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A Crop Pest Classification Model Using Deep Learning Techniques

机译:一种使用深层学习技术的作物害虫分类模型

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摘要

This paper provides a pest identification system to classify crops’ beneficial and harmful pests. For that purpose, the paper first provides a detailed description of the available pests-identification techniques along with their pros and cons. Based on the investigation, a novel classification technique is proposed in this paper. The proposed pests-identification and classification model has been developed using the Convolutional Neural Network (CNN). The model has been trained with a dataset of 9,500 images of 20 different pests. The system has been tested with a huge amount of data and validated across other traditional classification models. The classification accuracy of the proposed system is measured by 90% that is far more superior to other conventional methods.
机译:本文提供了一种害虫识别系统,用于分类作物的有益和有害的害虫。为此目的,本文首先提供了可用的有害生物识别技术以及其优点和缺点的详细描述。基于调查,本文提出了一种新颖的分类技术。已经使用卷积神经网络(CNN)开发了所提出的害虫识别和分类模型。该模型已接受过9,500张不同害虫的数据集的培训。该系统已通过大量数据进行测试,并通过其他传统分类模型进行验证。所提出的系统的分类准确性被测量到90%,远远超过其他常规方法。

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