Autonomous Embodied Agents: When Robotics Meets Deep Learning Reasoning
Roberto Bigazzi

TL;DR
This paper discusses the development and deployment of autonomous embodied agents in indoor environments, emphasizing the integration of deep learning, robotics, and simulation for training and evaluation.
Contribution
It provides a comprehensive overview of creating embodied AI agents, including methodology, technical details, and experimental validation in robotic tasks.
Findings
Simulation enables safe, large-scale training of robotic agents.
Embodied agents can effectively perform tasks in indoor environments.
The paper offers a detailed analysis of current state-of-the-art methods.
Abstract
The increase in available computing power and the Deep Learning revolution have allowed the exploration of new topics and frontiers in Artificial Intelligence research. A new field called Embodied Artificial Intelligence, which places at the intersection of Computer Vision, Robotics, and Decision Making, has been gaining importance during the last few years, as it aims to foster the development of smart autonomous robots and their deployment in society. The recent availability of large collections of 3D models for photorealistic robotic simulation has allowed faster and safe training of learning-based agents for millions of frames and a careful evaluation of their behavior before deploying the models on real robotic platforms. These intelligent agents are intended to perform a certain task in a possibly unknown environment. To this end, during the training in simulation, the agents…
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Taxonomy
TopicsReinforcement Learning in Robotics · Multi-Agent Systems and Negotiation
