Fruits Leaf Disease Detection Using Convolutional Neural Network

Deepak Pantha
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Abstract

Due to the traditional agricultural system, losses of millions of money have been loses every year. Farmers were always ready in agricultural work without risking their lives. If smart methods can be adopted in the agricultural system, the farmers will not have to suffer much damage. Using machine learning and testing with Convolutional Neural Network algorithm (mobileNet method), in this research to find out the actual accuracy, 3642 photos of apple leaves of Kaggle dataset and CSV files are used. In this paper, using Python language with the help of Jupyter notebook, Eposes has been tested 15 times to create confusion metrics. In this paper, precision, recall, f1_ score and average accuracy have been found and studied. An average accuracy of 95 percent has been obtained from the study. 95% accuracy is considered as a good result of the test using machine learning. By adopting this method, we can also give more motivation to the agricultural sector.
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利用卷积神经网络检测果叶病害
由于传统的农业制度,每年都会造成数百万美元的损失。农民们总是随时准备着从事农业劳动,而不会冒生命危险。如果能在农业系统中采用智能方法,农民就不会遭受太多损失。本研究使用卷积神经网络算法(mobileNet 方法)进行机器学习和测试,并使用 Kaggle 数据集和 CSV 文件中的 3642 张苹果叶照片来确定实际准确率。本文在 Jupyter notebook 的帮助下,使用 Python 语言对 Eposes 进行了 15 次测试,以创建混淆度量。本文发现并研究了精确度、召回率、f1_ 分数和平均准确率。研究得出的平均准确率为 95%。95% 的准确率被认为是使用机器学习进行测试的良好结果。通过采用这种方法,我们还可以为农业部门提供更多动力。
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