2 research outputs found
Detection of forest windthrows with bitemporal COSMO-SkyMed and Sentinel-1 SAR data
Wind represents a primary source of disturbances in forests, necessitating an assessment of the resulting damage to ensure appropriate forest management. Remote sensing, encompassing both active and passive techniques, offers a valuable and efficient approach for this purpose, enabling coverage of large areas while being costeffective. Passive remote sensing data could be affected by the presence of clouds, unlike active systems such as Synthetic Aperture Radar (SAR) which are relatively less affected. Therefore, this study aims to explore the utilization of bitemporal SAR data for windthrow detection in mountainous regions. Specifically, we investigated how the detection outcomes vary based on three factors: i) the SAR wavelength (X-band or C-band), ii) the acquisition period of the pre- and post-event images (summer, autumn, or winter), and iii) the forest type (evergreen vs. deciduous). Our analysis considers two SAR satellite constellations: COSMO-SkyMed (band-X, with a pixel spacing of 2.5 m and 10 m) and Sentinel-1 (band-C, with a pixel spacing of 10 m). We focused on three study sites located in the Trentino-South Tyrol region of Italy, which experienced significant forest damage during the Vaia storm from 27th to 30th October 2018. To accomplish our objectives, we employed a detailpreserving, scale-driven approach for change detection in bitemporal SAR data. The results demonstrate that: i) the algorithm exhibits notably better performance when utilizing X-band data, achieving a highest kappa accuracy of 0.473 and a balanced accuracy of 76.1%; ii) the pixel spacing has an influence on the accuracy, with COSMO-SkyMed data achieving kappa values of 0.473 and 0.394 at pixel spacings of 2.5 m and 10 m, respectively; iii) the post-event image acquisition season significantly affects the algorithm’s performance, with summer imagery yielding superior results compared to winter imagery; and iv) the forest type (evergreen vs. deciduous) has a noticeable impact on the results, particularly when considering autumn/winter dat
Estimating optical vegetation indices with Sentinel-1 SAR data and AutoML
Current optical vegetation indices (VIs) for monitoring forest ecosystems are
widely used in various applications. However, continuous monitoring based on
optical satellite data can be hampered by atmospheric effects such as clouds.
On the contrary, synthetic aperture radar (SAR) data can offer insightful and
systematic forest monitoring with complete time series due to signal
penetration through clouds and day and night acquisitions. The goal of this
work is to overcome the issues affecting optical data with SAR data and serve
as a substitute for estimating optical VIs for forests using machine learning.
Time series of four VIs (LAI, FAPAR, EVI and NDVI) were estimated using
multitemporal Sentinel-1 SAR and ancillary data. This was enabled by creating a
paired multi-temporal and multi-modal dataset in Google Earth Engine (GEE),
including temporally and spatially aligned Sentinel-1, Sentinel-2, digital
elevation model (DEM), weather and land cover datasets (MMT-GEE). The use of
ancillary features generated from DEM and weather data improved the results.
The open-source Automatic Machine Learning (AutoML) approach, auto-sklearn,
outperformed Random Forest Regression for three out of four VIs, while a 1-hour
optimization length was enough to achieve sufficient results with an R2 of
69-84% low errors (0.05-0.32 of MAE depending on VI). Great agreement was also
found for selected case studies in the time series analysis and in the spatial
comparison between the original and estimated SAR-based VIs. In general,
compared to VIs from currently freely available optical satellite data and
available global VI products, a better temporal resolution (up to 240
measurements/year) and a better spatial resolution (20 m) were achieved using
estimated SAR-based VIs. A great advantage of the SAR-based VI is the ability
to detect abrupt forest changes with a sub-weekly temporal accuracy.Comment: Full research article. 30 pages, 13 figures, 8 table
