CVMar 12, 2025

Exo2Ego: Exocentric Knowledge Guided MLLM for Egocentric Video Understanding

arXiv:2503.09143v122 citationsh-index: 9
Originality Incremental advance
AI Analysis

This addresses the need for embodied AI assistants in robotics or wearables to better collaborate with humans, representing a domain-specific advancement.

The paper tackles the problem of poor egocentric video understanding in Multimodal Large Language Models (MLLMs) by leveraging exocentric knowledge, resulting in a model that significantly outperforms existing leading models on diverse tasks.

AI personal assistants, deployed through robots or wearables, require embodied understanding to collaborate effectively with humans. Current Multimodal Large Language Models (MLLMs) primarily focus on third-person (exocentric) vision, overlooking the unique aspects of first-person (egocentric) videos. Additionally, high acquisition costs limit data size, impairing MLLM performance. To address these challenges, we propose learning the mapping between exocentric and egocentric domains, leveraging the extensive exocentric knowledge within existing MLLMs to enhance egocentric video understanding. To this end, we introduce Ego-ExoClip, a pre-training dataset comprising 1.1M synchronized ego-exo clip-text pairs derived from Ego-Exo4D. Our approach features a progressive training pipeline with three stages: Teacher Self-Preparation, Teacher-Student Guidance, and Student Self-Practice. Additionally, we propose an instruction-tuning data EgoIT from multiple sources to strengthen the model's instruction-following capabilities, along with the EgoBench benchmark comprising eight different tasks for thorough evaluation. Extensive experiments across diverse egocentric tasks reveal that existing MLLMs perform inadequately in egocentric video understanding, while our model significantly outperforms these leading models.

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