Poster
in
Workshop: Multi-modal Foundation Model meets Embodied AI (MFM-EAI)
LEGENT: Open Platform for Embodied Agents
Zhili Cheng · Jinyi Hu · Zhitong Wang · Yuge Tu · Shengding Hu · an liu · Pengkai Li · Lei Shi · Zhiyuan Liu · Maosong Sun
Despite advancements in Large Multimodal Models (LMMs), their integration into language-grounded, human-like embodied agents remains incomplete, hindering complex real-life task performance in physical environments. Existing integrations often feature limited open sourcing, challenging collective progress in this field. We introduce LEGENT, an open, scalable platform for developing embodied agents using LMMs. LEGENT offers a dual approach: a rich, interactive 3D environment with communicable and actionable agents, paired with a user-friendly interface, and a sophisticated data generation pipeline utilizing advanced algorithms to exploit supervision from simulated worlds at scale. In our experiments, an embryonic vision-language-action model trained on LEGENT-generated data surpasses GPT-4V in embodied tasks, showcasing promising generalization capabilities.