Accurate information on crop distribution is of great importance for a range of applications including crop yield estimation, greenhouse gas emission measurement and management policy formulation. Fine spatial resolution (FSR) remotely sensed imagery provides new opportunities for crop mapping at a detailed level. However, crop classification from FSR imagery is known to be challenging due to the great intra-class variability and low inter-class disparity in the data. In this research, a novel hybrid method (OSVM-OCNN) was proposed for crop classification from FSR imagery, which combines a shallow-structured object-based support vector machine (OSVM) with a deep-structured object-based convolutional neural network (OCNN). Unlike pixel-wise ...
Accurately mapping heterogeneous agricultural landscape is an important prerequisite for agricultura...
The advent of affordable drones capable of taking high resolution images of agricultural fields crea...
In recent years, analyzing Synthetic Aperture Radar (SAR) data has turned into one of the challengin...
Accurate information on crop distribution is of great importance for a range of applications includi...
The highly dynamic nature of agro-ecosystems in space and time usually leads to high intra-class var...
Accurate crop distribution mapping is required for crop yield prediction and field management. Due t...
The agricultural landscape can be interpreted at different semantic levels, such as fine low-level c...
Agricultural crop mapping has advanced over the last decades due to improved approaches and the incr...
Mapping of vegetation to extract a specific crop from satellite imagery involves various considerati...
The extraction and classification of crops is the core issue of agricultural remote sensing. The pre...
The contextual-based convolutional neural network (CNN) with deep architecture and pixel-based multi...
Identification of crop and its accuracy is an important aspect in predicting crop production using R...
Crop classification is an important task in many crop monitoring applications. Satellite remote sens...
Crop discrimination and acreage play a vital role in interpreting the cropping pattern, statistics o...
[EN] Crop classification based on satellite and aerial imagery is a recurrent application in remote ...
Accurately mapping heterogeneous agricultural landscape is an important prerequisite for agricultura...
The advent of affordable drones capable of taking high resolution images of agricultural fields crea...
In recent years, analyzing Synthetic Aperture Radar (SAR) data has turned into one of the challengin...
Accurate information on crop distribution is of great importance for a range of applications includi...
The highly dynamic nature of agro-ecosystems in space and time usually leads to high intra-class var...
Accurate crop distribution mapping is required for crop yield prediction and field management. Due t...
The agricultural landscape can be interpreted at different semantic levels, such as fine low-level c...
Agricultural crop mapping has advanced over the last decades due to improved approaches and the incr...
Mapping of vegetation to extract a specific crop from satellite imagery involves various considerati...
The extraction and classification of crops is the core issue of agricultural remote sensing. The pre...
The contextual-based convolutional neural network (CNN) with deep architecture and pixel-based multi...
Identification of crop and its accuracy is an important aspect in predicting crop production using R...
Crop classification is an important task in many crop monitoring applications. Satellite remote sens...
Crop discrimination and acreage play a vital role in interpreting the cropping pattern, statistics o...
[EN] Crop classification based on satellite and aerial imagery is a recurrent application in remote ...
Accurately mapping heterogeneous agricultural landscape is an important prerequisite for agricultura...
The advent of affordable drones capable of taking high resolution images of agricultural fields crea...
In recent years, analyzing Synthetic Aperture Radar (SAR) data has turned into one of the challengin...