4.6 Article

A comparison of airborne hyperspectral-based classifications of emergent wetland vegetation at Lake Balaton, Hungary

Journal

INTERNATIONAL JOURNAL OF REMOTE SENSING
Volume 39, Issue 17, Pages 5689-5715

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/01431161.2018.1466081

Keywords

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Funding

  1. GIONET - European Commission, Marie Curie Programme, Initial Training Networks [PITN-GA-2010-26450]
  2. EUFAR [2271]
  3. Hungarian Scientific Research Fund OTKA [PD 115833]
  4. Royal Society Wolfson Research Merit Award [2011/R3]
  5. NERC National Centre for Earth Observation
  6. Natural Environment Research Council [nceo020005, NE/R000115/1] Funding Source: researchfish
  7. NERC [NE/R000115/1, nceo020005] Funding Source: UKRI

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Earth observation has rapidly evolved into a state-of-the-art technology providing new capabilities and a wide variety of sensors; nevertheless, it is still a challenge for practitioners external to a specialized community of experts to select the appropriate sensor, define the imaging mode requirements, and select the optimal classifier or retrieval method for the task at hand. Especially in wetland mapping, studies have relied largely on vegetation indices and hyperspectral data to capture vegetation attributes. In this study, we investigate the capabilities of a concurrently acquired very high spatial resolution airborne hyperspectral and lidar data set at the peak of aquatic vegetation growth in a nature reserve at Lake Balaton, Hungary. The aim was to examine to what degree the different remote-sensing information sources (i.e. visible and near-infrared hyperspectral, vegetation indices and lidar) are contributing to an accurate aquatic vegetation map. The results indicate that de-noised hyperspectral information in the visible and very near-infrared bands (400-1000nm) is performing most accurately. Inclusion of lidar information, hyperspectral infrared bands (1000-2500nm), or extracted vegetation indices does not improve the classification accuracy. Experimental results with algorithmic comparisons show that in most cases, the Support Vector Machine classifier provides a better accuracy than the Maximum Likelihood.

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