Although the use of multidate polarimetric synthetic aperture radar (SAR) data for highly accurate land cover classification has been acknowledged in the literature, the high dimensionality of the data set remains a major issue. This study presents two different strategies to reduce the number of features in multidate SAR data sets: an accuracy-oriented reduction and an efficiency-oriented reduction. For both strategies, the effect of feature reduction on the quality of the land cover map is assessed. The analyzed data set consists of 20 polarimetric features derived from L-band (1.25 GHz) SAR acquired by the Danish EMISAR on four dates within the period April to July in 1998. The predictive capacity of each feature is analyzed by the impor...
We present a classification of plastic-mulched farmland (PMF) and other land cover types using full ...
2018 ISPRS Technical Commission I Midterm Symposium on Innovative Sensing - From Sensors to Methods ...
For this research, the Random Forest (RF) classifier was used to evaluate the potential of simulated...
Although the use of multidate polarimetric synthetic aperture radar (SAR) data for highly accurate l...
Agriculture is an important sector in Canada, and annual crop inventories are required in many agric...
Polarimetric SAR images are a rich data source for crop mapping. However, quad-pol sensors have some...
Feature selection techniques intent to select a subset of features that minimizes redundancy and max...
Image classification has long been used in earth observation and is driven by the need for accurate ...
Polarimetric SAR images are a rich data source for crop mapping. However, quad-pol sensors have som...
Classification of crops and other land cover types is an important application of both optical/infra...
A crop classification method using satellite data is proposed as an alternative to the existing grou...
This paper evaluates performance of fully polarimetric SAR (PolSAR) data in several land cover mappi...
This study evaluates four commonly used forms of synthetic aperture radar (SAR) data for land-cover ...
Accurate and timely information on the distribution of crop types is vital to agricultural managemen...
This paper compares ALOS PALSAR fully polarimetric and dual-polarized data in the application area o...
We present a classification of plastic-mulched farmland (PMF) and other land cover types using full ...
2018 ISPRS Technical Commission I Midterm Symposium on Innovative Sensing - From Sensors to Methods ...
For this research, the Random Forest (RF) classifier was used to evaluate the potential of simulated...
Although the use of multidate polarimetric synthetic aperture radar (SAR) data for highly accurate l...
Agriculture is an important sector in Canada, and annual crop inventories are required in many agric...
Polarimetric SAR images are a rich data source for crop mapping. However, quad-pol sensors have some...
Feature selection techniques intent to select a subset of features that minimizes redundancy and max...
Image classification has long been used in earth observation and is driven by the need for accurate ...
Polarimetric SAR images are a rich data source for crop mapping. However, quad-pol sensors have som...
Classification of crops and other land cover types is an important application of both optical/infra...
A crop classification method using satellite data is proposed as an alternative to the existing grou...
This paper evaluates performance of fully polarimetric SAR (PolSAR) data in several land cover mappi...
This study evaluates four commonly used forms of synthetic aperture radar (SAR) data for land-cover ...
Accurate and timely information on the distribution of crop types is vital to agricultural managemen...
This paper compares ALOS PALSAR fully polarimetric and dual-polarized data in the application area o...
We present a classification of plastic-mulched farmland (PMF) and other land cover types using full ...
2018 ISPRS Technical Commission I Midterm Symposium on Innovative Sensing - From Sensors to Methods ...
For this research, the Random Forest (RF) classifier was used to evaluate the potential of simulated...