一个综合的图像数据集,用于识别柠檬叶疾病和计算机视觉应用。

IF 1 Q3 MULTIDISCIPLINARY SCIENCES
A K M Fazlul Kobir Siam, Prayma Bishshash, Md. Asraful Sharker Nirob, Sajib Bin Mamun, Md Assaduzzaman, Sheak Rashed Haider Noori
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引用次数: 0

摘要

一个全面的柠檬叶病数据集必将为农业研究的发展和病害管理策略的改进带来巨大的潜力。该数据集是在专业农业专家指导下于2024年7月至9月在贾马尔普尔Charpolisha拍摄的1354张原始图像中开发的,并通过增强技术进一步增强,增加了9000张图像。增强过程包括一系列技术——翻转、旋转、缩放、移动、添加噪音、剪切和增亮——以增加不同柠檬叶状况表现的多样性。每个图像都被标准化到800 × 800像素的分辨率,这样可以保持数据集之间的一致性。所有图像都被标记为9个前缀类别:炭疽病、细菌性枯萎病、柑橘溃疡、卷曲病毒、缺叶、干叶、健康叶、煤烟霉菌和蜘蛛螨。在本研究中,使用了DenseNet-121架构,其中20%的数据集用于验证,其余80%用于训练。一个批大小为32的训练模型训练了30个epoch,增强后的准确率为98.56%,未增强时的准确率为96.19%。该数据集不仅将作为开发用于早期疾病检测的准确机器学习模型的基准,而且还将通过促进及时有效的疾病管理干预,为可持续柠檬种植实践做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comprehensive image dataset for the identification of lemon leaf diseases and computer vision applications
A comprehensive dataset on lemon leaf disease can surely bring a lot of potentials into the development of agricultural research and the improvement of disease management strategies. This dataset was developed from 1354 raw images taken with professional agricultural specialist guidance from July to September 2024 in Charpolisha, Jamalpur, and further enhanced with augmented techniques, adding 9000 images. The augmentation process involves a set of techniques-flipping, rotation, zooming, shifting, adding noise, shearing, and brightening-to increase variety for different lemon leaf condition representations. Each of these images was standardized to 800 × 800 pixels resolution, so that consistency may be maintained among the dataset. All images were labelled in the nine prefixed categories: anthracnose, bacterial blight, citrus canker, curl virus, deficiency leaf, dry leaf, healthy leaf, sooty mould, and spider mites. In the present study, a DenseNet-121 architecture was used, where 20 % of the dataset was kept for validation and the remaining 80 % for training. A trained model with a batch size of 32 was trained for 30 epochs, achieving an accuracy of 98.56 % with augmentation, and 96.19 % without it. The dataset will not only act as a benchmark in developing accurate machine learning models for early disease detection, but it will also contribute to the cause of sustainable lemon cultivation practices by facilitating timely and effective disease management interventions.
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来源期刊
Data in Brief
Data in Brief MULTIDISCIPLINARY SCIENCES-
CiteScore
3.10
自引率
0.00%
发文量
996
审稿时长
70 days
期刊介绍: Data in Brief provides a way for researchers to easily share and reuse each other''s datasets by publishing data articles that: -Thoroughly describe your data, facilitating reproducibility. -Make your data, which is often buried in supplementary material, easier to find. -Increase traffic towards associated research articles and data, leading to more citations. -Open up doors for new collaborations. Because you never know what data will be useful to someone else, Data in Brief welcomes submissions that describe data from all research areas.
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