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Wheat crop classification using deep learning
Crop yield forecasting is becoming more essential in the present environment, when food security must be maintained despite climate, population, and climate change concerns. Machine learning is a useful decision-making tool for predicting agricultural yields, as well as for deciding what crops to pl...
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Published in: | Multimedia tools and applications 2024-03, Vol.83 (35), p.82641-82657 |
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container_end_page | 82657 |
container_issue | 35 |
container_start_page | 82641 |
container_title | Multimedia tools and applications |
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creator | Gill, Harmandeep Singh Bath, Bikramjit Singh Singh, Rajanbir Riar, Amarinder Singh |
description | Crop yield forecasting is becoming more essential in the present environment, when food security must be maintained despite climate, population, and climate change concerns. Machine learning is a useful decision-making tool for predicting agricultural yields, as well as for deciding what crops to plant and what to do throughout the crop’s growth season. To aid agricultural production prediction studies, a number of machine learning methods have been used. Wheat is a significant food source in India, particularly in the north. The wheat crop is categorised using deep learning techniques in the proposed research. The suggested system uses deep learning CNN, RNN, and LSTM applications to classify wheat crops. The results showed that the test accuracy ranged from
85
%
to 95.68
%
for varietal level classification. Hence, the proposed approach results are accurate and reliable, encouraging the deployment of such an approach in practice. |
doi_str_mv | 10.1007/s11042-024-18617-x |
format | article |
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85
%
to 95.68
%
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85
%
to 95.68
%
for varietal level classification. 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Machine learning is a useful decision-making tool for predicting agricultural yields, as well as for deciding what crops to plant and what to do throughout the crop’s growth season. To aid agricultural production prediction studies, a number of machine learning methods have been used. Wheat is a significant food source in India, particularly in the north. The wheat crop is categorised using deep learning techniques in the proposed research. The suggested system uses deep learning CNN, RNN, and LSTM applications to classify wheat crops. The results showed that the test accuracy ranged from
85
%
to 95.68
%
for varietal level classification. Hence, the proposed approach results are accurate and reliable, encouraging the deployment of such an approach in practice.</abstract><cop>New York</cop><pub>Springer US</pub><doi>10.1007/s11042-024-18617-x</doi><tpages>17</tpages></addata></record> |
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subjects | Agricultural equipment Agricultural production Agriculture Classification Climate change Computer Communication Networks Computer Science Computer vision Crop production Crop yield Crops Data Structures and Information Theory Deep learning Food supply High temperature Machine learning Multimedia Multimedia Information Systems Plant layout Predictions Productivity Special Purpose and Application-Based Systems Topography Vision systems Wheat Winter |
title | Wheat crop classification using deep learning |
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