4.7 Article

Intra-Annual Variabilities of Rubus caesius L. Discrimination on Hyperspectral and LiDAR Data

Journal

REMOTE SENSING
Volume 13, Issue 1, Pages -

Publisher

MDPI
DOI: 10.3390/rs13010107

Keywords

dewberry; HySpex; imaging spectroscopy; vegetation indices; airborne laser scanning; non-parametric multivariate analysis of variance; linear discriminant analysis

Funding

  1. Polish National Centre for Research and Development (NCBR) under the programme Natural Environment, Agriculture and Forestry BIOSTRATEG II.: The innovative approach supporting monitoring of non-forest Natura 2000 habitats, using remote sensing methods (H [DZP/BIOSTRATEG-II/390/2015]
  2. UW Excellence Initiative -Research University [BOB-661-463-2020]

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The study focused on identifying the main functional traits crucial for differentiating the European dewberry Rubus caesius L. from non-Rubus using hyperspectral and LiDAR data. Differentiation was successful using Optical data but ALS data was less useful. Spectral ranges and indices such as ARI1, CRI1, ARVI, GDVI, CAI, NDNI, and MRESR were found to be useful for classification. Lower spectral resolution images were also effective for classifying R. caesius.
The study was focused on a plant native to Poland, the European dewberry Rubus caesius L., which is a species with the ability to become excessively abundant within its original range, potentially causing significant changes in ecosystems, including biodiversity loss. Monitoring plant distributions over large areas requires mapping that is fast, reliable, and repeatable. For Rubus, different types of data were successfully used for classification, but most of the studies used data with a very high spectral resolution. The aim of this study was to indicate, using hyperspectral and Light Detection and Ranging (LiDAR) data, the main functional trait crucial for R. caesius differentiation from non-Rubus. This analysis was carried out with consideration of the seasonal variability and different percentages of R. caesius in the vegetation patches. The analysis was based on hyperspectral HySpex images and Airborne Laser Scanning (ALS) products. Data were acquired during three campaigns: early summer, summer, and autumn. Differentiation based on Linear Discriminate Analysis (LDA) and Non-Parametric Multivariate Analysis of Variance (NPMANOVA) analysis was successful for each of the analysed campaigns using optical data, but the ALS data were less useful for identification. The analysis indicated that selected spectral ranges (VIS, red-edge, and parts of the NIR and possibly SWIR ranges) can be useful for differentiating R. caesius from non-Rubus. The most useful indices were ARI1, CRI1, ARVI, GDVI, CAI, NDNI, and MRESR. The obtained results indicate that it is possible to classify R. caesius using images with lower spectral resolution than hyperspectral data.

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