Leveraging Foundation Models for Enhancing Robot Perception and Action
By: Reihaneh Mirjalili
Potential Business Impact:
Robots learn to do more things in messy places.
This thesis investigates how foundation models can be systematically leveraged to enhance robotic capabilities, enabling more effective localization, interaction, and manipulation in unstructured environments. The work is structured around four core lines of inquiry, each addressing a fundamental challenge in robotics while collectively contributing to a cohesive framework for semantics-aware robotic intelligence.
Similar Papers
Embodied Robot Manipulation in the Era of Foundation Models: Planning and Learning Perspectives
Robotics
Robots learn to do tasks by watching and understanding.
Foundation Model Driven Robotics: A Comprehensive Review
Robotics
Robots understand and do tasks better with smart AI.
Toward Accurate Long-Horizon Robotic Manipulation: Language-to-Action with Foundation Models via Scene Graphs
Robotics
Robots learn new tasks without special training.