Detection of Rice Plant Disease Using Deep Learning Techniques

S. Babu, Maravarman Manoharan, R. Pitchai
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引用次数: 3

Abstract

Deep learning has recently grown a lot of interest as a way to create a fast, efficient, and reliable image identification and categorization system. India, being one of the world’s most important rice producers and consumers, relies heavily on rice to propel its economy and provide its food needs. In the crop protective device, early and precise diagnosis of plant diseases is critical. Traditionally, identification was done either through visual inspection or laboratory testing. It is critical to identify any disease early and perform the necessary treatment to the damaged plants in order to guarantee the rice plants’ healthy and proper growth. Because disease detection by hand takes a long time and requires a lot of effort, having an automated system is unavoidable. A rice plant disease identification method depends on deep learning methodologies are presented in this research. Leaf smut, bacterial leaf blight, sheat blight, and brown spot diseases are four of the most frequent rice plant diseases identified in this study. The rice plant disease is identified and recognized using deep learning algorithms. This method of early detection of rice diseases could be utilized as a preventative tool as well as an early detection. The proposed approach provides enhanced accuracy of 99.45% and it is compared with the existing state-of-the-art approaches.
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利用深度学习技术检测水稻病害
深度学习作为一种创建快速、高效、可靠的图像识别和分类系统的方法,最近引起了人们的极大兴趣。印度是世界上最重要的大米生产国和消费国之一,严重依赖大米来推动经济发展和满足粮食需求。在作物保护装置中,植物病害的早期准确诊断至关重要。传统上,鉴定要么通过目视检查,要么通过实验室测试。及早发现病害并对受损植株进行必要的处理,是保证水稻植株健康生长的关键。由于手工检测疾病需要很长时间和大量的精力,因此拥有一个自动化系统是不可避免的。提出了一种基于深度学习方法的水稻病害识别方法。叶黑穗病、细菌性叶枯病、油菜枯萎病和褐斑病是本研究中发现的四种最常见的水稻病害。利用深度学习算法对水稻病害进行识别。这种早期发现水稻病害的方法既可以作为一种预防工具,也可以作为一种早期发现方法。该方法的准确率提高了99.45%,并与现有最先进的方法进行了比较。
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