Drones (Feb 2024)

MoNA Bench: A Benchmark for Monocular Depth Estimation in Navigation of Autonomous Unmanned Aircraft System

  • Yongzhou Pan,
  • Binhong Liu,
  • Zhen Liu,
  • Hao Shen,
  • Jianyu Xu,
  • Wenxing Fu,
  • Tao Yang

DOI
https://doi.org/10.3390/drones8020066
Journal volume & issue
Vol. 8, no. 2
p. 66

Abstract

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Efficient trajectory and path planning (TPP) is essential for unmanned aircraft systems (UASs) autonomy in challenging environments. Despite the scale ambiguity inherent in monocular vision, characteristics like compact size make a monocular camera ideal for micro-aerial vehicle (MAV)-based UASs. This work introduces a real-time MAV system using monocular depth estimation (MDE) with novel scale recovery module for autonomous navigation. We present MoNA Bench, a benchmark for Monocular depth estimation in Navigation of the Autonomous unmanned Aircraft system (MoNA), emphasizing its obstacle avoidance and safe target tracking capabilities. We highlight key attributes—estimation efficiency, depth map accuracy, and scale consistency—for efficient TPP through MDE.

Keywords