EMPOWER: Embodied Multi-role Open-vocabulary Planning with Online Grounding and Execution
Argenziano, Francesco, Brienza, Michele, Suriani, Vincenzo, Nardi, Daniele, Bloisi, Domenico D.
–arXiv.org Artificial Intelligence
Abstract-- Task planning for robots in real-life settings presents significant challenges. These challenges stem from three primary issues: the difficulty in identifying grounded sequences of steps to achieve a goal; the lack of a standardized mapping between high-level actions and low-level commands; and the challenge of maintaining low computational overhead given the limited resources of robotic hardware. We introduce EMPOWER, a framework designed for open-vocabulary online grounding and planning for embodied agents aimed at addressing these issues. By leveraging efficient pre-trained foundation models and a multi-role mechanism, EMPOWER demonstrates notable improvements in grounded planning and execution. Quantitative results highlight the effectiveness of our approach, achieving an average success rate of 0.73 across six different real-life scenarios using a TIAGo robot.
arXiv.org Artificial Intelligence
Aug-30-2024
- Country:
- Europe > Italy
- Basilicata > Potenza Province
- Potenza (0.04)
- Lazio > Rome (0.04)
- Basilicata > Potenza Province
- Europe > Italy
- Genre:
- Research Report (0.64)
- Technology: