Deep Modality Invariant Adversarial Network for Shared Representation Learning

T. Harada, Kuniaki Saito, Yusuke Mukuta, Y. Ushiku
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引用次数: 5

Abstract

In this work, we propose a novel method to learn the mapping to the common space wherein different modalities have the same information for shared representation learning. Our goal is to correctly classify the target modality with a classifier trained on source modality samples and their labels in common representations. We call these representations modality-invariant representations. Our proposed method has the major advantage of not needing any labels for the target samples in order to learn representations. For example, we obtain modality-invariant representations from pairs of images and texts. Then, we train the text classifier on the modality-invariant space. Although we do not give any explicit relationship between images and labels, we can expect that images can be classified correctly in that space. Our method draws upon the theory of domain adaptation and we propose to learn modality-invariant representations by utilizing adversarial training. We call our method the Deep Modality Invariant Adversarial Network (DeMIAN). We demonstrate the effectiveness of our method in experiments.
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面向共享表示学习的深度模态不变对抗网络
在这项工作中,我们提出了一种新的方法来学习映射到公共空间,其中不同的模态具有相同的信息用于共享表示学习。我们的目标是使用基于源模态样本和它们在共同表示中的标签训练的分类器来正确分类目标模态。我们称这些表示为模态不变表示。我们提出的方法的主要优点是不需要对目标样本进行任何标记来学习表征。例如,我们从图像和文本对中获得模态不变表示。然后,我们在模态不变空间上训练文本分类器。虽然我们没有给出图像和标签之间的任何明确的关系,但我们可以期望在该空间中图像可以被正确分类。我们的方法借鉴了领域适应理论,我们建议通过使用对抗性训练来学习模态不变表示。我们将这种方法称为深度模态不变对抗网络(DeMIAN)。我们在实验中证明了我们方法的有效性。
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