4.7 Article

Coastal Sand Dunes Monitoring by Low Vegetation Cover Classification and Digital Elevation Model Improvement Using Synchronized Hyperspectral and Full-Waveform LiDAR Remote Sensing

期刊

REMOTE SENSING
卷 13, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/rs13010029

关键词

airborne remote sensing; hyperspectral; full-waveform LiDAR; dune morphodynamics; low vegetation; classification

资金

  1. Region Pays-de-la-Loire
  2. RS2E-OSUNA program
  3. OR2C program
  4. DREAL
  5. Region Bretagne
  6. European Regional Development Fund (ERDF)
  7. GEOFIT-expert via the CIFRE funds of G.F.'s Ph.D

向作者/读者索取更多资源

This study utilizes hyperspectral imaging and full-waveform LiDAR technology to monitor sandy dunes in Pays-de-la-Loire, France, aiming to improve the accuracy of digital terrain models and implement a supervised hierarchic classification of foredune vegetation. By combining different technologies and data sources, as well as precise calibration and classification methods, it has been successfully applied to monitoring and analyzing coastlines.
Due to the coastal morphodynamic being impacted by climate change there is a need for systematic and large-scale monitoring. The monitoring of sandy dunes in Pays-de-la-Loire (France) requires a simultaneous mapping of (i) its morphology, allowing to assess the sedimentary stocks and (ii) its low vegetation cover, which constitutes a significant proxy of the dune dynamics. The synchronization of hyperspectral imaging (HSI) with full-waveform (FWF) LiDAR is possible with an airborne platform. For a more intimate combination, we aligned the 1064 nm laser beam of a bi-spectral Titan FWF LiDAR with 401 bands and the 15 cm range resolution on the Hyspex VNIR camera with 160 bands and a 4.2 nm spectral resolution, making both types of data follow the same emergence angle. A ray tracing procedure permits to associate the data while keeping the acquisition angles. Stacking multiple shifted FWFs, which are linked to the same pixel, enables reaching a 5 cm range resolution grid. The objectives are (i) to improve the accuracy of the digital terrain models (DTM) obtained from an FWF analysis by calibrating it on dGPS field measurements and correcting it from local deviations induced by vegetation and (ii) in combination with airborne reflectances obtained with PARGE and ATCOR-4 corrections, to implement a supervised hierarchic classification of the main foredune vegetation proxies independently of the acquisition year and the physiological state. The normalization of the FWF LiDAR range to a dry sand reference waveform and the centering on their top canopy echoes allows to isolate Ammophilia arenaria from other vegetation types using two FWF indices, without confusion with slope effects. Fourteen HSI reflectance indices and 19 HSI Spectral Angle Mapping (SAM) indices based on 2017 spectral field measurements performed with the same Hyspex VNIR camera were stacked with both FWF indices into a single co-image for each acquisition year. A simple straightforward hierarchical classification of all 35 pre-classified co-image bands was successfully applied along 20 km, out of the 250 km of coastline acquired from 2017 to 2019, prefiguring its systematic application to the whole 250 km every year.

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