Visual Object Detection For Autonomous UAV Cinematography

Authors

  • Fotini Patrona Aristotle University of Thesssaloniki
  • Paraskevi Nousi Aristotle University of Thessaloniki
  • Ioannis Mademlis Aristotle University of Thessaloniki
  • Anastasios Tefas Aristotle University of Thessaloniki
  • Ioannis Pitas Aristotle University of Thessaloniki

DOI:

https://doi.org/10.7557/18.5099

Keywords:

Visual object detection, Autonomous UAVs, Intelligent cinematography, SSD, Yolov2, Sports events

Abstract

The popularization of commercial, battery-powered, camera-equipped, Vertical Take-off and Landing (VTOL) Unmanned Aerial Vehicles (UAVs) during the past decade, has significantly affected aerial video capturing operations in varying domains. UAVs are affordable, agile and flexible, having the ability to access otherwise inaccessible spots. However, their limited resources burden computation cinematography techniques on operating with high accuracy and real-time speed on such devices. State-of-the-art object detectors and feature extractors are, thus, studied in this work, aiming to find a trade-off between performance and speed that will allow UAV exploitation for intelligent cinematography purposes. Experimental evaluation on three newly introduced datasets of rowing boats, cyclists and parkour athletes is performed and evidence is provided that even limited-resource autonomous UAVs can indeed be used for cinematography applications.

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Published

2020-02-06