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Student Project | Computer Technology | India | Volume 14 Issue 4, April 2025 | Popularity: 5.2 / 10
Harnessing YOLO and TensorFlow for Smarter Wildlife Monitoring: A Step Toward Scalable, RealTime Conservation
Deva Sasikumar, Jogimol Joseph
Abstract: Wildlife monitoring is key to conservation work. It helps scientists grasp animal habits, keep tabs on their numbers, and ease conflicts between humans and wildlife. Old-school ways of watching, like eyeballing or snapping pics, can eat up time and energy. They don't work well in big or far-off places. To fix this, the paper suggests using TensorFlow, a cutting-edge machine learning tool, to spot wild animals in real time. By using YOLO (You Look Once), a smart deep learning model, the system aims to make finding and sorting wild animals in different settings much better and faster. YOLO is built for quick, on-the-spot detection, which makes it great for fastmoving jobs. This new system can work with real-world gear like camera traps, drones, and security setups. It allows for hands-off, quick, and scalable wildlife watching. Mixing deep learning with modern tracking tools promises to boost conservation work. It gives timely and correct data, which helps protect wildlife and take care of where they live.
Keywords: Wildlife monitoring, TensorFlow, YOLOv8, deep learning, real-time animal detection, ecological surveillance
Edition: Volume 14 Issue 4, April 2025
Pages: 1536 - 1541
DOI: https://www.doi.org/10.21275/SR25416135102
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