Article ID Journal Published Year Pages File Type
4464884 International Journal of Applied Earth Observation and Geoinformation 2013 10 Pages PDF
Abstract

In this paper, a user-defined inter-band correlation filter function was used to resample hyperspectral data and thereby mitigate the problem of multicollinearity in classification analysis. The proposed resampling technique convolves the spectral dependence information between a chosen band-centre and its shorter and longer wavelength neighbours. Weighting threshold of inter-band correlation (WTC, Pearson's r) was calculated, whereby r = 1 at the band-centre. Various WTC (r = 0.99, r = 0.95 and r = 0.90) were assessed, and bands with coefficients beyond a chosen threshold were assigned r = 0. The resultant data were used in the random forest analysis to classify in situ C3 and C4 grass canopy reflectance. The respective WTC datasets yielded improved classification accuracies (kappa = 0.82, 0.79 and 0.76) with less correlated wavebands when compared to resampled Hyperion bands (kappa = 0.76). Overall, the results obtained from this study suggested that resampling of hyperspectral data should account for the spectral dependence information to improve overall classification accuracy as well as reducing the problem of multicollinearity.

► A novel resampling approach that accounts for spectral dependency was assessed. ► Thresholds of inter-band correlation enable reduction in spectral dimensionality. ► Optimal spectral resolutions were obtained for grass species differentiation. ► Higher classification accuracy was achieved with less correlated spectral bands. ► The random forest framework was aided to assume non-multicollinearity.

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Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Computers in Earth Sciences
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