Published 2001
| Version v1
Publication
Support vector machines for remote-sensing image classification
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Description
In the last decade, the application of statistical and neural network classifiers to remote-sensing images has been deeply
investigated. Therefore, performances, characteristics, and pros and cons of such classifiers are quite well known, even from
remote-sensing practitioners. In this paper, we present the application to remote-sensing image classification of a new
pattern recognition technique recently introduced within the framework of the Statistical Learning Theory developed by V.
Vapnik and his co-workers, namely, the Support Vector Machines (SVMs). In section 1, the main theoretical foundations of
SVMs are presented. In section 2, experiments carried out on a data set of multisensor remote-sensing images are described,
with particular emphasis on the design and training phase of a SVM. In section 3, the experimental results are reported,
together with a comparison between the performances of SVMs, neural network, and k-NN classifiers.
Additional details
Identifiers
- URL
- http://hdl.handle.net/11567/1083605
- URN
- urn:oai:iris.unige.it:11567/1083605
Origin repository
- Origin repository
- UNIGE