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A grapevine leaves dataset for early detection and classification of esca disease in vineyards through machine learning

机译:通过机器学习葡萄树叶数据集进行葡萄园中ESCA病的早期检测和分类

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摘要

Esca is one of the most common disease that can severely damage grapevine. This disease, if not properly treated in time, is the cause of vegetative stress or death of the attacked plant, with the consequence of losses in production as well as a rising risk of propagation to the closer grapevines. Nowadays, the detection of Esca is carried out manually through visual surveys usually done by agronomists, requiring enormous amount of time. Recently, image processing, computer vision and machine learning methods have been widely adopted for plant diseases classification. These methods can minimize the time spent for anomaly detection ensuring an early detection of Esca disease in grapevine plants that helps in preventing it to spread in the vineyards and in minimizing the financial loss to the wine producers. In this article, an image dataset of grapevine leaves is presented. The dataset holds grapevine leaves images belonging to two classes: unhealthy leaves acquired from plants affected by Esca disease and healthy leaves. The data presented has been collected to be used in a research project jointly developed by the Department of Information Engineering, Polytechnic University of Marche, Ancona, Italy and the STMicroelectronics, Italy, under the cooperation of the Umani Ronchi SPA winery, Osimo, Ancona, Marche, Italy. The dataset could be helpful to researchers who use machine learning and computer vision algorithms to develop applications that help agronomists in early detection of grapevine plant diseases. The dataset is freely available at http://dx.doi.org/10.17632/89cnxc58kj.1
机译:ESCA是最常见的疾病之一,可能会严重破坏葡萄葡萄树。这种疾病,如果没有适当处理的时间,是攻击植物营养应激或死亡的原因,其后果造成了生产损失以及对较近葡萄的繁殖风险上升。如今,ESCA的检测通过农学学家通常通过的视觉调查手动进行,需要大量时间。最近,植物疾病分类已被广泛采用图像处理,计算机视觉和机器学习方法。这些方法可以最大限度地减少对异常检测的时间,确保葡萄植物中ESCA病的早期检测有助于防止它在葡萄园中传播,并最大限度地减少葡萄酒生产商的财务损失。在本文中,呈现了葡萄树叶的图像数据集。 DataSet持有葡萄树叶属于两类的图像:从受ESCA病和健康叶子影响的植物获取的不健康叶子。已收集的数据被收集到由Marche,Icmona,意大利奥卡塞大学,意大利的职业技术工程系,意大利的信息工程系,意大利的信息工程系,根据Umani Ronchi Spa Winery,Osimo,Ancona,Ancona,马尔凯,意大利。 DataSet对使用机器学习和计算机视觉算法的研究人员有所帮助地开发帮助农学学家早期检测葡萄植物疾病的应用程序。 DataSet可在http://dx.doi.org/10.17632/89cnxc58kj.1自由使用

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