This study evaluates the impact of four feature selection (FS) algorithms in an object-based image analysis framework for very-high-resolution land use-land cover classification. The selected FS algorithms, correlation-based feature selection, mean decrease in accuracy, random forest (RF) based recursive feature elimination, and variable selection using random forest, were tested on the extreme gradient boosting, support vector machine, K-nearest neighbor, RF, and recursive partitioning classifiers, respectively. The results demonstrate that the selection of an appropriate FS method can be crucial to the performance of a machine learning classifier in terms of accuracy but also parsimony. In this scope, we propose a new metric to perform mo...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
The efficient mapping of land cover from remotely sensed data is highly desirable as land cover info...
This study evaluates the impact of three Feature Selection (FS) algorithms in an Object Based Image ...
The increased feature space available in object-based classification environments (e.g., extended sp...
The increased feature space available in object-based classification environments (e.g., extended sp...
In this letter, the recently developed extreme gradient boosting (Xgboost) classifier is implemented...
This study evaluates and compares the performance of four machine learning classifiers—support vecto...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
Many works dealing with the problem of urban detection in large scale have been published, but very...
Remote sensing analyses frequently use feature selection methods to remove non-beneficial feature va...
Many works dealing with the problem of urban detection at large scale have been published, but very ...
National audienceIn Geographic Object-based Image Analysis (GEOBIA), remote sensing experts benefit ...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
The efficient mapping of land cover from remotely sensed data is highly desirable as land cover info...
This study evaluates the impact of three Feature Selection (FS) algorithms in an Object Based Image ...
The increased feature space available in object-based classification environments (e.g., extended sp...
The increased feature space available in object-based classification environments (e.g., extended sp...
In this letter, the recently developed extreme gradient boosting (Xgboost) classifier is implemented...
This study evaluates and compares the performance of four machine learning classifiers—support vecto...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
Many works dealing with the problem of urban detection in large scale have been published, but very...
Remote sensing analyses frequently use feature selection methods to remove non-beneficial feature va...
Many works dealing with the problem of urban detection at large scale have been published, but very ...
National audienceIn Geographic Object-based Image Analysis (GEOBIA), remote sensing experts benefit ...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
The efficient mapping of land cover from remotely sensed data is highly desirable as land cover info...