Aggregation methods are the most common way of upscaling land cover maps. To analyze the impact of land cover mapping error on upscaling agricultural maps, we utilized the Cropland Data Layer (CDL) data with corresponding confidence level data and simulated eight levels of error using a Monte Carlo simulation for two Agriculture Statistic Districts (ASD) in the U.S.A. The results of the simulations were used as base maps for subsequent upscaling, utilizing the majority rule based aggregation method. The results show that increasing error level resulted in higher proportional errors for each crop in both study areas. As a result of increasing error level, landscape characteristics of the base map also changed greatly resulting in higher prop...
Reference data and error matrix are commonly used to calculate a variety of accuracy statistics for ...
In monitoring land cover change by overlay of two maps from different dates, the rate of change is f...
Accurate cropland maps at the global and local scales are crucial for scientists, government and non...
Aggregation methods are the most common way of upscaling land cover maps. To analyze the impact of l...
Land cover maps increasingly underlie research into socioeconomic and environmental patterns and pro...
Upscaled maps, as necessary data sources, have drawn much attention to fill data gaps or match the s...
Upscaling land cover maps is broadly employed to fill data gaps or match the spatial-resolution of p...
Rescaled maps have been extensively utilized to provide data at the appropriate spatial resolution f...
The United States National Land Cover Database (NLCD), developed from the early 1990s to 2006, is an...
Methodology and EO data behind land cover maps are improving constantly so as the land cover maps qu...
Results and data associated with Lark et al. 2021: Accuracy, Bias, and Improvements in Mapping Crop...
Previously, applications of intensity analysis (IA) on land use and land cover change (LULCC) studie...
Previously, applications of intensity analysis (IA) on land use and land cover change (LULCC) studie...
This paper presents methods to test whether map error can explain the observed differences between t...
Improving our understanding of the uncertainty associated with a map of land-cover change is needed ...
Reference data and error matrix are commonly used to calculate a variety of accuracy statistics for ...
In monitoring land cover change by overlay of two maps from different dates, the rate of change is f...
Accurate cropland maps at the global and local scales are crucial for scientists, government and non...
Aggregation methods are the most common way of upscaling land cover maps. To analyze the impact of l...
Land cover maps increasingly underlie research into socioeconomic and environmental patterns and pro...
Upscaled maps, as necessary data sources, have drawn much attention to fill data gaps or match the s...
Upscaling land cover maps is broadly employed to fill data gaps or match the spatial-resolution of p...
Rescaled maps have been extensively utilized to provide data at the appropriate spatial resolution f...
The United States National Land Cover Database (NLCD), developed from the early 1990s to 2006, is an...
Methodology and EO data behind land cover maps are improving constantly so as the land cover maps qu...
Results and data associated with Lark et al. 2021: Accuracy, Bias, and Improvements in Mapping Crop...
Previously, applications of intensity analysis (IA) on land use and land cover change (LULCC) studie...
Previously, applications of intensity analysis (IA) on land use and land cover change (LULCC) studie...
This paper presents methods to test whether map error can explain the observed differences between t...
Improving our understanding of the uncertainty associated with a map of land-cover change is needed ...
Reference data and error matrix are commonly used to calculate a variety of accuracy statistics for ...
In monitoring land cover change by overlay of two maps from different dates, the rate of change is f...
Accurate cropland maps at the global and local scales are crucial for scientists, government and non...