4.4 Article

Improved neural network classification of hyperspectral imagery using weighted genetic algorithm and hierarchical segmentation

Journal

IET IMAGE PROCESSING
Volume 13, Issue 12, Pages 2169-2175

Publisher

WILEY
DOI: 10.1049/iet-ipr.2018.5693

Keywords

support vector machines; geophysical image processing; multilayer perceptrons; genetic algorithms; feature extraction; neural nets; image segmentation; image classification; pattern classification; improved neural network classification; hyperspectral imagery; weighted genetic algorithm; modified spectral-spatial classification approach; hyperspectral images; spatial information; enhanced marker-based hierarchical segmentation algorithm; hyperspectral data; multilayer perceptron neural network classification algorithm; MHS algorithm; MLP-MHS; classification maps; benchmark hyperspectral datasets; original MHS algorithms

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This study proposes a modified spectral-spatial classification approach for improving the spectral-spatial classification of hyperspectral images. The spatial information is obtained by an enhanced marker-based hierarchical segmentation (MHS) algorithm. The weighted genetic (WG) algorithm is first employed to obtain the subspace of hyperspectral data. The obtained features are then fed into the multi-layer perceptron (MLP) neural network classification algorithm. Afterwards, the MHS algorithm is applied in order to increase the accuracy of less-accurately classified land-cover types. In the proposed approach, namely MLP-MHS, the markers are extracted from the classification maps obtained by MLP and support vector machine classifiers. Experiments on two benchmark hyperspectral datasets, Pavia University and Berlin, validate the soundness of the proposed approach compared to the MLP and the original MHS algorithms.

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