Real‐time alerts from AI‐enabled camera traps using the Iridium satellite network: A case‐study in Gabon, Central Africa

Robin Whytock, Thijs Suijten, Tim van Deursen, Jędrzej Świeżewski, Hervé Mermiaghe, Nazaire Madamba, Narcisse Mouckoumou, Joeri A. Zwerts, Aurélie Flore Koumba Pambo, Laila Bahaa‐el‐din, Stephanie Brittain, Anabelle Williamson Cardoso, Philipp Henschel, David Lehmann, Brice Roxan Momboua, Loïc Makaga, Christopher Orbell, Lee J. T. White, Donald Midoko Iponga, Katharine Abernethy

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Efforts to preserve, protect and restore ecosystems are hindered by long delays between data collection and analysis. Threats to ecosystems can go undetected for years or decades as a result. Real‐time data can help solve this issue but significant technical barriers exist. For example, automated camera traps are widely used for ecosystem monitoring but it is challenging to transmit images for real‐time analysis where there is no reliable cellular or WiFi connectivity.<jats:p/>We modified an off‐the‐shelf camera trap (Bushnell™) and customised existing open‐source hardware to create a ‘smart’ camera trap system. Images captured by the camera trap are instantly labelled by an artificial intelligence model and an ‘alert’ containing the image label and other metadata is then delivered to the end‐user within minutes over the Iridium satellite network. We present results from testing in the Netherlands, Europe, and from a pilot test in a closed‐canopy forest in Gabon, Central Africa. All reference materials required to build the system are provided in open‐source repositories.<jats:p/>Results show the system can operate for a minimum of 3 months without intervention when capturing a median of 17.23 images per day. The median time‐difference between image capture and receiving an alert was 7.35 min, though some outliers showed delays of 5‐days or more when the system was incorrectly positioned and unable to connect to the Iridium network.<jats:p/>We anticipate significant developments in this field and hope that the solutions presented here, and the lessons learned, can be used to inform future advances. New artificial intelligence models and the addition of other sensors such as microphones will expand the system's potential for other, real‐time use cases including real‐time biodiversity monitoring, wild resource management and detecting illegal human activities in protected areas.
Original languageEnglish
Pages (from-to)867-874
Number of pages8
JournalMethods in Ecology and Evolution
Volume14
Issue number3
DOIs
Publication statusPublished - Mar 2023

Bibliographical note

Publisher Copyright:
© 2022 The Authors. Methods in Ecology and Evolution published by John Wiley & Sons Ltd on behalf of British Ecological Society.

Funding

FundersFunder number
Hertford College Mortimer May Fund
Kelly Boekee and Cisquet Kiebou Opepa
Ministry of the Environment, Water and Forests
National Parks Agency of Gabon
Trade, Development and the Environment Hub projectES/S008160/1
UK Research and Innovation
European Commission

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