基于深度学习算法的玉米和番茄病害预测

Vijaya Kumar Reddy Kokatam, A. Doss
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引用次数: 1

摘要

印度主要是一个农业国家。农业在印度经济中占有重要地位。70%以上的农村家庭以农业为生。尽管其他部门有所增长,但2018-19年农业对GDP的总体贡献从19.2%下降到17%。当产量受到昆虫/真菌/细菌/病毒等疾病的影响时,产量效率会降低。这个问题可以通过识别疾病来解决。近年来深度学习的进步使得分类更加准确。利用植物村数据集,收集了5300幅疾病和健康植物叶片图像。训练深度学习卷积神经网络VGG16对玉米和番茄的14个病叶进行识别。在确定疾病后,通过电报机器人频道向农民手机号码发送提示信息。研究发现,深度学习算法对疾病分类的效率为86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Corn and Tomato Plant Diseases Using Deep Learning Algorithm
India is mainly an agricultural country. Agriculture assumes an essential part in the Indian economy. More than 70% of the country family units rely upon agriculture. Despite growth in other sectors, agriculture's overall contribution of GDP has decreased from 19.2 percent to 17 percent in 2018–19. When the yield is affected by pets like insect/ fungal/bacteria/viral diseases the efficiency of the yield is decrease. This problem can be overcome by identifying diseases. The recent advances in the deep learning made the classification accurately. Using Plant Village dataset of 5,300 images of disease and healthy plant leaves were collected. The deep learning convolutional neural network i.e., VGG16 were trained to identify the 14 disease leaves of corn and tomato. After identifying the disease an intimation message sent to farmer mobile number using telegram bot channel. Based on the study it is found that the deep learning algorithm is 86% efficiency for disease classification.
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