Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Predicting Visual Importance Across Graphic Design Types

About

This paper introduces a Unified Model of Saliency and Importance (UMSI), which learns to predict visual importance in input graphic designs, and saliency in natural images, along with a new dataset and applications. Previous methods for predicting saliency or visual importance are trained individually on specialized datasets, making them limited in application and leading to poor generalization on novel image classes, while requiring a user to know which model to apply to which input. UMSI is a deep learning-based model simultaneously trained on images from different design classes, including posters, infographics, mobile UIs, as well as natural images, and includes an automatic classification module to classify the input. This allows the model to work more effectively without requiring a user to label the input. We also introduce Imp1k, a new dataset of designs annotated with importance information. We demonstrate two new design interfaces that use importance prediction, including a tool for adjusting the relative importance of design elements, and a tool for reflowing designs to new aspect ratios while preserving visual importance. The model, code, and importance dataset are available at https://predimportance.mit.edu .

Camilo Fosco, Vincent Casser, Amish Kumar Bedi, Peter O'Donovan, Aaron Hertzmann, Zoya Bylinskii• 2020

Related benchmarks

TaskDatasetResultRank
Saliency PredictionOSIE Natural scene
CC0.746
7
Saliency Heatmap PredictionWS-Saliency
CC0.444
6
Saliency PredictionU-EYE Web page
CC0.562
6
Importance Heatmap PredictionImp1k
CC0.875
5
Saliency Heatmap PredictionOSIE
CC0.746
5
Showing 5 of 5 rows

Other info

Follow for update