In India, agribusiness is directly dependent on the precise monitoring of paddy areas to take considerable supportive actions toward food security. For this, satellite-based data is considered one of the effective solutions. The goal of this study is to design an intelligent framework to determine the crop area by using satellite data that is easily available. In this article, a Multi-resolution Deep Neural Network (MR-DNN) is proposed to determine rice fields by performing multi-streaming classification. The task of prediction is performed on Landsat 8 satellite images with high spatial resolution. The prediction performance of the proposed model is justified by comparing the calculated outcomes from a few selected methods. The proposed mo...
Rice is considered one the most important plants globally because it is a source of food for over ha...
Crop classification is an important task in many crop monitoring applications. Satellite remote sens...
Release of dataset and neural network weights accompanying the paper "Unlocking large-scale crop fie...
Rice is one of the world’s major staple foods, especially in China. Highly accurate monitoring...
Continuous observation and management of agriculture are essential to estimate crop yield and crop f...
The government of Sri Lanka is struggling to make appropriate policy decisions regarding paddy culti...
Recently, there has been a remarkable growth in Artificial Intelligence (AI) with the development of...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
The capacity to accurately map field boundaries of smallholder farms is important for increasing fo...
The capacity to accurately map field boundaries of smallholder farms is important for increasing fo...
As the second largest rice producer, India contributes about 20% of the world’s rice production. Tim...
The main objective of this study was to develop a workflow for paddy rice field mapping using a comb...
The elimination of hunger is the top concern for developing countries and is the key to maintain nat...
Across South Asia, the cost of rice cultivation has increased due to labor shortage. Direct seeding ...
Rice is considered one the most important plants globally because it is a source of food for over ha...
Crop classification is an important task in many crop monitoring applications. Satellite remote sens...
Release of dataset and neural network weights accompanying the paper "Unlocking large-scale crop fie...
Rice is one of the world’s major staple foods, especially in China. Highly accurate monitoring...
Continuous observation and management of agriculture are essential to estimate crop yield and crop f...
The government of Sri Lanka is struggling to make appropriate policy decisions regarding paddy culti...
Recently, there has been a remarkable growth in Artificial Intelligence (AI) with the development of...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
The capacity to accurately map field boundaries of smallholder farms is important for increasing fo...
The capacity to accurately map field boundaries of smallholder farms is important for increasing fo...
As the second largest rice producer, India contributes about 20% of the world’s rice production. Tim...
The main objective of this study was to develop a workflow for paddy rice field mapping using a comb...
The elimination of hunger is the top concern for developing countries and is the key to maintain nat...
Across South Asia, the cost of rice cultivation has increased due to labor shortage. Direct seeding ...
Rice is considered one the most important plants globally because it is a source of food for over ha...
Crop classification is an important task in many crop monitoring applications. Satellite remote sens...
Release of dataset and neural network weights accompanying the paper "Unlocking large-scale crop fie...