2021
DOI: 10.48550/arxiv.2106.13358
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Scalable Perception-Action-Communication Loops with Convolutional and Graph Neural Networks

Abstract: In this paper, we present a perception-action-communication loop design using Vision-based Graph Aggregation and Inference (VGAI). This multi-agent decentralized learning-to-control framework maps raw visual observations to agent actions, aided by local communication among neighboring agents. Our framework is implemented by a cascade of a convolutional and a graph neural network (CNN / GNN), addressing agent-level visual perception and feature learning, as well as swarm-level communication, local information a… Show more

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