Accurate and timely information about rice planting areas is essential for crop yield estimation, global climate change and agricultural resource management. In this study, we present a novel pixel-level classification approach that uses convolutional neural network (CNN) model to extract the features of enhanced vegetation index (EVI) time series curve for classification. The goal is to explore the practicability of deep learning techniques for rice recognition in complex landscape regions, where rice is easily confused with the surroundings, by using mid-resolution remote sensing images. A transfer learning strategy is utilized to fine tune a pre-trained CNN model and obtain the temporal features of the EVI curve. Support vector machine (...
Sentinel-1A synthetic aperture radar (SAR) data present an opportunity for acquiring crop informatio...
The extraction and classification of crops is the core issue of agricultural remote sensing. The pre...
When extracting winter wheat spatial distribution by using convolutional neural network (CNN) from G...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
Rice is one of the world’s major staple foods, especially in China. Highly accurate monitoring...
The wide band images acquired from the Tiangong-2 space laboratory covers many spectral bands such a...
Agriculture is an important regional economic industry in Asian regions. Ensuring food security and ...
Rice is one of the most important crops in the world; meanwhile, the rice field is also an important...
Rice is one of the most important crops in the world; meanwhile, the rice field is also an important...
Accurate crop distribution mapping is required for crop yield prediction and field management. Due t...
Convolutional neural networks (CNNs) can not only classify images but can also generate key features...
In this paper, UAV (unmanned aerial vehicle, DJI Phantom4RTK) and YOLOv4 (You Only Look Once) target...
The highly dynamic nature of agro-ecosystems in space and time usually leads to high intra-class var...
In India, agribusiness is directly dependent on the precise monitoring of paddy areas to take consid...
Treball de Final de Màster Universitari Erasmus Mundus en Tecnologia Geoespacial (Pla de 2013). Codi...
Sentinel-1A synthetic aperture radar (SAR) data present an opportunity for acquiring crop informatio...
The extraction and classification of crops is the core issue of agricultural remote sensing. The pre...
When extracting winter wheat spatial distribution by using convolutional neural network (CNN) from G...
Accurate and timely information about rice planting areas is essential for crop yield estimation, gl...
Rice is one of the world’s major staple foods, especially in China. Highly accurate monitoring...
The wide band images acquired from the Tiangong-2 space laboratory covers many spectral bands such a...
Agriculture is an important regional economic industry in Asian regions. Ensuring food security and ...
Rice is one of the most important crops in the world; meanwhile, the rice field is also an important...
Rice is one of the most important crops in the world; meanwhile, the rice field is also an important...
Accurate crop distribution mapping is required for crop yield prediction and field management. Due t...
Convolutional neural networks (CNNs) can not only classify images but can also generate key features...
In this paper, UAV (unmanned aerial vehicle, DJI Phantom4RTK) and YOLOv4 (You Only Look Once) target...
The highly dynamic nature of agro-ecosystems in space and time usually leads to high intra-class var...
In India, agribusiness is directly dependent on the precise monitoring of paddy areas to take consid...
Treball de Final de Màster Universitari Erasmus Mundus en Tecnologia Geoespacial (Pla de 2013). Codi...
Sentinel-1A synthetic aperture radar (SAR) data present an opportunity for acquiring crop informatio...
The extraction and classification of crops is the core issue of agricultural remote sensing. The pre...
When extracting winter wheat spatial distribution by using convolutional neural network (CNN) from G...