学习选择平面设计元素

Guolong Wang, Zheng Qin, Junchi Yan, Liu Jiang
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引用次数: 5

摘要

选择平面设计的元素对于确保正确理解客户的需求以及提高设计师在精细设计过程之前的效率至关重要。一些半自动设计工具提出了布局模板,设计师总是根据指定元素放置方式的矩形框来选择元素。在实践中,布局和元素选择是互补的。与可以从预先设计的模板中轻松获得的布局相比,仔细挑选合适的元素通常是耗时的,这需要元素选择的自动化。为了解决这个问题,我们将元素选择制定为一个连续的决策过程,并开发了一个深度元素选择网络(DESN)。给定一个带有注释元素的布局文件,根据美学和一致性标准选择新的图形元素来形成图形设计。为了训练我们的设计神经网络,我们提出了一个端到端、基于强化学习的框架,在这个框架中,我们设计了一个新的奖励函数,共同考虑视觉美学和一致性。在此基础上,可以有效地生成具有视觉可读性和审美性的草稿。我们进一步提供了一个布局-海报数据集,其中包含海报关键元素的详尽标记属性。定性和定量结果表明了我们的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Select Elements for Graphic Design
Selecting elements for graphic design is essential for ensuring a correct understanding of clients' requirements as well as improving the efficiency of designers before a fine-designed process. Some semi-automatic design tools proposed layout templates where designers always select elements according to the rectangular boxes that specify how elements are placed. In practice, layout and element selection are complementary. Compared to the layout which can be readily obtained from pre-designed templates, it is generally time-consuming to mindfully pick out suitable elements, which calls for an automation of elements selection. To address this, we formulate element selection as a sequential decision-making process and develop a deep element selection network (DESN). Given a layout file with annotated elements, new graphical elements are selected to form graphic designs based on aesthetics and consistency criteria. To train our DESN, we propose an end-to-end, reinforcement learning based framework, where we design a novel reward function that jointly accounts for visual aesthetics and consistency. Based on this, visually readable and aesthetic drafts can be efficiently generated. We further contribute a layout-poster dataset with exhaustively labeled attributes of poster key elements. Qualitative and quantitative results indicate the efficacy of our approach.
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