Author:
Guliutin Nikolai,Antamoshkin Oleslav
Abstract
The integration of UAVs with advanced deep learning algorithms, particularly the You Only Look Once models, has opened new horizons in various industries. This paper explores the transformative impact of YOLO-based systems across diverse sectors, including agriculture, forest fire detection, ecology, marine science, target detection, and UAV navigation. We delve into the specific applications of different YOLO models, ranging from YOLOv3 to the lightweight YOLOv8, highlighting their unique contributions to enhancing UAV functionalities. In agriculture, UAVs equipped with YOLO algorithms have revolutionized disease detection, crop monitoring, and weed management, contributing to sustainable farming practices. The application in forest fire management showcases the capability of these systems in real-time fire localization and analysis. In ecological and marine sciences, the use of YOLO models has significantly improved wildlife monitoring, environmental surveillance, and resource management. Target detection studies reveal the efficacy of YOLO models in processing complex UAV imagery for accurate and efficient object recognition. Moreover, advancements in UAV navigation, through YOLO-based visual landing recognition and operation in challenging environments, underscore the versatility and efficiency of these integrated systems. This comprehensive analysis demonstrates the profound impact of YOLO-based UAV technologies in various fields, underscoring their potential for future innovations and applications.
Reference27 articles.
1. Redmon J., Divvala S., Girshick R. and Farhadi A., You Only Look Once: Unified, RealTime Object Detection in 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), pp. 779-788, Las Vegas, NV, USA (2016). https://ieeexplore.ieee.org/document/7780460
2. Pyataeva A., Gulyutin N., Mikhalev A., Determination of Tree Species Using UAV Data in the Problem of Forest Taxation on the Territory of the Kuznetsovskoe Plateau in Processing of Spatial Data in Problems of Monitoring Natural and Anthropogenic Processes (SDM-2023), pp. 137-142, Berdsk, Russia (2023). https://elibrary.ru/item.asp?id=54650178
3. Antamoshkin O. et al., IOP Conf. Ser.: Earth Environ. Sci. 981 (2022). https://iopscience.iop.org/article/10.1088/1755-1315/981/3/032015
4. Early Detection of Rice Blast Using a Semi-Supervised Contrastive Unpaired Translation Iterative Network Based on UAV Images
5. Deep Learning for Detecting Verticillium Fungus in Olive Trees: Using YOLO in UAV Imagery