Sciweavers

PRL
2006

Supervised feature-based classification of multi-channel SAR images

13 years 11 months ago
Supervised feature-based classification of multi-channel SAR images
This paper describes a new method for a feature-based supervised classification of multi-channel SAR data. Classic feature selection and classification methods are inadequate due to the diverse statistical distributions of the input features. A method based on logistic regression (LR) and multinomial logistic regression (MNLR) for separating different classes is therefore proposed. Both methods, LR and MNLR, are less dependent on the statistical distribution of the input data. A new spatial regularization method is also introduced to increase consistency of the classification result. The classification method was applied to a project on humanitarian demining in which the relevant classes were defined by experts of a Mine Action Center. A ground survey mission collected learning and validation samples for each class. Results of the proposed classification methods are shown and compared to a maximum likelihood classifier. Key words: SAR Image Classification, Logistic Regression, Multino...
Dirk Borghys, Yann Yvinec, Christiaan Perneel, Ale
Added 14 Dec 2010
Updated 14 Dec 2010
Type Journal
Year 2006
Where PRL
Authors Dirk Borghys, Yann Yvinec, Christiaan Perneel, Aleksandra Pizurica, Wilfried Philips
Comments (0)