• Menü menu
  • menu Menü öffnen
Publikationen
Digital

Improving Wildlife Management with AI: Species-Detection and Classification from Camera Trap Data

Beteiligte Autor*innen der JOANNEUM RESEARCH:
Autor*innen:
Sead Mustafić and Dominik Dachs and Rainer Prueller and Florian Schoeggl and Roland Perko
Abstract:
In this study, we explore advanced computer vision techniques to enhance wildlife management through the automatic detection and classification of animal species from camera trap images. Leveraging deep learning methods, our research focuses on the automated extraction of critical information from these images to support forest and wildlife management, biodiversity monitoring, and reintroduction program evaluations. We present a specialized data set with manually labeled and validated images and comprehensive metadata, including species identification, sex, age class, and unique IDs for individual animals. Our approach integrates both singlestage and twostage detection and classification strategies, utilizing models such as YOLO and EfficientNet. Initial results demonstrate the effectiveness of our methods, achieving significant accuracies (up to 95%) and providing a userfriendly interface for further refinement of classifications. Future work will expand the data set and explore transformerbased deep neural networks to enhance the robustness and applicability of our wildlife classification system.
Titel:
Improving Wildlife Management with AI: Species-Detection and Classification from Camera Trap Data
Seiten:
1-14

Publikationsreihe

Name
International Workshop on Camera Traps, Hagenberg Austria
ISSN
16130073
Weitere Dateien und links
Jahr/Monat:
2024
/ September

Ähnliche Publikationen

Zum Inhalt springen