LGCVMar 11, 2025

MMRL: Multi-Modal Representation Learning for Vision-Language Models

arXiv:2503.08497v242 citationsh-index: 2Has CodeCVPR
Originality Incremental advance
AI Analysis

This addresses the challenge of adapting large-scale pre-trained models to new tasks with limited data, which is crucial for practical applications in multi-modal AI, though it appears incremental as it builds on existing few-shot learning methods.

The paper tackles the problem of overfitting in few-shot adaptation of vision-language models by proposing a Multi-Modal Representation Learning (MMRL) framework that introduces a shared, modality-agnostic representation space, achieving a balanced trade-off between adaptation and generalization across 15 datasets.

Large-scale pre-trained Vision-Language Models (VLMs) have become essential for transfer learning across diverse tasks. However, adapting these models with limited few-shot data often leads to overfitting, diminishing their performance on new tasks. To tackle this issue, we propose a novel Multi-Modal Representation Learning (MMRL) framework that introduces a shared, learnable, and modality-agnostic representation space. MMRL projects the space tokens to text and image representation tokens, facilitating more effective multi-modal interactions. Unlike previous approaches that solely optimize class token features, MMRL integrates representation tokens at higher layers of the encoders--where dataset-specific features are more prominent--while preserving generalized knowledge in the lower layers. During training, both representation and class features are optimized, with trainable projection layer applied to the representation tokens, whereas the class token projection layer remains frozen to retain pre-trained knowledge. Furthermore, a regularization term is introduced to align the class features and text features with the zero-shot features from the frozen VLM, thereby safeguarding the model's generalization capacity. For inference, a decoupling strategy is employed, wherein both representation and class features are utilized for base classes, while only the class features, which retain more generalized knowledge, are used for new tasks. Extensive experiments across 15 datasets demonstrate that MMRL outperforms state-of-the-art methods, achieving a balanced trade-off between task-specific adaptation and generalization. Code is available at https://github.com/yunncheng/MMRL.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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