Section 01
[Introduction] LargeMonitor: A Large Model-Driven Intelligent Monitoring Framework for Online Task-Free Continual Learning
This article introduces the LargeMonitor framework, which uses a two-stage mechanism of decoupled detection and context-aware diagnosis. Leveraging large vision models (LVMs) and large multimodal models (LMMs), it achieves zero-shot drift detection and semantic-level change diagnosis. It addresses the limitation of training coupling in existing online task-free continual learning (TFCL) methods, providing dynamic adaptive capabilities for the system and improving continual learning performance.