Visibility-aware Cooperative Aerial Tracking with Decentralized LiDAR-based Swarms
Longji Yin, Yunfan Ren, Fangcheng Zhu, Liuyu Shi, Fanze Kong, Benxu Tang, Wenyi Liu, Ximin Lyu, Fu Zhang

TL;DR
This paper presents a decentralized LiDAR-based drone swarm system for visibility-aware cooperative target tracking in complex environments, utilizing novel environmental occlusion metrics and multi-robot coordination strategies.
Contribution
It introduces a new decentralized framework with SSDF-based occlusion modeling, FOV alignment, and electrostatic-inspired distribution metrics for improved multi-robot tracking.
Findings
Robust tracking of agile targets in cluttered environments.
Enhanced visibility maintenance through novel environmental metrics.
Effective decentralized coordination enabling multi-directional encirclement.
Abstract
Autonomous aerial tracking with drones offers vast potential for surveillance, cinematography, and industrial inspection applications. While single-drone tracking systems have been extensively studied, swarm-based target tracking remains underexplored, despite its unique advantages of distributed perception, fault-tolerant redundancy, and multidirectional target coverage. To bridge this gap, we propose a novel decentralized LiDAR-based swarm tracking framework that enables visibility-aware, cooperative target tracking in complex environments, while fully harnessing the unique capabilities of swarm systems. To address visibility, we introduce a novel Spherical Signed Distance Field (SSDF)-based metric for 3-D environmental occlusion representation, coupled with an efficient algorithm that enables real-time onboard SSDF updating. A general Field-of-View (FOV) alignment cost supporting…
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Taxonomy
TopicsUAV Applications and Optimization · Robotics and Sensor-Based Localization · Video Surveillance and Tracking Methods
