CVOct 16, 2025

Exploring Cross-Modal Flows for Few-Shot Learning

arXiv:2510.14543v24 citationsh-index: 2
Originality Highly original
AI Analysis

This work addresses the challenge of cross-modal alignment for few-shot learning, offering a novel method that improves upon existing parameter-efficient fine-tuning techniques.

The paper tackles the problem of aligning features from different modalities in few-shot learning by proposing a multi-step adjustment approach called Flow Matching Alignment (FMA), which consistently yields significant performance gains across various benchmarks and backbones, particularly on challenging datasets.

Aligning features from different modalities, is one of the most fundamental challenges for cross-modal tasks. Although pre-trained vision-language models can achieve a general alignment between image and text, they often require parameter-efficient fine-tuning (PEFT) for further adjustment. Today's PEFT methods (e.g., prompt tuning, LoRA-based, or adapter-based) always selectively fine-tune a subset of parameters, which can slightly adjust either visual or textual features, and avoid overfitting. In this paper, we are the first to highlight that all existing PEFT methods perform one-step adjustment. It is insufficient for complex (or difficult) datasets, where features of different modalities are highly entangled. To this end, we propose the first model-agnostic multi-step adjustment approach by learning a cross-modal velocity field: Flow Matching Alignment (FMA). Specifically, to ensure the correspondence between categories during training, we first utilize a fixed coupling strategy. Then, we propose a noise augmentation strategy to alleviate the data scarcity issue. Finally, we design an early-stopping solver, which terminates the transformation process earlier, improving both efficiency and accuracy. Compared with one-step PEFT methods, FMA has the multi-step rectification ability to achieve more precise and robust alignment. Extensive results have demonstrated that FMA can consistently yield significant performance gains across various benchmarks and backbones, particularly on challenging datasets.

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