Pragmatic Communication in Multi-Agent Collaborative Perception
Yue Hu, Xianghe Pang, Xiaoqi Qin, Yonina C. Eldar, Siheng Chen, Ping, Zhang, Wenjun Zhang

TL;DR
This paper introduces PragComm, a pragmatic communication framework for multi-agent collaborative perception that reduces communication costs by transmitting only task-critical information and selecting beneficial collaborators.
Contribution
It proposes a novel pragmatic communication strategy with message selection, representation, and collaborator pruning, along with a mathematical framework and implementation for efficient multi-agent perception.
Findings
PragComm reduces communication volume by over 32,700 times compared to previous methods.
It improves performance in collaborative 3D detection and tracking tasks.
The system adapts effectively to various communication conditions.
Abstract
Collaborative perception allows each agent to enhance its perceptual abilities by exchanging messages with others. It inherently results in a trade-off between perception ability and communication costs. Previous works transmit complete full-frame high-dimensional feature maps among agents, resulting in substantial communication costs. To promote communication efficiency, we propose only transmitting the information needed for the collaborator's downstream task. This pragmatic communication strategy focuses on three key aspects: i) pragmatic message selection, which selects task-critical parts from the complete data, resulting in spatially and temporally sparse feature vectors; ii) pragmatic message representation, which achieves pragmatic approximation of high-dimensional feature vectors with a task-adaptive dictionary, enabling communicating with integer indices; iii) pragmatic…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Visual Attention and Saliency Detection · Virtual Reality Applications and Impacts
MethodsPruning
