Authors:
Dr. Paola Rizzoli | German Aerospace Center (DLR) - Microwave and Radar Institute
Carolina González | German Aerospace Center (DLR) - Microwave and Radar Institute
Pietro Milillo | German Aerospace Center (DLR) - Microwave and Radar Institute
José-Luis Bueso-Bello | German Aerospace Center (DLR) - Microwave and Radar Institute
Luca Dell'Amore | German Aerospace Center (DLR) - Microwave and Radar Institute
Prof. Dr. Ulrich Strasser | University of Innsbruck
Dr. Gabriele Schwaizer | ENVEO IT GmbH
Dr. Thomas Nagler | ENVEO IT GmbH
Measuring the amount of seasonal snow cover is of paramount importance for a large variety of applications in the cryosphere, greatly influencing energy, water, and bio/geochemical cycling in mountainous ecosystems. Particularly relevant is seasonal snow depth, which is typically performed through in-situ measurements at selected sites. But manual sampling of snow depth at large scale is time-consuming and potentially dangerous for field operators. Remote sensing represents therefore a valuable solution to overcome such limitations and several techniques have been developed in recent years for estimating seasonal snow depth from lidar and Synthetic Aperture Radar (SAR) sensors. Specifically, airborne lidar sensors are able to measure the height of the surface with high accuracy and spatial resolution. Snow depth can be retrieved by differentiating surface models acquired at snow-free and snow-covered conditions (Deems et al., 2013). Although very accurately, spaceborne imaging lidar sensors required for regular large-scale monitoring of snow accumulation are still not available. In the AlpSnow project (2020-2022) we are investigating the suitability and limitations of single-pass bistatic TanDEM-X acquisitions to map the accumulation of seasonal snow on Alpine glaciers and high alpine areas with gentle topography building on the work by Leinss et al (2018).
In order to map snow depth, we are differentiating two coregistered TanDEM-X-derived digital elevation models (DEM), acquired with and without snow cover. Critical aspects to be carefully considered are the penetration of radar waves into the snow pack, the imaging geometry, and the snow conditions. At X-Band the penetration of the radar signal is low for bare ice and wet snow surfaces, while it can reach several meters in presence of dry snow (Rizzoli et al., 2017). This last case would result in a considerable bias within the estimation and has therefore to be excluded from the analysis.
The method to map snow accumulation consists in differentiating two DEMs from Bistatic Tandem-X data, acquired at snow free conditions in late summer, when bare ice is still visible on the glacier’s surface in the ablation area and only wet snow is present at higher altitudes, and the second one acquired during spring time, in presence of wet snow on top of the glacier. The main challenges to be tackled are: signal penetration into the surface, single-DEM accuracy, and mutual DEM calibration. Radar signal penetration primarily depends on the surface type and conditions and the SAR imaging geometry. In order to avoid penetration biases in the DEM generation we are properly selecting the dates of image acquisition. Another aspect is the strong topography in the Alps, which leads to significant geometric distortions in SAR images and might cause phase unwrapping errors, resulting in a lower DEM accuracy. Moreover, the low radar backscatter in presence of wet smooth snow surfaces results in a lower interferometric coherence and increases the phase noise in the interferogram. In a first step we mitigate these aspects by properly masking out regions affected by extreme topography and by radar shadow and layover, as well as by optimizing the interferometric processing and, in particular, the estimation of the interferometric phase. This can be done by either increasing the standard boxcar multi-looking, at the cost of a lower resolution, or by applying advanced denoising methods during the phase filtering process (Sica et al.; 2020).
An important step is the mutual calibration of the two DEMs which compensates for residual horizontal shifts and vertical offsets. This is solved, on the one hand, by performing a precise coregistration of the geocoded DEMs, and on the other hand, it requires the identification of reliable tie-points which can be used to vertically adjust the DEMs. Such points are required to show high interferometric coherence and to be stable in time. This operation is not trivial, given the fact that we are dealing with extremely difficult terrain and geometric distortions. To this end, we decided to select tie-points by relying on persistent scatterers candidates (PSC) which, in presence of high signal-to-noise ratio, can approximate well temporal stability in both amplitude and phase (Ferretti et al., 2001). Since no long-enough TanDEM-X time-series was available, we used a continuous time series of 1-year of Sentinel-1 data to identify PSC, which are mostly small villages and man-made structures in the valley floor and a few exposed solid rock boulders or ridges in high Alpine terrain. Given the similarity between X and C bands, we used the locations of PSC at C band for inter-calibration of the various TanDEM-X DEMs.
We will present the first preliminary results for Rofen valley in the Austrian Alps where in-situ measurements and regular terrestrial laser scanning data are available for validation. Preliminary results are promising and, given the availability of suitable data, could allow for an effective measurement of seasonal snow depth at least at regional scale. This aspect is also relevant in view of future bistatic/multi-static InSAR missions, such as the ESA Harmony Earth Explorer or the German High Resolution Wide Swath (HRWS)/Mirror-SAR.
Deems et al., 2013. Lidar measurement of snow depth: a review. Journal of Glaciology, 59(215), 467-479
Leinss et al. 2018. Wet snow depth from TanDEM-X single-pass InSAR DEM differencing, IEEE International Geoscience and Remote Sensing Symposium, 8500-8503.
Lievens et al., 2019. Snow depth variability in the Northern Hemisphere mountains observed from space. Nature Communications, 10(4629).
Rizzoli at al., 2017. Characterization of Snow Facies on the Greenland Ice Sheet Observed by TanDEM-X Interferometric SAR Data, Remote Sensing, 9(4), 315.
Sica et al. 2020. Φ-Net: Deep Residual Learning for InSAR Parameters Estimation, IEEE Transactions on Geoscience and Remote Sensing, 59(5), 3917-3941.