Learning Visual Importance for Graphic Designs and Data Visualizations
Author(s)
Bylinskii, Zoya; Kim, Nam Wook; O'Donovan, Peter; Alsheikh, Sami; Madan, Spandan; Pfister, Hanspeter; Durand, Fredo; Russell, Bryan; Hertzmann, Aaron; ... Show more Show less
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© 2017 ACM. Knowing where people look and click on visual designs can provide clues about how the designs are perceived, and where the most important or relevant content lies. The most important content of a visual design can be used for effective summarization or to facilitate retrieval from a database. We present automated models that predict the relative importance of different elements in data visualizations and graphic designs. Our models are neural networks trained on human clicks and importance annotations on hundreds of designs. We collected a new dataset of crowdsourced importance, and analyzed the predictions of our models with respect to ground truth importance and human eye movements. We demonstrate how such predictions of importance can be used for automatic design retargeting and thumbnailing. User studies with hundreds of MTurk participants validate that, with limited post-processing, our importance-driven applications are on par with, or outperform, current state-of-the-art methods, including natural image saliency. We also provide a demonstration of how our importance predictions can be built into interactive design tools to offer immediate feedback during the design process.
Date issued
2017-10Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryPublisher
Association for Computing Machinery (ACM)
Citation
Bylinskii, Zoya, Kim, Nam Wook, O'Donovan, Peter, Alsheikh, Sami, Madan, Spandan et al. 2017. "Learning Visual Importance for Graphic Designs and Data Visualizations."
Version: Author's final manuscript