Video-EM: Event-Centric Episodic Memory for Long-Form Video Understanding
Video-EM introduces a training-free, event-centric episodic memory framework that enhances long-form video understanding by orchestrating an LLM to localize, segment, and refine query-relevant moments into a compact, temporally coherent event timeline, thereby overcoming the context limitations of existing Video-LLMs without requiring architectural changes.