4.7 Article

Transferability of multi- and hyperspectral optical biocrust indices

Journal

Publisher

ELSEVIER
DOI: 10.1016/j.isprsjprs.2017.02.007

Keywords

Biological soil crust; Remote sensing; Hyperspectral; Mapping indices; Drylands; Multispectral

Funding

  1. Max Planck Society
  2. Paul Crutzen Nobel Laureate Fellowship
  3. COSTRAS Project - Regional Ministry of Innovation, Science and Business (Andalusian Government) [RNM 3614]
  4. European Regional Development Fund (ERDF)
  5. BACARCOS Project [CGL2011-29429]
  6. RESUCI Project [CGL2006-11619/HID]
  7. German Ministry for Education and Research [01 LC 0024A]
  8. German Research Foundation [WE2393/2-1, WE2393/2-2]
  9. INTA Remote Sensing Area (Labtel)

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Biological soil crusts (biocrusts) are communities of cyanobacteria, algae, microfungi, lichens and bryophytes in varying proportions, which live within or immediately on top of the uppermost millimeters of the soil in arid and semiarid regions. As biocrusts are highly relevant for ecosystem processes like carbon, nitrogen, and water cycling, a correct characterization of their spatial distribution is required. Following this objective, considerable efforts have been devoted to the identification and mapping of biocrusts using remote sensing data, and several mapping indices have been developed. However, their transferability to different regions has only rarely been tested. In this study we investigated the transferability of two multispectral indices, i.e. the Crust Index (CI) and the Biological Soil Crust Index (BSCI), and two hyperspectral indices, i.e. the Continuum Removal Crust Identification Algorithm (CRCIA) and the Crust Development Index (CDI), in three sites dominated by biocrusts, but with differences in soil and vegetation composition. Whereas multispectral indices have been important and valuable tools for first approaches to map and classify biological soil crusts, hyperspectral data and indices developed for these allowed to classify biocrusts at much higher accuracy. While multispectral indices showed Kappa (kappa) values below 0.6, hyperspectral indices obtained good classification accuracy (kappa similar to 0.8) in both the study area where they had been developed and in the newly tested region. These results highlight the capability of hyperspectral sensors to identify specific absorption features related to photosynthetic pigments as chlorophyll and carotenoids, but also the limitation of multispectral information to discriminate between areas dominated by biocrusts, vegetation or bare soil. Based on these results we conclude that remote sensing offers an important and valid tool to map biocrusts. However, the spectral similarity between the main surface components of drylands and biocrusts demand for mapping indices based on hyperspectral information to correctly map areas dominated by biocrusts at ecosystem scale. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.

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