Timeliness-Oriented Scheduling and Resource Allocation in Multi-Region Collaborative Perception
Mengmeng Zhu, Yuxuan Sun, Yukuan Jia, Wei Chen, Bo Ai, and Sheng Zhou

TL;DR
This paper introduces a timeliness-aware scheduling algorithm for multi-region collaborative perception that optimizes perception accuracy and communication efficiency, validated through real-world simulations showing significant performance improvements.
Contribution
It proposes a novel Lyapunov-based scheduling algorithm that explicitly considers information timeliness and resource constraints in multi-region CP scenarios.
Findings
TAMP outperforms baselines with up to 27% AP improvement.
The empirical penalty function effectively models perception performance decay.
Scheduling decisions significantly impact long-term perception accuracy.
Abstract
Collaborative perception (CP) is a critical technology in applications like autonomous driving and smart cities. It involves the sharing and fusion of information among sensors to overcome the limitations of individual perception, such as blind spots and range limitations. However, CP faces two primary challenges. First, due to the dynamic nature of the environment, the timeliness of the transmitted information is critical to perception performance. Second, with limited computational power at the sensors and constrained wireless bandwidth, the communication volume must be carefully designed to ensure feature representations are both effective and sufficient. This work studies the dynamic scheduling problem in a multi-region CP scenario, and presents a Timeliness-Aware Multi-region Prioritized (TAMP) scheduling algorithm to trade-off perception accuracy and communication resource usage.…
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Taxonomy
TopicsAge of Information Optimization · Underwater Vehicles and Communication Systems · Distributed Sensor Networks and Detection Algorithms
