基于深度学习的棉花病害预测

S. Sreeja, V. Asha, Binju Saju, Paunikar Priti Chandrakantbhai, Pramrish Prabhasan, Arpana Prasad
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引用次数: 0

摘要

棉花是埃塞俄比亚重要的经济作物之一,但在棉花种植区存在着诸多限制。大多数情况下,这些仅限于识别叶片中的大多数疾病或肉眼难以看到的害虫。本研究的重点是利用卷积神经网络(CNN)深度学习技术开发模型,提高棉花叶片病虫害的检测能力。为了进一步做到这一点,研究人员使用了常见的棉花叶病和害虫,这类细菌是腐烂和棉铃虫。同样地,我们可以说样本的近似值是2400个(每个类中有600个图像),它们在进一步的研究中用于训练目的。本文尝试开发一个模型,并尝试使用python版本来实现。利用该模型对棉花叶片病虫害分类的准确性进行了研究。应用该模型对棉花叶片病虫害进行分类,准确率达96.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cotton Plant Disease Prediction using Deep Learning
Cotton is one of the economical important crops in the Ethiopia, but there are so many various types of restrictions in the leaves areas. Most often these are restricted to identified most of the diseases in the leaves or the pests that are difficult to see the diseases with the naked eyes. This study is focusing on the developing on the model to improve the detection of cotton leaf diseases and then pests are using Convolutional Neural Network (CNN) deep learning technology. To do this further, the researchers are used the common cotton leaf diseases and the pests, this type of bacteria is rotten and bollworm. Similarly we can say approximate of the samples are the 2400 (600 images in each class) they were used in this further study for training purposes. In this paper, it is tried with developing a model and tried implementing it by using python version. The accuracy for the classification of cotton leaf illnesses and the pests will be studied by using the model. An accuracy of 96.4% for the classification of cotton leaf illnesses and the pests using this model is obtained.
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