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Multi-modal Semantic Understanding with Contrastive Cross-modal Feature Alignment

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arxiv 2403.06355 v1 pith:SBVIU3MH submitted 2024-03-11 cs.CL cs.CV

Multi-modal Semantic Understanding with Contrastive Cross-modal Feature Alignment

classification cs.CL cs.CV
keywords multi-modalalignmentfeaturecross-modaldifferentdeepinformationknowledge
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multi-modal semantic understanding requires integrating information from different modalities to extract users' real intention behind words. Most previous work applies a dual-encoder structure to separately encode image and text, but fails to learn cross-modal feature alignment, making it hard to achieve cross-modal deep information interaction. This paper proposes a novel CLIP-guided contrastive-learning-based architecture to perform multi-modal feature alignment, which projects the features derived from different modalities into a unified deep space. On multi-modal sarcasm detection (MMSD) and multi-modal sentiment analysis (MMSA) tasks, the experimental results show that our proposed model significantly outperforms several baselines, and our feature alignment strategy brings obvious performance gain over models with different aggregating methods and models even enriched with knowledge. More importantly, our model is simple to implement without using task-specific external knowledge, and thus can easily migrate to other multi-modal tasks. Our source codes are available at https://github.com/ChangKe123/CLFA.

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Cited by 1 Pith paper

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  1. POPS: Recovering Unlearned Multi-Modality Knowledge in MLLMs with Prompt-Optimized Parameter Shaking

    cs.CR 2026-07 conditional novelty 6.0

    Prompt-optimized suffixes plus synthetic fine-tuning recover ~82% of knowledge that multimodal unlearning methods claim to erase from MLLMs.