基于SqueezeNet和深度迁移学习的水稻病害诊断

IF 1.1 4区 农林科学 Q3 PLANT SCIENCES
Santosh Kumar Upadhyay, Anshu Kumar Dwivedi
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引用次数: 0

摘要

水稻是世界上约50%人口的基本食物来源,主要是在亚洲,由于几种水稻病害可能导致大量作物损失,农学家面临困难。及时发现这些疾病对于避免此类损失至关重要;然而,由于知识和资源有限,快速和准确的诊断仍然具有挑战性。本研究探讨了利用深度迁移学习技术自动化识别和分类水稻叶片病害,包括稻瘟病、褐斑病、枯萎病、纹枯病和枯萎病。我们从Kaggle中获得了包含2550个图像样本的数据集,分为五类。每个类别都有510张受感染叶子的图片。通过对比拉伸进行图像增强,数据增强进行数据充实,在处理后的数据集上应用改进的SqueezeNet预训练深度网络,疾病识别准确率达到99.30%。通过应用多尺度特征聚合(MFA)代替1 × 1标准卷积来修改预训练的SqueezeNet的最后一个卷积层(conv10层)。MFA由两条具有不同核大小的平行卷积路径组成,以捕获感染病变的不同特征。该模型的精密度值在0.972 ~ 1.000之间,召回率在0.980 ~ 1.000之间,错误率在0.0% ~ 0.3%之间,显示了模型的高效。在相似的实验设置下,与最先进的(SOTA)模型进行比较,所提出的模型在精度、召回率、f1得分和准确度方面都表现出优异的性能。该方法提供了一种快速、经济、准确的解决方案,即使在数据集小、背景复杂的情况下也能帮助农民进行疾病检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rice Plant Disease Diagnosis Using SqueezeNet and Deep Transfer Learning

Rice serves as a fundamental food source for around 50% of the world's population, mostly in Asia, where agriculturalists have difficulties due to several rice illnesses that may result in substantial crop losses. Timely identification of these illnesses is essential to avert such losses; yet swift and precise diagnosis continues to be challenging owing to constrained knowledge and resources. This research investigates the use of deep transfer learning for the automation of identifying and classifying rice leaf diseases, including blast, brown spot, blight, sheath blight and tungro. We have sourced dataset consisting of 2550 image samples divided into five categories from the Kaggle. Each category has 510 images of infected leaves. By using contrast stretching for image enhancement and data augmentation for data enrichment, we applied a modified SqueezeNet pre-trained deep network on processed dataset, achieved 99.30% accuracy in disease recognition. The final convolutional layer (conv. layer 10) of the pre-trained SqueezeNet is modified by applying multiscale feature aggregation (MFA) in place of 1 × 1 standard convolution. MFA consists of two parallel convolution paths with different kernel size to captures diverse features of the infected lesions. The model's proficiency is highlighted by precision values ranging from 0.972 to 1.000 and recall values between 0.980 and 1.000, whereas maintaining an extremely low error rate between 0.0% and 0.3%, highlighting its high effectiveness. In a comparison with state-of-the-art (SOTA) models under a similar experimental setup, the proposed model demonstrates superior performance in terms of precision, recall, F1-score and accuracy. The proposed method offers a fast, cost-effective and accurate solution to assist farmers in disease detection, even with small datasets and complex backgrounds.

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来源期刊
Journal of Phytopathology
Journal of Phytopathology 生物-植物科学
CiteScore
2.90
自引率
0.00%
发文量
88
审稿时长
4-8 weeks
期刊介绍: Journal of Phytopathology publishes original and review articles on all scientific aspects of applied phytopathology in agricultural and horticultural crops. Preference is given to contributions improving our understanding of the biotic and abiotic determinants of plant diseases, including epidemics and damage potential, as a basis for innovative disease management, modelling and forecasting. This includes practical aspects and the development of methods for disease diagnosis as well as infection bioassays. Studies at the population, organism, physiological, biochemical and molecular genetic level are welcome. The journal scope comprises the pathology and epidemiology of plant diseases caused by microbial pathogens, viruses and nematodes. Accepted papers should advance our conceptual knowledge of plant diseases, rather than presenting descriptive or screening data unrelated to phytopathological mechanisms or functions. Results from unrepeated experimental conditions or data with no or inappropriate statistical processing will not be considered. Authors are encouraged to look at past issues to ensure adherence to the standards of the journal.
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