Dual-LoRA and Quality-Enhanced Pseudo Replay for Multimodal Continual Food Learning
Wu, Xinlan, Zhu, Bin, Han, Feng, Jiao, Pengkun, Chen, Jingjing
–arXiv.org Artificial Intelligence
Food analysis has become increasingly critical for health-related tasks such as personalized nutrition and chronic disease prevention. However, existing large multimodal models (LMMs) in food analysis suffer from catastrophic forgetting when learning new tasks, requiring costly retraining from scratch. To address this, we propose a novel continual learning framework for multimodal food learning, integrating a Dual-LoRA architecture with Quality-Enhanced Pseudo Replay. We introduce two complementary low-rank adapters for each task: a specialized LoRA that learns task-specific knowledge with orthogonal constraints to previous tasks' subspaces, and a cooperative LoRA that consolidates shared knowledge across tasks via pseudo replay. To improve the reliability of replay data, our Quality-Enhanced Pseudo Replay strategy leverages self-consistency and semantic similarity to reduce hallucinations in generated samples.
arXiv.org Artificial Intelligence
Nov-18-2025
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