Supervised classification systems used for land cover mapping require accurate reference databases. These reference data come generally from different sources such as field measurements, thematic maps, or aerial photographs. Due to misregistration, update delay, or land cover complexity, they may contain class label noise, i.e., a wrong label assignment. This study aims at evaluating the impact of mislabeled training data on classification performances for land cover mapping. Particularly, it addresses the random and systematic label noise problem for the classification of high resolution satellite image time series. Experiments are carried out on synthetic and real datasets with two traditional classifiers: Support Vector Machines (SVM) an...
To create a land use/land cover (LULC) map from a satellite image, we can follow a supervised classi...
Erroneous labels affect the learning models in supervised classification, deteriorate the classifica...
The accuracy of a map is dependent on the reference dataset used in its construction. Classification...
The extensive amount of Earth observation satellite images available brings opportunities and challe...
Pixel-wise classification of remote sensing imagery is highly interesting for tasks like land cover ...
Remotely sensed data are often adversely affected by many types of noise, which influences the class...
Supervised classification of remotely sensed images is a classical method for change detection. The ...
One factor limiting the accuracy of land cover maps derived from classified, remotely-sensed imagery...
Supervised classification methods rely heavily on labeled training data. However, errors in the manu...
Machine learning classifiers are being increasingly used nowadays for Land Use and Land Cover (LULC)...
Supervised classification methods rely heavily on labeled training data. However, errors in the manu...
This paper presents a new approach to identifying and eliminating mislabeled training samples. The g...
Land cover monitoring using remotely sensed data requires robust classification methods which allow ...
In this paper, we present a method for automatic refinement of training data. Many classifiers from ...
Land cover maps are typically derived through classification of remotely-sensed data, usually relyin...
To create a land use/land cover (LULC) map from a satellite image, we can follow a supervised classi...
Erroneous labels affect the learning models in supervised classification, deteriorate the classifica...
The accuracy of a map is dependent on the reference dataset used in its construction. Classification...
The extensive amount of Earth observation satellite images available brings opportunities and challe...
Pixel-wise classification of remote sensing imagery is highly interesting for tasks like land cover ...
Remotely sensed data are often adversely affected by many types of noise, which influences the class...
Supervised classification of remotely sensed images is a classical method for change detection. The ...
One factor limiting the accuracy of land cover maps derived from classified, remotely-sensed imagery...
Supervised classification methods rely heavily on labeled training data. However, errors in the manu...
Machine learning classifiers are being increasingly used nowadays for Land Use and Land Cover (LULC)...
Supervised classification methods rely heavily on labeled training data. However, errors in the manu...
This paper presents a new approach to identifying and eliminating mislabeled training samples. The g...
Land cover monitoring using remotely sensed data requires robust classification methods which allow ...
In this paper, we present a method for automatic refinement of training data. Many classifiers from ...
Land cover maps are typically derived through classification of remotely-sensed data, usually relyin...
To create a land use/land cover (LULC) map from a satellite image, we can follow a supervised classi...
Erroneous labels affect the learning models in supervised classification, deteriorate the classifica...
The accuracy of a map is dependent on the reference dataset used in its construction. Classification...