作者
Ishana Attri, Lalit Kumar Awasthi, Teek Parval Sharma, Priyanka Rathee
发表日期
2023/7/18
来源
Ecological Informatics
页码范围
102217
出版商
Elsevier
简介
Deep learning (DL) is a robust data-analysis and image-processing technique that has shown great promise in the agricultural sector. In this study, 129 papers that are based on DL applications used in agriculture are discussed, categorizing them into five areas: crop yield prediction, plant stress detection, weed and pest detection, disease detection, and smart farming. Smart farming is sub-categorized as water management, seed analysis, and soil analysis. This study highlights the potential of deep learning in enhancing agricultural productivity and promoting economic growth. The study found that supervised learning networks, such as Convolutional Neural Networks (CNN), Recurrent Neural Networks (RNN), AlexNet, and ResNet, are primarily used in agriculture to enhance economic growth. However, there is a need to develop new DL techniques that can improve model performance and reduce inference time …
引用总数
学术搜索中的文章
I Attri, LK Awasthi, TP Sharma, P Rathee - Ecological Informatics, 2023