Namoun Abdallah, Alkhodre Ahmad B, Sen Adnan Ahmad Abi, Alsaawy Yazed, Almoamari Hani
AI Centre, Faculty of Computer and Information Systems, Islamic University of Madinah, Madinah 42351, Saudi Arabia.
Smart Cities, University of Prince Mugrin, Al-Madinah, Saudi Arabia.
Data Brief. 2024 Sep 11;57:110933. doi: 10.1016/j.dib.2024.110933. eCollection 2024 Dec.
This article presents an image dataset of palm leaf diseases to aid the early identification and classification of date palm infections. The dataset contains images of 8 main types of disorders affecting date palm leaves, three of which are physiological, four are fungal, and one is caused by pests. Specifically, the collected samples exhibit symptoms and signs of potassium deficiency, manganese deficiency, magnesium deficiency, black scorch, leaf spots, fusarium wilt, rachis blight, and parlatoria blanchardi. Moreover, the dataset includes a baseline of healthy palm leaves. In total, 608 raw images were captured over a period of three months, coinciding with the autumn and spring seasons, from 10 real date farms in the Madinah region of Saudi Arabia. The images were captured using smartphones and an SLR camera, focusing mainly on inflected leaves and leaflets. Date palm fruits, trunks, and roots are beyond the focus of this dataset. The infected leaf images were filtered, cropped, augmented, and categorized into their disease classes. The resulting processed dataset comprises 3089 images. Our proposed dataset can be used to train classification deep learning models of infected date palm leaves, thus enabling the early prevention of palm tree-related diseases.
本文展示了一个枣椰树病害图像数据集,以帮助对枣椰树感染进行早期识别和分类。该数据集包含影响枣椰树叶的8种主要病害类型的图像,其中3种是生理性病害,4种是真菌性病害,1种是由害虫引起的。具体而言,所收集的样本呈现出钾缺乏、锰缺乏、镁缺乏、黑焦病、叶斑病、镰刀菌枯萎病、叶轴枯萎病和白轮蚧的症状和体征。此外,该数据集还包括健康枣椰树叶的基线。在三个月的时间里,与秋季和春季同期,从沙特阿拉伯麦地那地区的10个实际枣椰农场共采集了608张原始图像。这些图像是使用智能手机和单反相机拍摄的,主要聚焦于受感染的叶片和小叶。枣椰树的果实、树干和根系不在本数据集的关注范围内。对受感染的叶片图像进行了过滤、裁剪、增强处理,并分类到各自的病害类别中。最终得到的处理后数据集包含3089张图像。我们提出的数据集可用于训练枣椰树感染叶片的分类深度学习模型,从而实现对棕榈树相关病害的早期预防。