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RICE PLANT DISEASE CLASSIFICATION USING TRANSFER LEARNING OF DEEP CONVOLUTION NEURAL NETWORK

机译:利用深卷积神经网络转移学习水稻植物疾病分类

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摘要

Early and accurate diagnosis of plant diseases is a vital step in the crop protection system. In traditional practices, identification is performed either by visual observation or by testing in laboratory. The visual observation requires expertise and it may vary subject to an individual which may lead to an error while the laboratory test is time consuming and may not be able to provide the results in time. To overcome these issues, image based machine learning approach to detect and classify plant diseases has been presented in literature. We have focused specifically on rice plant (Oryza sativa) disease in this paper. The images of the diseased symptoms in leaves and stems have been captured from the rice field. We have collected a total of 619 rice plant diseased images from the real field condition belong to four classes:(a) Rice Blast (RB), (b) Bacterial Leaf Blight (BLB), (c) Sheat Blight (SB) and (d) Healthy Leave (HL). We have used a pre-trained deep convolutional neural network(CNN) as a feature extractor and Support Vector Machine (SVM) as a classifier. We have obtained encouraging results. The early identification of rice diseases by this approach could be used as a preventive measure well as an early warning system. Further, it could be extended to develop a rice plant disease identification system on real agriculture field.
机译:早期和准确的植物疾病诊断是作物保护系统的重要步骤。在传统的实践中,通过视觉观察或通过实验室测试来进行识别。视觉观察需要专业知识,它可能因个人而可能导致误差而变化,而实验室测试是耗时的,并且可能无法及时提供结果。为了克服这些问题,在文献中呈现了基于图像的机器学习方法来检测和分类植物疾病。我们在本文中专注于水稻植物(Oryza Sativa)病。叶子和茎中患病症状的图像已被捕获从稻田中捕获。我们收集了总共619种水稻植物患病图像,实地条件属于四类:(a)稻瘟病(rb),(b)细菌叶枯萎(blb),(c)披肩枯萎(Sb)和( d)健康假(HL)。我们使用预先训练的深度卷积神经网络(CNN)作为特征提取器并支持向量机(SVM)作为分类器。我们获得了令人鼓舞的结果。通过这种方法早期鉴定水稻疾病可以用作预防措施,作为预警系统。此外,它可以扩展到在真正的农业领域开发水稻植物疾病识别系统。

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