Syed Taha Yeasin Ramadan, T. Sakib, Md. Mizba Ul Haque, N. Sharmin, Md. Mahbubur Rahman
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引用次数: 3

摘要

水稻是世界上产量最高的作物之一,也是许多南亚国家的主食。水稻叶病对水稻生产的影响很大,可以通过早期发现来预防。近年来,许多机器学习技术被用于帮助预防最严重的问题之一,即疾病传播。但是,与健康图像相比,患病叶子的图像有限,这使得机器学习模型的生活更加困难,因为它们需要大量的数据进行训练。为了解决这个问题,最近使用了生成对抗网络(GAN)来创建新的合成图像实例,这些实例可以作为真实图像传递。近年来,它在叶片病害鉴定领域得到了广泛的应用。但是对水稻病害的研究非常有限。本文将SRGAN (Super Resolution-GAN)作为一种数据增强方法来平衡数据集。随后应用DenseNet121、DenseNet169、MobileNetV2和VGG16对疾病进行分类。实验结果表明,与其他模型相比,新创建的增强数据集在DenseNet169和moboleNetV2上都能产生最好的结果,准确率高达94.30。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Adversarial Network-based Augmented Rice Leaf Disease Detection using Deep Learning
Rice is one of the most produced crops in the world and the staple food in many South Asian countries. Rice leaf disease can affect the production of rice vastly, which can be prevented through the early detection of it. Many machine learning techniques have been used in recent years to help in the prevention of one of the most serious concerns, which is disease transmission.But there are limited images available of diseased leaf compared to healthy images which makes life tougher for machine learning models as they need a good amount of data for training. To solve this problem, a Generative adversarial network(GAN) has been used in recent days to create new, synthetic instances of an image that can pass as a real image. Recently, it has been used widely in the field of leaf disease identification. But there is very limited work done on rice diseases. In this paper, SRGAN (Super Resolution-GAN) has been considered as a data augmentation method to balance the dataset. Afterward, DenseNet121, DenseNet169, MobileNetV2, and VGG16 have been applied to classify the diseases. Experiment results show that the newly created augmented dataset produces the best results with both DenseNet169 and moboleNetV2 when compared to other models, with high accuracy of 94.30.
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