Landslide monitoring is a global challenge that can take strong advantage from opportunities offered by Earth Observation (EO). The increasing availability of constellations of small satellites (e.g., CubeSats) is allowing the collection of satellite images at an incredible revisit time (daily) and good spatial resolution. Furthermore, this trend is expected to grow rapidly in the next few years. In order to explore the potential of using a long stack of images for improving the measurement of ground displacement, we developed a new procedure called STMDA (Slide Time Master Digital image correlation Analyses) that we applied to one year long stack of PlanetScope images for back analyzing the displacement pattern of the Rattlesnake Hills landslide occurred between the 2017 and 2018 in the Washington State (USA). Displacement maps and time-series of displacement of different portions of the landslide was derived, measuring velocity up to 0.5 m/week, i.e., very similar to velocities available in literature. Furthermore, STMDA showed also a good potential in denoising the time-series of displacement at the whole scale with respect to the application of standard DIC methods, thus providing displacement precision up to 0.01 pixels.

Sliding time master digital image correlation analyses of cubesat images for landslide monitoring. The Rattlesnake Hills landslide (USA) / Mazzanti, P.; Caporossi, P.; Muzi, R.. - In: REMOTE SENSING. - ISSN 2072-4292. - 12:4(2020). [10.3390/rs12040592]

Sliding time master digital image correlation analyses of cubesat images for landslide monitoring. The Rattlesnake Hills landslide (USA)

Mazzanti P.
Primo
;
Caporossi P.
Secondo
;
Muzi R.
Ultimo
2020

Abstract

Landslide monitoring is a global challenge that can take strong advantage from opportunities offered by Earth Observation (EO). The increasing availability of constellations of small satellites (e.g., CubeSats) is allowing the collection of satellite images at an incredible revisit time (daily) and good spatial resolution. Furthermore, this trend is expected to grow rapidly in the next few years. In order to explore the potential of using a long stack of images for improving the measurement of ground displacement, we developed a new procedure called STMDA (Slide Time Master Digital image correlation Analyses) that we applied to one year long stack of PlanetScope images for back analyzing the displacement pattern of the Rattlesnake Hills landslide occurred between the 2017 and 2018 in the Washington State (USA). Displacement maps and time-series of displacement of different portions of the landslide was derived, measuring velocity up to 0.5 m/week, i.e., very similar to velocities available in literature. Furthermore, STMDA showed also a good potential in denoising the time-series of displacement at the whole scale with respect to the application of standard DIC methods, thus providing displacement precision up to 0.01 pixels.
2020
cubeSat; digita image correlation; displacement monitoring; landslide; nano-satellite; planetScope; Rattlesnake; satellite images; STMDA
01 Pubblicazione su rivista::01a Articolo in rivista
Sliding time master digital image correlation analyses of cubesat images for landslide monitoring. The Rattlesnake Hills landslide (USA) / Mazzanti, P.; Caporossi, P.; Muzi, R.. - In: REMOTE SENSING. - ISSN 2072-4292. - 12:4(2020). [10.3390/rs12040592]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1415098
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