English

Enhancing Modality Representation and Alignment for Multimodal Cold-start Active Learning

Multimedia 2024-12-13 v1 Artificial Intelligence Machine Learning

Abstract

Training multimodal models requires a large amount of labeled data. Active learning (AL) aim to reduce labeling costs. Most AL methods employ warm-start approaches, which rely on sufficient labeled data to train a well-calibrated model that can assess the uncertainty and diversity of unlabeled data. However, when assembling a dataset, labeled data are often scarce initially, leading to a cold-start problem. Additionally, most AL methods seldom address multimodal data, highlighting a research gap in this field. Our research addresses these issues by developing a two-stage method for Multi-Modal Cold-Start Active Learning (MMCSAL). Firstly, we observe the modality gap, a significant distance between the centroids of representations from different modalities, when only using cross-modal pairing information as self-supervision signals. This modality gap affects data selection process, as we calculate both uni-modal and cross-modal distances. To address this, we introduce uni-modal prototypes to bridge the modality gap. Secondly, conventional AL methods often falter in multimodal scenarios where alignment between modalities is overlooked. Therefore, we propose enhancing cross-modal alignment through regularization, thereby improving the quality of selected multimodal data pairs in AL. Finally, our experiments demonstrate MMCSAL's efficacy in selecting multimodal data pairs across three multimodal datasets.

Keywords

Cite

@article{arxiv.2412.09126,
  title  = {Enhancing Modality Representation and Alignment for Multimodal Cold-start Active Learning},
  author = {Meng Shen and Yake Wei and Jianxiong Yin and Deepu Rajan and Di Hu and Simon See},
  journal= {arXiv preprint arXiv:2412.09126},
  year   = {2024}
}

Comments

11 pages, ACMMM Asia 2024, Oral Presentation

R2 v1 2026-06-28T20:32:14.792Z