WildDrone: autonomous drone technology for monitoring wildlife populations

Ulrik Pagh Schultz Lundquist*, Saadia Afridi, Clément Berthelot, Nguyen Ngoc Dat, Kasper Hlebowicz, Elena Iannino, Lucie Laporte-Devylder, Guy Maalouf, Giacomo May, Kilian Meier, Constanza A. Molina Catricheo, Edouard G. A. Rolland, Camille Rondeau Saint-Jean, Vandita Shukla, Tilo Burghardt, Anders Lyhne Christensen, Blair R. Costelloe, Matthijs Damen, Andrea Flack, Kjeld JensenHenrik Skov Midtiby, Majid Mirmehdi, Fabio Remondino, Tom Richardson, Benjamin Risse, Devis Tuia, Magnus Wahlberg, Dylan Cawthorne, Steve Bullock, William Njoroge, Samuel Mutisya, Matt Watson, Elzbieta Pastucha

*Corresponding author for this work

Research output: Contribution to journalArticle (Academic Journal)peer-review

Abstract

The rapid loss of biodiversity worldwide is unprecedented, with more species facing extinction now than at any other time in human history. Key factors contributing to this decline include habitat destruction, overexploitation, and climate change. There is an urgent need for innovative and effective conservation practices that leverage advanced technologies, such as autonomous drones, to monitor wildlife, manage human-wildlife conflicts, and protect endangered species. While drones have shown promise in conservation efforts, significant technological challenges remain, particularly in developing reliable, cost-effective solutions capable of operating in remote, unstructured, and open-ended environments. This paper explores the technological advancements necessary for deploying autonomous drones in nature conservation and presents the interdisciplinary scientific methodology of the WildDrone doctoral network as a basis for integrating research in drones, computer vision, and machine learning for ecological monitoring. We report preliminary results demonstrating the potential of these technologies to enhance biodiversity conservation efforts. Based on our preliminary findings, we expect that drones and computer vision will develop to further automate time consuming observational tasks in nature conservation, thus allowing human workers to ground conservation actions on evidence based on large and frequent data.
Original languageEnglish
Article number1695319
Number of pages25
JournalFrontiers in Robotics and AI
Volume12
DOIs
Publication statusPublished - 12 Jan 2026

Bibliographical note

Publisher Copyright:
© 2026 Lundquist, Afridi, Berthelot, Ngoc Dat, Hlebowicz, Iannino, Laporte-Devylder, Maalouf, May, Meier, Molina Catricheo, Rolland, Rondeau Saint-Jean, Shukla, Burghardt, Christensen, Costelloe, Damen, Flack, Jensen, Midtiby, Mirmehdi, Remondino, Richardson, Risse, Tuia, Wahlberg, Cawthorne, Bullock, Njoroge, Mutisya, Watson and Pastucha.

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 13 - Climate Action
    SDG 13 Climate Action

Keywords

  • computer vision
  • biodiversity conservation
  • conservation ecology
  • wildlife monitoring
  • autonomous drones

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