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RoCoLe: A robusta coffee leaf images dataset for evaluation of machine learning based methods in plant diseases recognition

机译:RoCoLe: robusta 咖啡叶图像数据集,用于评估基于机器学习的植物病害识别方法

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In this article we introduce arobustacoffee leaf images dataset called RoCoLe. The dataset contains 1560 leaf images with visible red mites and spots (denoting coffee leaf rust presence) for infection cases and images without such structures for healthy cases. In addition, the data set includes annotations regarding objects (leaves), state (healthy and unhealthy) and the severity of disease (leaf area with spots). Images were all obtained in real-world conditions in the same coffee plants field using a smartphone camera. RoCoLe data set facilitates the evaluation of the performance of machine learning algorithms used in image segmentation and classification problems related to plant diseases recognition. The current dataset is freely and publicly available athttps://doi.org/10.17632/c5yvn32dzg.2.
机译:在本文中,我们介绍了称为RoCoLe的咖啡果叶图像数据集。数据集包含1560张带有可见红色螨虫和斑点(表示存在咖啡锈锈)的叶子图像(对于感染病例),以及没有此类结构的图像(对于健康病例)。此外,数据集还包含有关对象(叶子),状态(健康和不健康)和疾病严重程度(叶子处有斑点)的注释。图像都是使用智能手机相机在真实条件下在相同的咖啡种植场中获得的。 RoCoLe数据集有助于评估用于与植物病害识别相关的图像分割和分类问题的机器学习算法的性能。当前数据集可从https://doi.org/10.17632/c5yvn32dzg.2免费和公开获得。

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