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BLT: Bidirectional Layout Transformer for Controllable Layout Generation

Authors :
Kong, Xiang
Jiang, Lu
Chang, Huiwen
Zhang, Han
Hao, Yuan
Gong, Haifeng
Essa, Irfan
Publication Year :
2021

Abstract

Creating visual layouts is a critical step in graphic design. Automatic generation of such layouts is essential for scalable and diverse visual designs. To advance conditional layout generation, we introduce BLT, a bidirectional layout transformer. BLT differs from previous work on transformers in adopting non-autoregressive transformers. In training, BLT learns to predict the masked attributes by attending to surrounding attributes in two directions. During inference, BLT first generates a draft layout from the input and then iteratively refines it into a high-quality layout by masking out low-confident attributes. The masks generated in both training and inference are controlled by a new hierarchical sampling policy. We verify the proposed model on six benchmarks of diverse design tasks. Experimental results demonstrate two benefits compared to the state-of-the-art layout transformer models. First, our model empowers layout transformers to fulfill controllable layout generation. Second, it achieves up to 10x speedup in generating a layout at inference time than the layout transformer baseline. Code is released at https://shawnkx.github.io/blt.<br />Comment: ECCV 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2112.05112
Document Type :
Working Paper