Integrationof robotic total station and digital image correlation to assess the three-dimensional surface kinematics of a landslide
Academic Article
Publication Date:
2022
abstract:
In the field of landslide monitoring, the assessment of the spatially-distributed three-dimensional surface
displacement is crucial to understand the underlying mechanisms. Nevertheless, available technologies and
techniques that provide such a datum are few and often suffer spatio-temporal resolution, logistic and/or
financial limitations. In this framework, we developed a methodology that merges the three-dimensional measurements
at specific points, acquired by a robotic total station (RTS), and the spatially-distributed data obtained
with digital image correlation (DIC) of time-lapse camera photographs, to achieve the spatially-distributed threedimensional
surface displacement. The integration method follows this procedure: i) the DIC results are
orthorectified on an existing digital elevation model; ii) the RTS data are rototranslated into the camera coordinate
system; iii) the ratio ? between displacement vertical component and module measured by the RTS is
calculated and interpolated across the region of interest; iv) the orthorectified DIC results are rescaled according
to ?, obtaining the three surface displacement components; v) the displacement vector is rototranslated into the
geographical coordinate system. The sensitivity analysis respect to ? revealed that the integration method can be
successfully applied even with a limited number of RTS measurement points. The developed methodology has
been applied to the Mont de La Saxe rockslide case study, during a phase of strong acceleration. In this period,
the displacement magnitudes varied between 0.1 m and 10 m, thus providing a stress-test input for methodology
development and validation. The results have been compared with independent ground-based interferometric
radar measurements, obtaining 0.99 linear correlation coefficient and median absolute deviation of 0.086 m,
which is comparable with the DIC measurement uncertainty. The proposed method is based on the use of lowcost
portable and commonly used field equipment, thus it can be easily implemented in existing monitoring
networks without additional financial costs.
Iris type:
01.01 Articolo in rivista
Keywords:
Data fusion; digital image correlation; robotic total station; surface deformation; Mont de La Saxe
List of contributors:
Wrzesniak, Aleksandra; Dematteis, Niccolò; Allasia, Paolo; Giordan, Daniele
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