CVJul 26, 2023

Spatio-Temporal Domain Awareness for Multi-Agent Collaborative Perception

arXiv:2307.13929v3104 citationsh-index: 62
Originality Incremental advance
AI Analysis

This work addresses the problem of pragmatic information sharing for autonomous vehicles, representing an incremental advancement in collaborative perception.

The paper tackles the challenge of improving multi-agent collaborative perception for autonomous vehicles by proposing SCOPE, a framework that aggregates spatio-temporal awareness across agents, resulting in enhanced performance in 3D object detection tasks on three datasets.

Multi-agent collaborative perception as a potential application for vehicle-to-everything communication could significantly improve the perception performance of autonomous vehicles over single-agent perception. However, several challenges remain in achieving pragmatic information sharing in this emerging research. In this paper, we propose SCOPE, a novel collaborative perception framework that aggregates the spatio-temporal awareness characteristics across on-road agents in an end-to-end manner. Specifically, SCOPE has three distinct strengths: i) it considers effective semantic cues of the temporal context to enhance current representations of the target agent; ii) it aggregates perceptually critical spatial information from heterogeneous agents and overcomes localization errors via multi-scale feature interactions; iii) it integrates multi-source representations of the target agent based on their complementary contributions by an adaptive fusion paradigm. To thoroughly evaluate SCOPE, we consider both real-world and simulated scenarios of collaborative 3D object detection tasks on three datasets. Extensive experiments demonstrate the superiority of our approach and the necessity of the proposed components.

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