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A citrus fruits and leaves dataset for detection and classification of citrus diseases through machine learning

机译:柑橘类水果和树叶数据集,用于通过机器学习检测和分类柑橘类疾病

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摘要

Plants are as vulnerable by diseases as animals. Citrus is a major plant grown mainly in the tropical areas of the world due to its richness in vitamin C and other important nutrients. The production of the citrus fruit has been widely affected by citrus diseases which ultimately degrades the fruit quality and causes financial loss to the growers. During the past decade, image processing and computer vision methods have been broadly adopted for the detection and classification of plant diseases. Early detection of diseases in citrus plants helps in preventing them to spread in the orchards which minimize the financial loss to the farmers. In this article, an image dataset citrus fruits, leaves, and stem is presented. The dataset holds citrus fruits and leaves images of healthy and infected plants with diseases such as Black spot, Canker, Scab, Greening, and Melanose. Most of the images were captured in December from the Orchards in Sargodha region of Pakistan when the fruit was about to ripen and maximum diseases were found on citrus plants. The dataset is hosted by the Department of Computer Science, University of Gujrat and acquired under the mutual cooperation of the University of Gujrat and the Citrus Research Center, Government of Punjab, Pakistan. The dataset would potentially be helpful to researchers who use machine learning and computer vision algorithms to develop computer applications to help farmers in early detection of plant diseases. The dataset is freely available at https://data.mendeley.com/datasets/3f83gxmv57/2.
机译:植物和动物一样易受疾病的侵害。柑橘是一种主要植物,主要​​生长在世界热带地区,因为它富含维生素C和其他重要营养素。柑桔类水果的生产已受到柑桔类疾病的广泛影响,柑桔类疾病最终会降低水果质量并给种植者造成经济损失。在过去的十年中,图像处理和计算机视觉方法已广泛用于植物病害的检测和分类。柑橘类植物疾病的早期发现有助于防止其在果园中传播,从而最大程度地减少了对农民的经济损失。本文介绍了柑橘类水果,叶子和茎的图像数据集。该数据集包含柑橘类水果,并留下健康和受感染植物的图像,这些植物患有黑斑病,溃疡病,结Sc,绿化病和黑素病。大部分图像是在12月从巴基斯坦萨戈达(Sargodha)地区的果园捕获的,当时该果实即将成熟,柑橘类植物的发病率最高。该数据集由古吉拉特大学计算机科学系托管,并在古吉拉特大学和巴基斯坦旁遮普邦政府柑橘研究中心的共同合作下获得。该数据集可能对使用机器学习和计算机视觉算法来开发计算机应用程序以帮助农民及早发现植物病害的研究人员有所帮助。该数据集可从https://data.mendeley.com/datasets/3f83gxmv57/2免费获得。

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