Whole-Herd Elephant Pose Estimation from Drone Data for Collective Behavior Analysis
This research represents a pioneering application of automated pose estimation from drone data to study elephant behavior in the wild, utilizing video footage captured from Samburu National Reserve, Kenya. The study evaluates two pose estimation workflows: DeepLabCut, known for its application in la...
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Zusammenfassung: | This research represents a pioneering application of automated pose
estimation from drone data to study elephant behavior in the wild, utilizing
video footage captured from Samburu National Reserve, Kenya. The study
evaluates two pose estimation workflows: DeepLabCut, known for its application
in laboratory settings and emerging wildlife fieldwork, and YOLO-NAS-Pose, a
newly released pose estimation model not previously applied to wildlife
behavioral studies. These models are trained to analyze elephant herd behavior,
focusing on low-resolution ($\sim$50 pixels) subjects to detect key points such
as the head, spine, and ears of multiple elephants within a frame. Both
workflows demonstrated acceptable quality of pose estimation on the test set,
facilitating the automated detection of basic behaviors crucial for studying
elephant herd dynamics. For the metrics selected for pose estimation evaluation
on the test set -- root mean square error (RMSE), percentage of correct
keypoints (PCK), and object keypoint similarity (OKS) -- the YOLO-NAS-Pose
workflow outperformed DeepLabCut. Additionally, YOLO-NAS-Pose exceeded
DeepLabCut in object detection evaluation. This approach introduces a novel
method for wildlife behavioral research, including the burgeoning field of
wildlife drone monitoring, with significant implications for wildlife
conservation. |
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DOI: | 10.48550/arxiv.2411.00196 |