Drones (Aug 2024)

Efficient UAV Exploration for Large-Scale 3D Environments Using Low-Memory Map

  • Junlong Huang,
  • Zhengping Fan,
  • Zhewen Yan,
  • Peiming Duan,
  • Ruidong Mei,
  • Hui Cheng

DOI
https://doi.org/10.3390/drones8090443
Journal volume & issue
Vol. 8, no. 9
p. 443

Abstract

Read online

Autonomous exploration of unknown environments is a challenging problem in robotic applications, especially in large-scale environments. As the size of the environment increases, the limited onboard resources of the robot hardly satisfy the memory overhead and computational requirements. As a result, it is challenging to respond quickly to the received sensor data, resulting in inefficient exploration planning. And it is difficult to comprehensively utilize the gathered environmental information for planning, leading to low-quality exploration paths. In this paper, a systematic framework tailored for unmanned aerial vehicles is proposed to autonomously explore large-scale unknown environments. To reduce memory consumption, a novel low-memory environmental representation is introduced that only maintains the information necessary for exploration. Moreover, a hierarchical exploration approach based on the proposed environmental representation is developed to allow for fast planning and efficient exploration. Extensive simulation tests demonstrate the superiority of the proposed method over current state-of-the-art methods in terms of memory consumption, computation time, and exploration efficiency. Furthermore, two real-world experiments conducted in different large-scale environments also validate the feasibility of our autonomous exploration system.

Keywords