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Towards automated infographic design: Deep learning-based auto-extraction of extensible timeline
Zhutian Chen
, Yun Wang
,
Qianwen Wang
, Yong Wang
, Huamin Qu
Research output
:
Contribution to journal
›
Article
›
peer-review
80
Scopus citations
Overview
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Keyphrases
Deconstruction
100%
Deep Learning Methods
100%
Auto-extraction
100%
Infographic Design
100%
World Wide Web
33%
Quantitative Evaluation
33%
Redundancy
33%
Parsing
33%
Evaluation Results
33%
Visual Style
33%
Visual Elements
33%
Bitmap Images
33%
Bitmap
33%
Global Information
33%
Non-expert Users
33%
Location Category
33%
Professional Designers
33%
Multi-task Deep Neural Network
33%
GrabCut
33%
Perceptual Effectiveness
33%
Computer Science
Deconstruction
100%
Deep Learning Method
100%
Deep Neural Network
33%
Evaluation Result
33%
Global Information
33%
Quantitative Evaluation
33%
Local Information
33%