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Leaf Disease Detection and Recommendation of Pesticides using Convolution Neural Network

机译:卷积神经网络叶疾病检测与农药推荐

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Crop production problems are common in India which severely effect rural farmers, agriculture sector and the country's economy as a whole. In Crops leaf plays an important role as it gives information about the quantity and quality of agriculture yield in advance depending upon the condition of leaf. In this paper we proposed the system which works on preprocessing, feature extraction of leaf images from plant village dataset followed by convolution neural network for classification of disease and recommending Pesticides using Tensor flow technology. The main two processes that we use in our system is android application with Java Web Services and Deep Learning. We have use Convolution Neural Network with different layers five, four & three to train our model and android application as a user interface with JWS for interaction between these systems. Our results show that the highest accuracy achieved for 5-layer model with 95.05% for 15 epochs and highest validation accuracy achieved is for 5-layer model with 89.67% for 20 epochs using tensor flow.
机译:作物产量问题在印度常见于农民,农业部门和全国各方经济影响。在农作物中,叶片起到重要作用,因为它根据叶片的状况提前提前提供有关农业产量的数量和质量的信息。在本文中,我们提出了在植物村数据集中进行预处理的特征提取,其特征提取叶片图像,其次是卷积神经网络,用于使用张力流技术进行疾病和推荐杀虫剂。我们在我们的系统中使用的主要两个进程是Android应用程序与Java Web服务和深度学习。我们使用卷积神经网络具有不同层五个,四个和三个,以培训我们的模型和Android应用程序作为用户界面,具有JWS,用于这些系统之间的交互。我们的结果表明,使用张量流动的5层型号为95.05%,实现了95.05%的最高精度,实现了95.05%的最高验证精度。

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