Accurate spatial information of agricultural fields is important for providing actionable information to farmers, managers, and policymakers. On the other hand, the automated detection of field boundaries is a challenging task due to their small size, irregular shape and the use of mixedcropping systems making field boundaries vaguely defined. In this paper, we propose a strategy for field boundary detection based on the fully convolutional network architecture called ResU-Net. The benefits of this model are two-fold: first, residual units ease training of deep networks. Second, rich skip connections within the network could facilitate information propagation, allowing us to design networks with fewer parameters but better performance in co...
This article presents a novel method for boundary extraction of photovoltaic (PV) plants using a ful...
Hedgerows are one of the few remaining natural landscape features within European agricultural areas...
Current efforts aim to accelerate cadastral mapping through innovative and automated approaches and ...
Boundaries of agricultural fields are important features necessary for defining the location, shape,...
Automated delineation of smallholder farm fields is difficult because of their small size, irregular...
Digital agriculture services can greatly assist growers to monitor their fields and optimize their u...
Field mapping and information on agricultural landscapes is of increasing importance for many applic...
Accurate spatial information of agricultural fields in smallholder farms is important for providing ...
Accurate and up-to-date information on the spatial and geographical characteristics of agricultural ...
Release of dataset and neural network weights accompanying the paper "Unlocking large-scale crop fie...
Knowledge of the location and extent of agricultural fields is required for many applications, inclu...
The capacity to accurately map field boundaries of smallholder farms is important for increasing fo...
The data set contains Sentinel-2 image tiles and corresponding reference maps derived from PDOK for ...
Hedgerows are one of the few remaining natural landscape features within agricultural areas. They pr...
Cropland extraction has great significance in crop area statistics, intelligent farm machinery opera...
This article presents a novel method for boundary extraction of photovoltaic (PV) plants using a ful...
Hedgerows are one of the few remaining natural landscape features within European agricultural areas...
Current efforts aim to accelerate cadastral mapping through innovative and automated approaches and ...
Boundaries of agricultural fields are important features necessary for defining the location, shape,...
Automated delineation of smallholder farm fields is difficult because of their small size, irregular...
Digital agriculture services can greatly assist growers to monitor their fields and optimize their u...
Field mapping and information on agricultural landscapes is of increasing importance for many applic...
Accurate spatial information of agricultural fields in smallholder farms is important for providing ...
Accurate and up-to-date information on the spatial and geographical characteristics of agricultural ...
Release of dataset and neural network weights accompanying the paper "Unlocking large-scale crop fie...
Knowledge of the location and extent of agricultural fields is required for many applications, inclu...
The capacity to accurately map field boundaries of smallholder farms is important for increasing fo...
The data set contains Sentinel-2 image tiles and corresponding reference maps derived from PDOK for ...
Hedgerows are one of the few remaining natural landscape features within agricultural areas. They pr...
Cropland extraction has great significance in crop area statistics, intelligent farm machinery opera...
This article presents a novel method for boundary extraction of photovoltaic (PV) plants using a ful...
Hedgerows are one of the few remaining natural landscape features within European agricultural areas...
Current efforts aim to accelerate cadastral mapping through innovative and automated approaches and ...