The timely and accurate detection of wheat lodging at a large scale is necessary for loss assessments in agricultural insurance claims. Most existing deep-learning-based methods of wheat lodging detection use data from unmanned aerial vehicles, rendering monitoring wheat lodging at a large scale difficult. Meanwhile, the edge feature is not accurately extracted. In this study, a semantic segmentation network model called the pyramid transposed convolution network (PTCNet) was proposed for large-scale wheat lodging extraction and detection using GaoFen-2 satellite images with high spatial resolutions. Multi-scale high-level features were combined with low-level features to improve the segmentation’s accuracy and to enhance the extraction sen...
The object detection method based on deep learning convolutional neural network (CNN) significantly ...
The growing population in China has led to an increasing importance of crop area (CA) protection. A ...
The number of farmers who use smart phones is increasing rapidly and furthermore RGB and thermal cam...
Lodging is a common natural disaster during wheat growth. The accurate identification of wheat lodgi...
Wheat lodging is a negative factor affecting yield production. Obtaining timely and accurate wheat l...
When extracting winter wheat spatial distribution by using convolutional neural network (CNN) from G...
The extraction of wheat lodging is of great significance to post-disaster agricultural production ma...
Winter wheat is one of the most important food crops in China, and it is of great significance to en...
Boundaries of agricultural fields are important features necessary for defining the location, shape,...
Farm detection using low resolution satellite images is an important part of digital agriculture app...
Accurate wheat spike detection is crucial in wheat field phenotyping for precision farming. Advances...
Agricultural fields are essential in providing human beings with paramount food and other materials....
Deep learning-based semantic segmentation technology is widely applied in remote sensing and has ach...
When the spatial distribution of winter wheat is extracted from high-resolution remote sensing image...
Yellow rust is a disease with a wide range that causes great damage to wheat. The traditional method...
The object detection method based on deep learning convolutional neural network (CNN) significantly ...
The growing population in China has led to an increasing importance of crop area (CA) protection. A ...
The number of farmers who use smart phones is increasing rapidly and furthermore RGB and thermal cam...
Lodging is a common natural disaster during wheat growth. The accurate identification of wheat lodgi...
Wheat lodging is a negative factor affecting yield production. Obtaining timely and accurate wheat l...
When extracting winter wheat spatial distribution by using convolutional neural network (CNN) from G...
The extraction of wheat lodging is of great significance to post-disaster agricultural production ma...
Winter wheat is one of the most important food crops in China, and it is of great significance to en...
Boundaries of agricultural fields are important features necessary for defining the location, shape,...
Farm detection using low resolution satellite images is an important part of digital agriculture app...
Accurate wheat spike detection is crucial in wheat field phenotyping for precision farming. Advances...
Agricultural fields are essential in providing human beings with paramount food and other materials....
Deep learning-based semantic segmentation technology is widely applied in remote sensing and has ach...
When the spatial distribution of winter wheat is extracted from high-resolution remote sensing image...
Yellow rust is a disease with a wide range that causes great damage to wheat. The traditional method...
The object detection method based on deep learning convolutional neural network (CNN) significantly ...
The growing population in China has led to an increasing importance of crop area (CA) protection. A ...
The number of farmers who use smart phones is increasing rapidly and furthermore RGB and thermal cam...