农业
计算机科学
生产力
农业工程
植物病害
人工智能
劳动力
深度学习
作物生产力
任务(项目管理)
机器学习
精准农业
农业生产力
肥料
作物
农学
生物技术
工程类
生物
生态学
宏观经济学
经济增长
系统工程
经济
作者
Buddepu Sudhir,Devalaraju Charan Teja,Kurra Kaushik Sai,P A Sridhar,T. Daniya
标识
DOI:10.1109/icaaic56838.2023.10140467
摘要
In India, the agriculture industry plays a significant role in the economy and employs a sizable section of the workforce. The demand for food is increasing and analysis of agriculture data can help improve practices and increase productivity by providing insights into crop diseases and weather conditions. Plant diseases can greatly impact agricultural productivity, and early detection is crucial to avoiding losses. The proposed project makes use of different ML techniques such as KNN, SVM, and DL techniques such as CNN and ANN to detect plant diseases in an efficient and effective manner. These techniques can be trained on large datasets to learn patterns and make predictions, making them well suited for this task. The Deep Learning system includes a system that automatically scans leaf images and detects disease based on visual symptoms. This system also calculates severity level of disease and suggests suitable amount of fertilizer for disease to soak in their crop according to severity level. A user interface was created to help farmers and agriculture workers for easy usage by simple capturing leaf image and get suggestions, this helps farmers to increase their crop production and to maintain quality of crop.
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