Identification and Classification of Rice Plant Disease Using Hybrid Transfer Learning

Muhammad Hanif Tunio, Liao Jianping, Muhammad Hassaan Farooq Butt, Imran Memon
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引用次数: 10

Abstract

The Rice crop is considered one of the most widely grown crops in Asia and it is susceptible to various types of illnesses at different stages of production. Food safety and production can be affected by rice plant diseases, as well as a significant decline in the quality and quantity of agricultural goods. Plant diseases can potentially prevent grain harvesting entirely in severe circumstances. As a result, automation of identification and diagnosis of plant disease is widely needed in the agriculture field. Many approaches for doing this problem have been offered with deep learning rising as the preferred method because of its excellent achievement. In this proposed research, we used Hybrid deep CNN transfer learning with rice plant images or the classification and identification of various rice diseases, we employed Transfer Learning to generate our deep learning model using Rice_Leaf_Dataset from a secondary source. The proposed model is 90.8% accurate, Experiments show that the proposed approach is viable, and it can be used to detect plant diseases efficiently and outperformed.
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基于杂交迁移学习的水稻病害识别与分类
水稻被认为是亚洲种植最广泛的作物之一,在生产的不同阶段容易受到各种疾病的影响。粮食安全和生产可能受到水稻植物病害以及农产品质量和数量大幅下降的影响。在恶劣的环境下,植物病害有可能完全阻止谷物的收获。因此,植物病害的自动化识别和诊断在农业领域有着广泛的需求。人们提出了许多解决这一问题的方法,深度学习因其优异的成绩而成为首选方法。在本研究中,我们使用混合深度CNN迁移学习与水稻植物图像或各种水稻病害的分类和识别,我们使用迁移学习来生成我们的深度学习模型,使用来自二手来源的Rice_Leaf_Dataset。该模型的准确率为90.8%,实验表明该方法是可行的,可以有效地用于植物病害检测。
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