This report is concerned with the application of a Multiple Kernel Learning classification method to the identification of ship types in moderate-resolution SAR images. After a brief presentation of the theory and and the features of this class of methods, we select a few R packages useful to this aim, and delineate a procedure to select the relevant features and kernel functions, execute and test the classifier. Some experiments are then reported using naive geometrical features extracted from a few thousands of targets in the OpenSARShip data set. All the ship chips extracted are derived from IW GRD Sentinel 1 C-band SAR images, accompanied by AIS and MarineTraffic ground-truth data. The ideal performance of this classifier is evaluated through the standard classification indices, with respect to the ship types that are sufficiently represented in the subsets considered.
Multiple kernel learning to classify vessels from naive geometrical features
Salerno E
2021
Abstract
This report is concerned with the application of a Multiple Kernel Learning classification method to the identification of ship types in moderate-resolution SAR images. After a brief presentation of the theory and and the features of this class of methods, we select a few R packages useful to this aim, and delineate a procedure to select the relevant features and kernel functions, execute and test the classifier. Some experiments are then reported using naive geometrical features extracted from a few thousands of targets in the OpenSARShip data set. All the ship chips extracted are derived from IW GRD Sentinel 1 C-band SAR images, accompanied by AIS and MarineTraffic ground-truth data. The ideal performance of this classifier is evaluated through the standard classification indices, with respect to the ship types that are sufficiently represented in the subsets considered.File | Dimensione | Formato | |
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