Creative workflows for generating graphical documents involve complex inter-related tasks, such as aligning elements, choosing appropriate fonts, or employing aesthetically harmonious colors. In this work, we attempt at building a holistic model that can jointly solve many different design tasks. Our model, which we denote by FlexDM, treats vector graphic documents as a set of multi-modal elements, and learns to predict masked fields such as element type, position, styling attributes, image, or text, using a unified architecture. Through the use of explicit multi-task learning and in-domain pre-training, our model can better capture the multi-modal relationships among the different document fields. Experimental results corroborate that our single FlexDM is able to successfully solve a multitude of different design tasks, while achieving performance that is competitive with task-specific and costly baselines.
Towards Flexible Multi-modal Document Models
A holistic model named FlexDM addresses multiple design tasks in graphical documents using multi-modal learning and pre-training.
- Year
- 2023
- Venue
- CVPR 2023 1
- Authors
- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2303.18248ARXIV-DEFAULT
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