基于深度学习算法的图像分类棉花病害检测

Shubham Bavaskar, V. Ghodake, Gayatri Deshmukh, Pranav Chillawar, Atul B. Kathole
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引用次数: 2

摘要

农业在一个国家的经济发展中起着重要的作用。由病原体和害虫引起的许多疾病阻碍了农业生产。如果不及早发现,这些疾病会造成严重的损害,这就是为什么预防损害的最重要步骤是尽早发现疾病。传统上,疾病是根据过去的知识用肉眼检测的。传统的方法可能是有害的,因为不正确的检测可能导致错误和过量使用杀虫剂伤害植物。本文提出了一种基于深度学习的作物叶片图像分类检测系统。该系统可以通过扫描棉花叶片来检测三种棉花疾病——细菌性枯萎病、卷曲病毒和枯萎病。本文还比较了4种不同深度学习架构的性能。使用ResNet152 V2架构获得的系统在训练数据集上的最高准确率为99.12%,在测试数据集上的最高准确率为98.26%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Classification Using Deep Learning Algorithms for Cotton Crop Disease Detection
Agriculture plays an important role in the development of the economy of a nation. Many diseases caused by pathogens and pests hamper agricultural production. If not detected earlier the diseases can cause severe damage, that is why the most important step in the prevention of damage is to detect the disease as early as possible. Traditionally the diseases are detected on basis of past knowledge using bare eyes. The traditional process can be harmful as incorrect detection can account for the wrong and excess use of pesticides harming plants. This paper presents a system for detecting crop diseases using deep learning-based image classification of crop leaves. The system can detect three cotton diseases- Bacterial Blight, Curl Virus, and Fusarium Wilt - by scanning cotton plant leaves. The paper also compares performances of 4 different deep learning architectures. The highest accuracy of the system obtained using ResNet152 V2 architecture is 99.12% on the training dataset and 98.26% on the testing dataset.
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