农民友好的智能应用程序石榴疾病识别

M. Nirmal, Pramod E Jadhav, N. Kadu
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引用次数: 1

摘要

石榴是一种产量很高的水果,生长在几个亚洲国家,是最赚钱的一种。然而,由于各种因素,植物受到各种疾病的影响,导致植物完全被破坏,产量急剧下降。通过及早发现植物病害,预防农业产量下降是可能的。石榴叶病是非常难以手动跟踪。因此,使用深度学习(DL)检测石榴植物病害。利用叶片图像实现石榴病害检测系统的自动化是本研究的目标。图像采集、处理、分类和部署都是疾病检测系统过程的一部分。石榴叶健康和疾病图像是使用门德利数据建立的。然后对原始图像进行进一步处理。使用两个深度学习模型AlexNet和VGG-16进行分类。使用精度和损耗指标来确定最优模型。指标分析表明,AlexNet在检测叶片疾病方面是有效的。然后,利用AlexNet方法创建了一个移动应用程序,帮助农民在没有专家帮助的情况下检测石榴病。
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Farmer Friendly Smart App for Pomegranate Disease Identification
Pomegranate is a fruit with a good yield that grows in several Asian countries and is the most profitable one. However, due to a variety of factors, the plants become affected by a wide range of illnesses, resulting in the full destruction of the plant and a drastically reduced yield. Preventing decreases in agricultural production is possible with the early detection of plant diseases. Pomegranate leaf diseases are extremely tough to keep track on manually. As a result, pomegranate plant diseases are detected using Deep Learning (DL). Automating the disease detection system for pomegranates using leaf images is the goal of this study. Image gathering, processing, classification, and deployment are all part of the disease detection system process. Pomegranate leaf health and disease images are built using Mendeley data. The raw image is then processed further. Two DL models, AlexNet and VGG-16, are employed for classification. Accuracy and loss metrics are used to identify the optimal model. The metrics analysis shows that AlexNet is efficient in detecting leaf disease. A mobile app utilizing the AlexNet approach is then created to assist farmers in the detection of pomegranate disease without the assistance of specialists.
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