07/09/2020

Advancing weakly supervised cross-domain alignment with optimal transport

Siyang Yuan, Ke Bai, Liqun Chen, Yizhe Zhang, Chenyang Tao, Chunyuan Li, Guoyin Wang, Ricardo Henao, Lawrence Carin Duke

Keywords: Optimal Transport, Cross Domain Alignment

Abstract: Cross-domain alignment between image objects and text sequences is key to many visual-language tasks and it poses a fundamental challenge to both computer vision and natural language processing. This study investigates a novel approach for the identification and optimization of fine-grained semantic similarities between image and text entities, under a weakly-supervised setup, improving performance over state-of-the-art solutions. Our method builds upon recent advances in optimal transport (OT) to resolve the cross-domain matching problem in a principled manner. Formulated as a drop-in regularizer, the proposed OT solution can be efficiently computed and used in combination with other existing approaches. We present empirical evidence to demonstrate the effectiveness of our approach, that enables simpler model architectures to outperform or be comparable with more sophisticated designs on a range of vision-language tasks.

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