Cross-modal Image Retrieval with Deep Mutual Information Maximization
Chunbin Gu, Jiajun Bu, Xixi Zhou, Chengwei Yao, Dongfang Ma, Zhi Yu,, Xifeng Yan

TL;DR
This paper introduces a novel cross-modal image retrieval method that uses deep mutual information maximization to bridge modality gaps, significantly improving retrieval accuracy over existing approaches.
Contribution
The paper proposes a mutual information maximization approach using Deep InforMax to effectively reduce modality gaps in cross-modal image retrieval tasks.
Findings
Achieved state-of-the-art retrieval performance on three benchmark datasets.
Effectively bridged the modality gap between image and text representations.
Enhanced the dependence between different modalities and their fusion features.
Abstract
In this paper, we study the cross-modal image retrieval, where the inputs contain a source image plus some text that describes certain modifications to this image and the desired image. Prior work usually uses a three-stage strategy to tackle this task: 1) extract the features of the inputs; 2) fuse the feature of the source image and its modified text to obtain fusion feature; 3) learn a similarity metric between the desired image and the source image + modified text by using deep metric learning. Since classical image/text encoders can learn the useful representation and common pair-based loss functions of distance metric learning are enough for cross-modal retrieval, people usually improve retrieval accuracy by designing new fusion networks. However, these methods do not successfully handle the modality gap caused by the inconsistent distribution and representation of the features of…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Multimodal Machine Learning Applications · Domain Adaptation and Few-Shot Learning
