基于进化对抗注意力网络的鲁棒多模态表示学习

Robust Multimodal Representation Learning With Evolutionary Adversarial Attention Networks

IEEE Transactions on Evolutionary Computation · 2021
被引 21
ABS 4

中文导读

提出进化对抗注意力网络,结合注意力机制和对抗网络,通过进化训练学习鲁棒的多模态表示,在图像分类和标签推荐任务上表现优异。

Abstract

Multimodal representation learning is beneficial for many multimedia-oriented applications, such as social image recognition and visual question answering. The different modalities of the same instance (e.g., a social image and its corresponding description) are usually correlational and complementary. Most existing approaches for multimodal representation learning are not effective to model the deep correlation between different modalities. Moreover, it is difficult for these approaches to deal with the noise within social images. In this article, we propose a deep learning-based approach named evolutionary adversarial attention networks (EAANs), which combines the attention mechanism with adversarial networks through evolutionary training, for robust multimodal representation learning. Specifically, a two-branch visual-textual attention model is proposed to correlate visual and textual content for joint representation. Then adversarial networks are employed to impose regularization upon the representation by matching its posterior distribution to the given priors. Finally, the attention model and adversarial networks are integrated into an evolutionary training framework for robust multimodal representation learning. Extensive experiments have been conducted on four real-world datasets, including PASCAL, MIR, CLEF, and NUS-WIDE. Substantial performance improvements on the tasks of image classification and tag recommendation demonstrate the superiority of the proposed approach.

多模态学习深度学习注意力机制对抗网络图像分类