基于卷积神经网络和迁移学习的番茄作物病害分类

Himanshu Singh, Utkarsh Tewari, S. Ushasukhanya
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引用次数: 0

摘要

农业努力满足快速增长的全球人口,造成这种情况的一个主要原因是植物病虫害,它们对粮食、纤维和生物燃料作物的生产数量和质量产生负面影响。在世界某些地区,因虫害造成的番茄产量损失继续超过可实现产量的50%。本文旨在利用CNN(卷积神经网络)等深度学习算法来检测番茄植株的多种病害。目前的CNN模型的一个局限性是它在小数据集上表现不佳,并且在数据集的同一张图像中出现多种疾病或病毒症状的样本时失败。本文旨在解决这一问题
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tomato Crop Disease Classification using Convolution Neural Network and Transfer Learning
Agriculture struggles to cater to the rapidly increasing global population, one major cause for this are the plant diseases and pests which negatively hinder the production quantity and quality of food, fibre and biofuel crops. In some parts of the world, losses in tomato production due to pests continue to exceed a staggering 50% of attainable production. This paper aims to utilize DL algorithms such as CNN (Convolution Neural Network) to detect multiple diseases in tomato plant. One limitation of the current CNN models is that it does not perform well with small datasets and fails in cases of specimen having symptoms of multiple diseases or viruses in the same image of the dataset. This paper aims to fix that
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