用。在本文中,我们通过研究使设计美学从受害领域到受拒对象的机制研究了什么才是好的设计。这些机制是三种主要方法的组合:通过与专业设计师合作来学习设计的理论和原理,从大规模数据集中对好的设计进行数学和统计建模,以及从公众的普遍参与中对设计的感知美感进行建模。然后,我们运用在自动设计创建工具中获得的知识来帮助非设计师进行自我发布,并帮助设计师进行灵感和创造。可以说,与主要目标可能是抽象的视觉艺术不同,视觉设计被概念化和创建以传达信息并与观众交流。因此,我们开发了一个语义设计挖掘框架,以自动将设计元素,布局,颜色,版式和照片链接到语言概念。推断的语义将应用于设计专家系统,以利用用户交互作用,从而基于用户的偏好通过推荐算法创建个性化设计。

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    Jahanian, Ali;

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  • 年度 2014
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