Detection of Endangered Deer Species Using UAV Imagery: A Comparative Study between Efficient Deep Learning Approaches

2025-05-14·
Agustín Roca
,
Gastón Castro
Gabriel Torre
Gabriel Torre
,
Leonardo J. Colombo
,
Ignacio Mas
,
Javier Pereira
,
Juan Giribet
· 0 min read
Abstract
This study compares the performance of state-of-the-art neural networks including variants of the YOLOv11 and RT-DETR models for detecting marsh deer in UAV imagery, in scenarios where specimens occupy a very small portion ºof the image and are occluded by vegetation. We extend previous analysis adding precise segmentation masks for our datasets enabling a fine-grained training of a YOLO model with a segmentation head included. Experimental results show the effectiveness of incorporating the segmentation head achieving superior detection performance. This work contributes valuable insights for improving UAV-based wildlife monitoring and conservation strategies through scalable and accurate AI-driven detection systems.
Type
Publication
ICUAS 2025