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Disease Detection of Plant Leaf using Image Processing and CNN with Preventive Measures

机译:用图像处理和预防措施使用图像处理和CNN植物叶的疾病检测

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Agriculture is a very significant field for increasing population over the world to meet the basic needs of food. Meanwhile, nutrition and the world economy depend on the growth of grains and vegetables. Many farmers are cultivating in remote areas of the world with the lack of accurate knowledge and disease detection, however, they rely on manual observation on grains and vegetables, as a result, they are suffering from a great loss. Digital farming practices can be an interesting solution for easily and quickly detecting plant diseases. To address such issues, this paper proposes plants leaf disease detection and preventive measures technique in the agricultural field using image processing and two well-known convolutional neural network (CNN) models as AlexNet and ResNet-50. Firstly, this technique is applied on Kaggle datasets of potato and tomato leaves to investigate the symptoms of unhealthy leaf. Then, the feature extraction and classification process are performed in dataset images to detect leaf diseases using AlexNet and ResNet-50 models with applying image processing. The experimental results elicit the efficiency of the proposed approach where it achieves the overall 97% and 96.1 % accuracy of ResNet-50 and the overall 96.5% and 95.3% accuracy of AlexNet for the classification of healthy-unhealthy leaf and leaf diseases, respectively. Finally, a graphical layout is also demonstrated to provide a preventive measures technique for the detected leaf diseases and to acquire a rich awareness about plant health.
机译:农业是增加世界人口以满足食物的基本需求的一个非常重要的领域。同时,营养和世界经济依赖于谷物和蔬菜的生长。许多农民在世界的偏远地区培养了缺乏准确的知识和疾病检测,然而,他们依靠手工观察谷物和蔬菜,因此它们遭受了巨大的损失。数字耕作实践可以是轻松快速地检测植物疾病的有趣解决方案。为了解决此类问题,本文提出了使用图像处理和两个众所周知的卷积神经网络(CNN)模型作为AlexNet和Resnet-50的农业领域植物叶疾病检测和预防措施技术。首先,该技术适用于马铃薯和番茄叶的kaggle数据集,探讨不健康叶子的症状。然后,在数据集图像中执行特征提取和分类过程,以使用AlexNet和Reset-50模型来检测使用图像处理的叶片疾病。实验结果引发了拟议方法的效率,其中达到了Reset-50的总体97%和96.1%的准确性,以及亚历纳特的总体准确性为健康 - 不健康的叶片和叶片疾病的分类。最后,还证明了一种图形布局,为检测到的叶片疾病提供了一种预防措施技术,并获得对植物健康的丰富意识。

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