Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline
Designers need to consider not only perceptual effectiveness but also visual styles when creating an infographic. This process can be difficult and time consuming for professional designers, not to mention non-expert users, leading to the demand for automated infographics design. As a first step, we...
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sg-smu-ink.sis_research-63572020-11-19T07:22:59Z Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline CHEN, Zhutian WANG, Yun WANG, Qianwen WANG, Yong QU, Huamin Designers need to consider not only perceptual effectiveness but also visual styles when creating an infographic. This process can be difficult and time consuming for professional designers, not to mention non-expert users, leading to the demand for automated infographics design. As a first step, we focus on timeline infographics, which have been widely used for centuries. We contribute an end-to-end approach that automatically extracts an extensible timeline template from a bitmap image. Our approach adopts a deconstruction and reconstruction paradigm. At the deconstruction stage, we propose a multi-task deep neural network that simultaneously parses two kinds of information from a bitmap timeline: 1) the global information, i.e., the representation, scale, layout, and orientation of the timeline, and 2) the local information, i.e., the location, category, and pixels of each visual element on the timeline. At the reconstruction stage, we propose a pipeline with three techniques, i.e., Non-Maximum Merging, Redundancy Recover, and DL GrabCut, to extract an extensible template from the infographic, by utilizing the deconstruction results. To evaluate the effectiveness of our approach, we synthesize a timeline dataset (4296 images) and collect a real-world timeline dataset (393 images) from the Internet. We first report quantitative evaluation results of our approach over the two datasets. Then, we present examples of automatically extracted templates and timelines automatically generated based on these templates to qualitatively demonstrate the performance. The results confirm that our approach can effectively extract extensible templates from real-world timeline infographics. 2020-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5353 info:doi/10.1109/TVCG.2019.2934810 https://ink.library.smu.edu.sg/context/sis_research/article/6357/viewcontent/1907.13550___PV.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Automated Infographic Design Deep Learning-based Approach Timeline Infographics Multi-task Model Graphic Communications Graphics and Human Computer Interfaces Software Engineering |
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Automated Infographic Design Deep Learning-based Approach Timeline Infographics Multi-task Model Graphic Communications Graphics and Human Computer Interfaces Software Engineering CHEN, Zhutian WANG, Yun WANG, Qianwen WANG, Yong QU, Huamin Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline |
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Designers need to consider not only perceptual effectiveness but also visual styles when creating an infographic. This process can be difficult and time consuming for professional designers, not to mention non-expert users, leading to the demand for automated infographics design. As a first step, we focus on timeline infographics, which have been widely used for centuries. We contribute an end-to-end approach that automatically extracts an extensible timeline template from a bitmap image. Our approach adopts a deconstruction and reconstruction paradigm. At the deconstruction stage, we propose a multi-task deep neural network that simultaneously parses two kinds of information from a bitmap timeline: 1) the global information, i.e., the representation, scale, layout, and orientation of the timeline, and 2) the local information, i.e., the location, category, and pixels of each visual element on the timeline. At the reconstruction stage, we propose a pipeline with three techniques, i.e., Non-Maximum Merging, Redundancy Recover, and DL GrabCut, to extract an extensible template from the infographic, by utilizing the deconstruction results. To evaluate the effectiveness of our approach, we synthesize a timeline dataset (4296 images) and collect a real-world timeline dataset (393 images) from the Internet. We first report quantitative evaluation results of our approach over the two datasets. Then, we present examples of automatically extracted templates and timelines automatically generated based on these templates to qualitatively demonstrate the performance. The results confirm that our approach can effectively extract extensible templates from real-world timeline infographics. |
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CHEN, Zhutian WANG, Yun WANG, Qianwen WANG, Yong QU, Huamin |
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CHEN, Zhutian WANG, Yun WANG, Qianwen WANG, Yong QU, Huamin |
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CHEN, Zhutian |
title |
Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline |
title_short |
Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline |
title_full |
Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline |
title_fullStr |
Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline |
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Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline |
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towards automated infographic design: deep learning-based auto-extraction of extensible timeline |
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Institutional Knowledge at Singapore Management University |
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2020 |
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https://ink.library.smu.edu.sg/sis_research/5353 https://ink.library.smu.edu.sg/context/sis_research/article/6357/viewcontent/1907.13550___PV.pdf |
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