English

CLCR: Cross-Level Semantic Collaborative Representation for Multimodal Learning

Computer Vision and Pattern Recognition 2026-02-24 v1 Artificial Intelligence Multimedia

Abstract

Multimodal learning aims to capture both shared and private information from multiple modalities. However, existing methods that project all modalities into a single latent space for fusion often overlook the asynchronous, multi-level semantic structure of multimodal data. This oversight induces semantic misalignment and error propagation, thereby degrading representation quality. To address this issue, we propose Cross-Level Co-Representation (CLCR), which explicitly organizes each modality's features into a three-level semantic hierarchy and specifies level-wise constraints for cross-modal interactions. First, a semantic hierarchy encoder aligns shallow, mid, and deep features across modalities, establishing a common basis for interaction. And then, at each level, an Intra-Level Co-Exchange Domain (IntraCED) factorizes features into shared and private subspaces and restricts cross-modal attention to the shared subspace via a learnable token budget. This design ensures that only shared semantics are exchanged and prevents leakage from private channels. To integrate information across levels, the Inter-Level Co-Aggregation Domain (InterCAD) synchronizes semantic scales using learned anchors, selectively fuses the shared representations, and gates private cues to form a compact task representation. We further introduce regularization terms to enforce separation of shared and private features and to minimize cross-level interference. Experiments on six benchmarks spanning emotion recognition, event localization, sentiment analysis, and action recognition show that CLCR achieves strong performance and generalizes well across tasks.

Keywords

Cite

@article{arxiv.2602.19605,
  title  = {CLCR: Cross-Level Semantic Collaborative Representation for Multimodal Learning},
  author = {Chunlei Meng and Guanhong Huang and Rong Fu and Runmin Jian and Zhongxue Gan and Chun Ouyang},
  journal= {arXiv preprint arXiv:2602.19605},
  year   = {2026}
}

Comments

This study has been Accepted by CVPR 2026

R2 v1 2026-07-01T10:47:02.191Z