Body Discovery of Embodied AI
By: Zhe Sun , Pengfei Tian , Xiaozhu Hu and more
Potential Business Impact:
Robots learn to understand their own bodies.
In the pursuit of realizing artificial general intelligence (AGI), the importance of embodied artificial intelligence (AI) becomes increasingly apparent. Following this trend, research integrating robots with AGI has become prominent. As various kinds of embodiments have been designed, adaptability to diverse embodiments will become important to AGI. We introduce a new challenge, termed "Body Discovery of Embodied AI", focusing on tasks of recognizing embodiments and summarizing neural signal functionality. The challenge encompasses the precise definition of an AI body and the intricate task of identifying embodiments in dynamic environments, where conventional approaches often prove inadequate. To address these challenges, we apply causal inference method and evaluate it by developing a simulator tailored for testing algorithms with virtual environments. Finally, we validate the efficacy of our algorithms through empirical testing, demonstrating their robust performance in various scenarios based on virtual environments.
Similar Papers
Embodied Intelligence: The Key to Unblocking Generalized Artificial Intelligence
Artificial Intelligence
Makes robots learn and act like humans.
A Survey: Learning Embodied Intelligence from Physical Simulators and World Models
Robotics
Teaches robots to learn and act in the real world.
Autonomous Embodied Agents: When Robotics Meets Deep Learning Reasoning
Robotics
Robots learn to do tasks in new places.