基于石榴叶图像的深度学习疾病检测

M. Nirmal, Pramod E Jadhav, Santoshi A. Pawar, Manoj Kharde, Pravara
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引用次数: 2

摘要

本研究的目的是检测石榴植物叶片病害,并利用深度卷积神经网络对病害进行识别。在印度和其他严重依赖农业的亚洲国家,植物病害是一个严重的问题。在一年中,可以发现几种疾病通过攻击作物对收成造成严重破坏。植物病害很难单凭肉眼识别。因此,开发一种能够识别疾病的系统是至关重要的。本文提出了一种植物叶片图像的深度学习技术,提出的病害检测模型利用深度卷积神经网络对病害进行定位和识别。在整个模型的训练过程中,使用了代表14个独特物种和26种不同疾病的447、56、56张图片。在训练好的模型的帮助下,进一步开发了CNN + LSTM。这项拟议中的技术不仅可以诊断健康问题,还可以根据收集到的信息提出治疗方案。在绝大多数情况下,农民和该部门的其他专家密切关注植物,以便发现和识别疾病。该框架是在深度学习技术的帮助下开发的。根据测试结果,提出的框架在区分好叶和不健康叶方面的准确率为90.546%。该框架允许对影响石榴叶的疾病进行分类,准确率为97.246%。数据集来自Mendeley data Total: 559张图像。其中健康图像287张,疾病图像272张。最初数据是按8:1:1的比例分割的。
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Deep Learning-based Disease Detection using Pomegranate Leaf Image
The goal of this research is to detect a pomegranate plant leaf disease that will identify the diseases by making use of a deep convolutional neural network. Plant diseases are a serious problem in India and other Asian Countries that rely heavily on agriculture. Throughout the course of the year, several diseases can be found causing havoc on the harvest by attacking crops. Plant diseases can be difficult to identify with the naked eye alone. As a consequence of this, the development of a system that is capable of recognizing diseases is of the utmost importance. This paper proposes a deep learning technique to an image of a plant leaf, the disease detection model that has been suggested makes use of a deep convolutional neural network to locate and identify the disease. 447, 56, 56 pictures representing 14 unique species and 26 distinct diseases were utilized throughout the training process of the model. A CNN + LSTM is further developed with the help of a trained model. This proposed technique not only diagnoses a health problem, but it also suggests courses of treatment based on the information that it has gathered. In the vast majority of cases, farmers and other specialists in the sector keep a close eye on plants in order to detect and identify diseases. The proposed framework was developed with the assistance of deep learning technique. According to the findings of the tests, the framework that has been proposed is accurate to the degree of 90.546percent when it comes to differentiating between good and unhealthy leaves. The framework allows for the classification of diseases that affect pomegranate leaf to an accuracy of 97.246 %. The data sets are from Mendeley Data Total: 559 images. In which healthy 287 images were identified and 272 diseases images were identified. Originally data were split in 8:1:1 ratio.
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