CVLGMar 14, 2025

A Survey on Self-supervised Contrastive Learning for Multimodal Text-Image Analysis

arXiv:2503.11101v510 citationsh-index: 2
Originality Synthesis-oriented
AI Analysis

It synthesizes existing knowledge for researchers in multimodal AI, but is incremental as it does not introduce novel methods or data.

This paper provides a comprehensive survey of self-supervised contrastive learning methods for multimodal text-image analysis, discussing recent developments, categorizations, and applications without presenting new experimental results or specific numerical improvements.

Self-supervised learning is a machine learning approach that generates implicit labels by learning underlined patterns and extracting discriminative features from unlabeled data without manual labelling. Contrastive learning introduces the concept of "positive" and "negative" samples, where positive pairs (e.g., variation of the same image/object) are brought together in the embedding space, and negative pairs (e.g., views from different images/objects) are pushed farther away. This methodology has shown significant improvements in image understanding and image text analysis without much reliance on labeled data. In this paper, we comprehensively discuss the terminologies, recent developments and applications of contrastive learning with respect to text-image models. Specifically, we provide an overview of the approaches of contrastive learning in text-image models in recent years. Secondly, we categorize the approaches based on different model structures. Thirdly, we further introduce and discuss the latest advances of the techniques used in the process such as pretext tasks for both images and text, architectural structures, and key trends. Lastly, we discuss the recent state-of-art applications of self-supervised contrastive learning Text-Image based models.

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