Flying free: A research overview of deep learning in drone navigation autonomy

Research output: Contribution to journalArticlepeer-review

Abstract

With the rise of Deep Learning approaches in computer vision applications, significant strides have been made towards vehicular autonomy. Research activity in autonomous drone navigation has increased rapidly in the past five years, and drones are moving fast towards the ultimate goal of near-complete autonomy. However, while much work in the area focuses on specific tasks in drone navigation, the contribution to the overall goal of autonomy is often not assessed, and a comprehensive overview is needed. In this work, a taxonomy of drone navigation autonomy is established by mapping the definitions of vehicular autonomy levels, as defined by the Society of Automotive Engineers, to specific drone tasks in order to create a clear definition of autonomy when applied to drones. A top–down examination of research work in the area is conducted, focusing on drone navigation tasks, in order to understand the extent of research activity in each area. Autonomy levels are cross-checked against the drone navigation tasks addressed in each work to provide a framework for understanding the trajectory of current research. This work serves as a guide to research in drone autonomy with a particular focus on Deep Learning-based solutions, indicating key works and areas of opportunity for development of this area in the future.

Original languageEnglish
Article number52
Number of pages18
JournalDrones
Volume5
Issue number2
DOIs
Publication statusPublished - Jun 2021

Keywords

  • Artificial intelligence
  • Artificial neural networks
  • Autonomous systems
  • Deep learning
  • Internet of things
  • Machine vision
  • Multi-layer neural network
  • Neural network hardware
  • Neural networks
  • Unmanned aerial vehicles
  • Unmanned autonomous vehicles

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