El Sakka Mohammad, Ivanovici Mihai, Chaari Lotfi, Mothe Josiane
Institut de Recherche en Informatique de Toulouse, IRIT UMR5505 CNRS, 31400 Toulouse, France.
Université de Toulouse, 31400 Toulouse, France.
Sensors (Basel). 2025 Jan 15;25(2):472. doi: 10.3390/s25020472.
This review explores the applications of Convolutional Neural Networks (CNNs) in smart agriculture, highlighting recent advancements across various applications including weed detection, disease detection, crop classification, water management, and yield prediction. Based on a comprehensive analysis of more than 115 recent studies, coupled with a bibliometric study of the broader literature, this paper contextualizes the use of CNNs within Agriculture 5.0, where technological integration optimizes agricultural efficiency. Key approaches analyzed involve image classification, image segmentation, regression, and object detection methods that use diverse data types ranging from RGB and multispectral images to radar and thermal data. By processing UAV and satellite data with CNNs, real-time and large-scale crop monitoring can be achieved, supporting advanced farm management. A comparative analysis shows how CNNs perform with respect to other techniques that involve traditional machine learning and recent deep learning models in image processing, particularly when applied to high-dimensional or temporal data. Future directions point toward integrating IoT and cloud platforms for real-time data processing and leveraging large language models for regulatory insights. Potential research advancements emphasize improving increased data accessibility and hybrid modeling to meet the agricultural demands of climate variability and food security, positioning CNNs as pivotal tools in sustainable agricultural practices. A related repository that contains the reviewed articles along with their publication links is made available.
本综述探讨了卷积神经网络(CNN)在智慧农业中的应用,重点介绍了其在杂草检测、病害检测、作物分类、水分管理和产量预测等各种应用中的最新进展。基于对115多项近期研究的全面分析,并结合对更广泛文献的文献计量学研究,本文将CNN的应用置于农业5.0的背景下,其中技术整合优化了农业效率。所分析的关键方法包括图像分类、图像分割、回归和目标检测方法,这些方法使用从RGB和多光谱图像到雷达和热数据等多种数据类型。通过用CNN处理无人机和卫星数据,可以实现实时和大规模的作物监测,支持先进的农场管理。一项比较分析展示了CNN相对于其他涉及传统机器学习和近期深度学习模型的图像处理技术的表现,特别是在应用于高维或时间数据时。未来的方向指向整合物联网和云平台进行实时数据处理,并利用大语言模型获取监管见解。潜在的研究进展强调提高数据可及性和混合建模,以满足应对气候变化和粮食安全的农业需求,将CNN定位为可持续农业实践中的关键工具。本文还提供了一个相关的存储库,其中包含经过评审的文章及其发表链接。