利用深度学习检测多种水稻病害的高级混合模型

A. Dixit, Rajat Verma
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引用次数: 0

摘要

引言:深度学习(DL)技术的飞速发展使得在图片中查找和识别物体成为可能。为了创建一个比单一的 CNN、GAN、RNN 等更成功的网络,我们可以混合各种神经网络模型(CNN、GAN、RNN)。混合深度倾斜模型能更准确地检测和识别水稻病害。 目的:我研究了混合模型 1(DCNN+SVM)和混合模型 2(DCNN+迁移学习)的结果,以提高水稻病害检测和分类的准确性。所研究的模型可检测多种水稻病害,并在多个数据集中给出相同的结果。 方法:建议的系统使用了深度学习图像处理算法和神经网络,如 DCNN、SVM 和迁移学习。全新的模型是 DST,其中 D 代表 DCNN,S 代表 SVM,T 代表迁移学习。 结果:所研究的 DST 模型达到了 95% 的训练精度和 85% 的验证精度。所研究的模型能检测多种水稻病害,并在多个数据集中给出相同的结果。 结论:所提出的模型结合了两个现有模型,并开发出了混合模型,与现有模型相比,能更准确地检测出各种水稻病害。
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Advanced Hybrid Model for Multi Paddy diseases detection using Deep Learning
INTRODUCTION: Rapid developments in deep learning (DL) techniques have made it possible to find and recognize objects in pictures. To create a network that is significantly more successful than a single CNN, GAN, RNN, etc., we can mix various neural network models (CNN, GAN, RNN).this combination is known as hybrid model. Hybrid model of deep leaning is give more accurately result for detection and identification of paddy diseases. OBJECTIVES: I have studies outcome of hybrid model 1(DCNN+SVM) and Hybrid model 2 (DCNN + Transfer Learning) to increase accuracy of Rice plant disease detection and classification. The Researched model detects multiple rice plant diseases and it is giving same result in multiple data sets. METHODS: The Proposed System have used Deep Learning Image Processing algorithm and neural Network Like DCNN ,SVM and Transfer Learning .The brand new model is DST where D stands for DCNN, S stands for SVM and T stands for transfer learning. RESULTS: The Researched  DST model achieved 95% Training accuracy and 85% validation Accuracy. The Researched model detect multiple rice plant diseases and it is giving same result in multiple data set. CONCLUSION: The proposed model combined 2 existing model and developed hybrid model that a detect various rice plant diseases with better accuracy from available existing model.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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