Animal‐borne wireless network: Remote imaging of community ecology

Abstract

This article describes the design, construction, and field‐testing of a standalone networked animal‐borne monitoring system conceived to study community ecology remotely. The system consists of an assemblage of identical battery‐powered sensing devices with wireless communication capabilities that are each collar‐mounted on a study animal and together form a mobile ad hoc network. The sensing modalities of each device include high‐definition video, inertial accelerometry, and location resolved via a global positioning system module. Our system is conceived to use information exchange across the network to enable the devices to jointly decide without supervision when and how to use each sensing modality. The ultimate goal is to extend battery life while making sure that important events are appropriately documented. This requires judicious use of highly informative but power‐hungry sensing modalities, such as video, because battery capacity is constrained by stringent weight and dimension restrictions. We have proposed algorithms to regulate sensing rates, data transmission among devices, and triggering for video recording based on location and animal group movements and configuration. We have also developed the hardware and firmware of our devices to reliably execute these algorithms in the exacting conditions of real‐life deployments. We describe validation of the performance and reliability of our system using deployment results for a mission in Gorongosa National Park (Mozambique) to monitor two species in their natural habitat: the waterbuck and the African buffalo. We present movement data and snapshots of animal point‐of‐view videos collected by 14 fully operational devices collared on 10 waterbucks and 4 buffaloes.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jul 11, 2019
Source ID
10.1002/rob.21891

Entities

People

  • Greg Marshall
  • Konrad H. Aschenbach
  • Kyler Abernathy
  • Manjur Ahmed
  • Mike Shepard
  • Naomi Ehrich Leonard
  • Nuno C. Martins
  • Shinkyu Park
  • William L. Scott

Organizations

  • Air Force Office of Scientific Research
  • Division of Electrical, Communications & Cyber Systems
  • National Geographic Society
  • Princeton University
  • University of Maryland

Tags

Readers

  • Neural Network Machine Learning.
  • Robotics and Automation.
  • Systems Analysis and Design

Technology Areas

  • Space