水稻叶病检测的迁移学习

S. Gopi, Hari Kishan Kondaveeti
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引用次数: 3

摘要

为了养活世界79亿人口,通过早期疾病检测来预防作物歉收至关重要。各种细菌、病毒或真菌病害影响水稻叶片,这些病害大大降低水稻产量。因此,鉴定水稻叶片病害对于满足全球广泛人口对水稻的需求至关重要。然而,识别水稻叶片病害的能力受到图像背景和拍摄图像的环境的限制。当对独立的水稻叶片病害数据进行测试时,用于水稻叶片病害自动检测的深度学习模型的性能受到很大影响。本研究检验了众所周知的和广泛使用的迁移学习模型的结果,以检测水稻叶病。这可以通过两种方式实现:冻结层和微调。观察到,冻结层DenseNet169的测试结果达到了99.66%的良好测试精度,当检查微调迁移学习模型的结果时,Xception表现良好,达到了99.99%的测试精度。
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Transfer Learning for Rice Leaf Disease Detection
To feed the world’s population of 7.9 billion people, preventing crop failure through early disease detection is essential. Various bacterial, viral, or fungal diseases affect the rice leaf and these diseases drastically lower rice yield. Therefore, identifying rice leaf diseases is essential to meeting the demand for rice from an extensive worldwide population. However, the ability to identify rice leaf disease is constrained by the image backgrounds and the circumstances under which the images were captured. When tested on independent rice leaf diseased data, the performance of deep learning models for automated detection of rice leaf diseases suffers substantially. This stusy examines the results of well-known and widely used transfer learning models to detect the rice leaf disease. This can be done in two ways: frozen layers and fine-tuning. It was observed that the results of the freeze layers, the DenseNet169, achieved a good testing accuracy of 99.66%, and when the results of the fine-tuned transfer learning models were examined, Xception performed well and achieved 99.99% of testing accuracy.
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