The rapid and accurate identification of sunflower lodging is important for the assessment of damage to sunflower crops. To develop a fast and accurate method of extraction of information on sunflower lodging, this study improves the inputs to SegNet and U-Net to render them suitable for multi-band image processing. Random forest and two improved deep learning methods are combined with RGB, RGB + NIR, RGB + red-edge, and RGB + NIR + red-edge bands of multi-spectral images captured by a UAV (unmanned aerial vehicle) to construct 12 models to extract information on sunflower lodging. These models are then combined with the method used to ignore edge-related information to predict sunflower lodging. The results of experiments show that the dee...
The extraction of phenological events in forest and agriculture commonly relies on Vegetation Indice...
The pre-harvest estimation of seed composition from standing crops is imperative for field managemen...
Lodging is a common natural disaster during wheat growth. The accurate identification of wheat lodgi...
Supplementary material for the paper "Identifying Sunflower Lodging Based on Image Fusion and Deep S...
The extraction of wheat lodging is of great significance to post-disaster agricultural production ma...
ObjectiveTo quickly and accurately assess the situation of crop lodging disasters, it is necessary t...
Remote estimation of flower number in oilseed rape under different nitrogen (N) treatments is impera...
Dataset for the paper: Plant detection and counting from high-resolution RGB images acquired from UA...
Maize (zee mays L.) is one of the most important grain crops in China. Lodging is a natural disaster...
Lodging is one of the main factors affecting the quality and yield of crops. Timely and accurate det...
Crop monitoring is essential to increase its production and to fulfill future food-demand. For maize...
Unmanned Aerial vehicles (UAV) are a promising technology for smart farming related applications. Ae...
By 2050, agriculture production needs to double in order to reach the food demand due to rise in pop...
Recent advances in unmanned aerial vehicles (UAV), mini and mobile sensors, and GeoAI (a blend of ge...
A need to increase efficiency of plant phenotyping has arisen due to global warming, food shortage, ...
The extraction of phenological events in forest and agriculture commonly relies on Vegetation Indice...
The pre-harvest estimation of seed composition from standing crops is imperative for field managemen...
Lodging is a common natural disaster during wheat growth. The accurate identification of wheat lodgi...
Supplementary material for the paper "Identifying Sunflower Lodging Based on Image Fusion and Deep S...
The extraction of wheat lodging is of great significance to post-disaster agricultural production ma...
ObjectiveTo quickly and accurately assess the situation of crop lodging disasters, it is necessary t...
Remote estimation of flower number in oilseed rape under different nitrogen (N) treatments is impera...
Dataset for the paper: Plant detection and counting from high-resolution RGB images acquired from UA...
Maize (zee mays L.) is one of the most important grain crops in China. Lodging is a natural disaster...
Lodging is one of the main factors affecting the quality and yield of crops. Timely and accurate det...
Crop monitoring is essential to increase its production and to fulfill future food-demand. For maize...
Unmanned Aerial vehicles (UAV) are a promising technology for smart farming related applications. Ae...
By 2050, agriculture production needs to double in order to reach the food demand due to rise in pop...
Recent advances in unmanned aerial vehicles (UAV), mini and mobile sensors, and GeoAI (a blend of ge...
A need to increase efficiency of plant phenotyping has arisen due to global warming, food shortage, ...
The extraction of phenological events in forest and agriculture commonly relies on Vegetation Indice...
The pre-harvest estimation of seed composition from standing crops is imperative for field managemen...
Lodging is a common natural disaster during wheat growth. The accurate identification of wheat lodgi...