Efficient Local-to-Global Collaborative Perception via Joint Communication and Computation Optimization
Hui Zhang, Yuquan Yang, Zechuan Gong, Xiaohua Xu, and Dan Keun Sung

TL;DR
This paper introduces LGCP, a communication- and computation-efficient framework for collaborative perception in autonomous driving, significantly reducing data transmission while maintaining or improving perception accuracy.
Contribution
The paper proposes a novel local-to-global collaborative perception framework with centralized scheduling, reducing communication overhead and computation latency in autonomous vehicle networks.
Findings
44 times reduction in data transmission
Maintains or improves perception accuracy
Effective aggregation of local perception results
Abstract
Autonomous driving relies on accurate perception to ensure safe driving. Collaborative perception improves accuracy by mitigating the sensing limitations of individual vehicles, such as limited perception range and occlusion-induced blind spots. However, collaborative perception often suffers from high communication overhead due to redundant data transmission, as well as increasing computation latency caused by excessive load with growing connected and autonomous vehicles (CAVs) participation. To address these challenges, we propose a novel local-to-global collaborative perception framework (LGCP) to achieve collaboration in a communication- and computation-efficient manner. The road of interest is partitioned into non-overlapping areas, each of which is assigned a dedicated CAV group to perform localized perception. A designated leader in each group collects and fuses perception data…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Vehicular Ad Hoc Networks (VANETs) · Traffic control and management
