Plant disease prediction using convolutional neural network

IF 0.4 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
H. M S, †, Niteesha Sharma, Y Sowjanya, Ch. Santoshini, R Sri Durga, V. Akhila
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引用次数: 1

Abstract

Every year India losses the significant amount of annual crop yield due to unidentified plant diseases. The traditional method of disease detection is manual examination by either farmers or experts, which may be time-consuming and inaccurate. It is proving infeasible for many small and medium-sized farms around the world. To mitigate this issue, computer aided disease recognition model is proposed. It uses leaf image classification with the help of deep convolutional networks. In this paper, VGG16 and Resnet34 CNN was proposed to detect the plant disease. It has three processing steps namely feature extraction, downsizing image and classification. In CNN, the convolutional layer extracts the feature from plant image. The pooling layer downsizing the image. The disease classification was done in dense layer. The proposed model can recognize 38 differing types of plant diseases out of 14 different plants with the power to differentiate plant leaves from their surroundings. The performance of VGG16 and Resnet34 was compared.  The accuracy, sensitivity and specificity was taken as performance Metrix. It helps to give personalized recommendations to the farmers based on soil features, temperature and humidity
基于卷积神经网络的植物病害预测
由于不明植物病害,印度每年都损失大量的年度作物产量。传统的疾病检测方法是由农民或专家进行人工检查,这种方法可能耗时且不准确。事实证明,这对世界上许多中小型农场来说是不可行的。为了解决这一问题,提出了计算机辅助疾病识别模型。它在深度卷积网络的帮助下使用叶子图像分类。本文提出利用VGG16和Resnet34 CNN检测植物病害。它有三个处理步骤,即特征提取、图像缩小和分类。在CNN中,卷积层从植物图像中提取特征。池化层缩小图像。在致密层中进行疾病分类。该模型可以识别14种不同植物的38种不同类型的植物病害,并具有将植物叶片与周围环境区分开来的能力。比较了VGG16和Resnet34的性能。以准确性、灵敏度和特异性作为性能指标。它有助于根据土壤特征、温度和湿度为农民提供个性化的建议
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
EMITTER-International Journal of Engineering Technology
EMITTER-International Journal of Engineering Technology ENGINEERING, ELECTRICAL & ELECTRONIC-
自引率
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发文量
7
审稿时长
12 weeks
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