While many studies in the field of image fusion of remotely sensed data aim
towards deriving new algorithms for visual enhancement, there is little research
on the influence of image fusion on other applications. One major application in
earth science is land cover mapping. The concept of sensors with multiple spatial
resolutions provides a potential for image fusion. It minimises errors of geometric
alignment and atmospheric or temporal changes.
This study focuses on the influence of image fusion on spectral classification
algorithms and their accuracy. A Landsat 7 ETM+ image was used, where six
multispectral bands (30 m) were fused with the corresponding 15m panchromatic
channel. The fusion methods comprise rather common techniques like Brovey,
hue-saturation-value transform, and principal component analysis, and more
complex approaches, including adaptive image fusion, multisensor multiresolution
image fusion technique, and wavelet transformation. Image classification
was performed with supervised methods, e.g. maximum likelihood classifier,
object-based classification, and support vector machines. The classification was
assessed with test samples, a clump analysis, and techniques accounting for
classification errors along land cover boundaries. It was found that the adaptive
image fusion approach shows best results with low noise content. It resulted in a
major improvement when compared with the reference, especially along object
edges. Acceptable results were achieved by wavelet, multisensor multiresolution
image fusion, and principal component analysis. Brovey and hue-saturationvalue
image fusion performed poorly and cannot be recommended for
classification of fused imagery
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