Portela Fernando, Sousa Joaquim J, Araújo-Paredes Cláudio, Peres Emanuel, Morais Raul, Pádua Luís
Centre for the Research and Technology of Agro-Environmental and Biological Sciences, University of Trás-os-Montes e Alto Douro, 5000-801 Vila Real, Portugal.
proMetheus-Research Unit in Materials, Energy and Environment for Sustainability, Escola Superior Agrária, Instituto Politécnico de Viana do Castelo, 4900-347 Viana do Castelo, Portugal.
Sensors (Basel). 2024 Dec 21;24(24):8172. doi: 10.3390/s24248172.
Grapevines ( L.) are one of the most economically relevant crops worldwide, yet they are highly vulnerable to various diseases, causing substantial economic losses for winegrowers. This systematic review evaluates the application of remote sensing and proximal tools for vineyard disease detection, addressing current capabilities, gaps, and future directions in sensor-based field monitoring of grapevine diseases. The review covers 104 studies published between 2008 and October 2024, identified through searches in Scopus and Web of Science, conducted on 25 January 2024, and updated on 10 October 2024. The included studies focused exclusively on the sensor-based detection of grapevine diseases, while excluded studies were not related to grapevine diseases, did not use remote or proximal sensing, or were not conducted in field conditions. The most studied diseases include downy mildew, powdery mildew, , esca complex, rots, and viral diseases. The main sensors identified for disease detection are RGB, multispectral, hyperspectral sensors, and field spectroscopy. A trend identified in recent published research is the integration of artificial intelligence techniques, such as machine learning and deep learning, to improve disease detection accuracy. The results demonstrate progress in sensor-based disease monitoring, with most studies concentrating on specific diseases, sensor platforms, or methodological improvements. Future research should focus on standardizing methodologies, integrating multi-sensor data, and validating approaches across diverse vineyard contexts to improve commercial applicability and sustainability, addressing both economic and environmental challenges.
葡萄(Vitis vinifera L.)是全球经济价值最高的作物之一,但极易受到各种病害影响,给葡萄种植者造成巨大经济损失。本系统综述评估了遥感和近端工具在葡萄园病害检测中的应用,探讨了基于传感器的葡萄园病害田间监测的当前能力、差距及未来方向。该综述涵盖了2008年至2024年10月期间发表的104项研究,这些研究通过2024年1月25日在Scopus和Web of Science上的检索确定,并于2024年10月10日更新。纳入的研究仅专注于基于传感器的葡萄病害检测,而排除的研究与葡萄病害无关、未使用遥感或近端传感,或并非在田间条件下进行。研究最多的病害包括霜霉病、白粉病、葡萄枝干病害复合体、腐烂病和病毒病。确定用于病害检测的主要传感器有RGB传感器、多光谱传感器、高光谱传感器和野外光谱仪。近期发表的研究中发现的一个趋势是整合人工智能技术,如机器学习和深度学习,以提高病害检测准确性。结果表明基于传感器的病害监测取得了进展,大多数研究集中在特定病害、传感器平台或方法改进上。未来的研究应侧重于方法标准化、多传感器数据整合以及在不同葡萄园环境中验证方法,以提高商业适用性和可持续性,应对经济和环境挑战。