Species Discrimination of Mangroves using Derivative Spectral Analysis

  • Arun Prasad K
  • Gnanappazham L
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Mangroves are salt tolerant trees or shrubs commonly seen in mudflats of intertidal regions of tropical and subtropical coastlines. Recent advances in field spectroscopic techniques enabled the species level discrimination among closely related vegetation types. In this study we have analysed the laboratory spectroscopy data collected from eight species of <i>Rhizophoraceaea</i> family of mangroves. The spectral data ranges between the wavelength of 350 nm and 2500 nm at a very narrow bandwidth of 1 nm. Preprocessing techniques including smoothing were done on the spectra to remove the noise before compiling it to a spectral library. Derivative analysis of the spectra was done and its corresponding first and second derivatives were obtained. Statistical analysis such as parametric and non-parametric tests were implemented on the original processed spectra as well as their respective first and second order derivatives for the identification of significant bands for species discrimination. Results have shown that red edge region (680 nm – 720 nm) and water vapour absorption region around 1150 nm and 1400 nm are optimal as they were consistent in discriminating species in reflectance spectra as well as in its first and second derivative spectra. C. <i>decandra</i> species is found to be discriminable from other species while reflectance and its derivative spectra were used. Non-parametric statistical analysis gave better results than that of parametric statistical analysis especially in SWIR 2 spectral region (1831 nm – 2500 nm).




Arun Prasad, K., & Gnanappazham, L. (2014). Species Discrimination of Mangroves using Derivative Spectral Analysis. ISPRS Annals of Photogrammetry, Remote Sensing and Spatial Information Sciences, II8, 45–52. https://doi.org/10.5194/isprsannals-ii-8-45-2014

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