Bisecle: Binding and Separation in Continual Learning for Video Language Understanding
–Neural Information Processing Systems
Frontier vision-language models (VLMs) have made remarkable improvements in video understanding tasks. However, real-world videos typically exist as continuously evolving data streams (e.g., dynamic scenes captured by wearable glasses), necessitating models to continually adapt to shifting data distributions and novel scenarios. Considering the prohibitive computational costs of fine-tuning models on new tasks, usually, a small subset of parameters is updated while the bulk of the model remains frozen. This poses new challenges to existing continual learning frameworks in the context of large multimodal foundation models, i.e., catastrophic forgetting and update conflict. While the foundation models struggle with parameter-efficient continual learning, the hippocampus in the human brain has evolved highly efficient mechanisms for memory formation and consolidation.
Neural Information Processing Systems
Jun-11-2026, 11:23:49 GMT
- Technology:
- Information Technology > Artificial Intelligence
- Vision (0.62)
- Natural Language (0.39)
- Information Technology > Artificial Intelligence