Feature Selection for Classification of Hyperspectral Data by SVM
National Institute of Technology Kurukshetra · University of Nottingham
Abstract
Support vector machines (SVM) are attractive for the classification of remotely sensed data with some claims that the method is insensitive to the dimensionality of the data and, therefore, does not require a dimensionality-reduction analysis in preprocessing. Here, a series of classification analyses with two hyperspectral sensor data sets reveals that the accuracy of a classification by an SVM does vary as a function of the number of features used. Critically, it is shown that the accuracy of a classification may decline significantly (at 0.05 level of statistical significance) with the addition of features, particularly if a small training sample is used. This highlights a dependence of the accuracy of…
Citation impact
- FWCI
- 49.81
- Percentile
- 100%
- References
- 78
Authors
2Topics & keywords
- Feature selection
- Support vector machine
- Pattern recognition (psychology)
- Computer science
- Preprocessor
- Hyperspectral imaging
- Artificial intelligence
- Dimensionality reduction