TL;DR
This paper evaluates computer vision methods to analyze escape responses in plains zebras from drone footage, revealing behavioral patterns and demonstrating scalable analysis techniques for collective animal behavior studies.
Contribution
It introduces and compares three computational approaches for extracting animal trajectories from drone footage, enhancing analysis of escape responses in wildlife.
Findings
Best method accurately tracks individual zebras during escape
Identified behavioral patterns such as polarization and group cohesion
Demonstrated scalability to larger datasets for behavioral research
Abstract
Ethological research increasingly benefits from the growing affordability and accessibility of drones, which enable the capture of high-resolution footage of animal movement at fine spatial and temporal scales. However, analyzing such footage presents the technical challenge of separating animal movement from drone motion. While non-trivial, computer vision techniques such as image registration and Structure-from-Motion (SfM) offer practical solutions. For conservationists, open-source tools that are user-friendly, require minimal setup, and deliver timely results are especially valuable for efficient data interpretation. This study evaluates three approaches: a bioimaging-based registration technique, an SfM pipeline, and a hybrid interpolation method. We apply these to a recorded escape event involving 44 plains zebras, captured in a single drone video. Using the best-performing…
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