Semi-Automatic Identification and Pre-Screening of Geological–Geotechnical Deformational Processes Using Persistent Scatterer Interferometry Datasets
Abstract
:1. Introduction
2. Materials and Methods
2.1. Chain for The Semiautomatic Classification of Active Deformation Areas
- Identification of ADA—in this module the PSI data are analyzed to extract the ADA according to the methodology proposed by Barra et al. [17]. To this aim, the app ADAfinder has been implemented. The derived product consists of a map of ADA that contains the areas showing active deformation represented as polygons. This is an intermediate product for the next step.
- Pre-screening of ADA—this block performs a preliminary classification of the ADA previously identified using auxiliary information. This process is carried out by means of the applications LOS2HV and ADAclassifier. The output of this step consists of a set of maps containing information about the potential geohazards underlying each ADA.
2.1.1. Identification of Active Deformation Areas (ADAfinder)
- The isolation distance that defines the radius of isolation around a PS. This parameter is set to perform a PS filtering aimed at reducing the general noise of the PS deformation map. PSs with no neighbors within such radius are considered isolated and thus removed. It is recommended to adopt twice the resolution of the SAR images dataset for this parameter. Therefore, a distance of 40 m has been adopted in our test sites. This isolation distance is also used to detect outlier PS.
- The minimum number of active PS within the isolation distance. When within the isolation distance there are fewer active points than the number specified (“Minimum size of non-isolated clusters”), the PS being checked is considered outlier and removed. This condition is applied to clean sparse measurements and points with strong discrepancy with respect their neighbors, i.e., isolated active PS (outliers).
- The multiplication factor of the standard deviation (σ) of velocities. The definition of the velocity threshold to consider a PS as active or non-active is based on the standard deviation (σ) of the PS velocities of the deformation map that includes all PS [5]. σ can be considered as an indicator of the general sensitivity of the map to measure movements, since it provides information about its noise level [17]. Depending on the case, the user can choose a different multiplication factor to be applied to σ for the velocity threshold definition. Commonly, values comprised between 1⋅σ and 2⋅σ are adopted as stability threshold. In the test sites shown in this work, a value of 1.5⋅σ has been adopted.
- Velocity threshold to consider an ADA as belonging to class 1 or 2 has to be defined by the user. In this work, an ADA belongs to class 1 if the absolute value of the maximum velocity is higher than the defined velocity threshold or 2 if the velocity is comprised between 1.5⋅σ and the velocity threshold.
- The radius of influence to consider the active PSs as belonging to the same cluster (i.e., those PSs which are within the “Clustering radius” are considered as members of an ADA). In the test areas a value of 26 m, i.e., 1.3 times the lower resolution of the used SAR data (20 m for the Interferometric Wide swath mode acquisition of Sentinel-1), has been adopted.
- The “Minimum ADA size” is the minimum number of active contiguous PS to be an ADA. A minimum number of three non-aligned points is required since they are used to calculate the slope of the ground surface by means of the best-fit plane by ADA classifier. In the three cases analyzed in this work a value of 5 has been adopted.
- The number of “values to compute the mean of the deformation” states the number of the last n values of each time series that are used to compute the average accumulated deformation. The aim of this average is to minimize the influence of potential noise associated with each single value. This number is usually set to 4 or slightly higher. In this work, a value of 4 has been considered.
2.1.2. Decomposition of LOS Displacements into Horizontal and Vertical (LOS2HV)
2.1.3. Classification of Active Deformation Areas (ADA Classifier)
2.1.4. Proposed Operational Scheme
2.2. Test Areas
2.3. Input Datasets
2.3.1. InSAR Data
2.3.2. Ancillary Data
3. Results
3.1. Active Deformation Areas
3.2. Horizontal and Vertical Displacements
3.3. Classified Active Deformation Areas
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Subprocesses | |||||
---|---|---|---|---|---|
Landslides | Sinkholes | Subsidence | Settlements | ||
Ancillary Data | DTM | x | x | ||
InSAR horizontal components | x | x | |||
Geologic inventory map | x | x | |||
Landslides inventory map | o | ||||
Sinkholes inventory map | o | ||||
Subsidence inventory map | o | ||||
Infrastructures inventory map | o |
Municipality | Orbit | Track Number | N° of Images | Time Period | Look Angle (°) | Azimuth Angle (°) |
---|---|---|---|---|---|---|
Abbadia San Salvatore | Ascending | 117 | 141 | 12 December 2014 18 August 2018 | 36.34 | 12.14 |
Descending | 95 | 134 | 12 October 2014 17 June 2018 | 40.44 | 8.05 | |
Campiglia Marittima and Suvereto | Ascending | 15 | 128 | 23 March 2015 23 June 2018 | 39.85 | 10.69 |
Descending | 168 | 134 | 22 March 2015 22 June 2018 | 37.23 | 9.40 | |
Zeri | Ascending | 15 | 128 | 23 March 2015 23 June 2018 | 39.85 | 10.69 |
Descending | 95 | 134 | 12 October 2014 17 June 2018 | 40.44 | 8.05 |
Municipality | Orbit | Nº ADA | Nº PS (min–max) | ADA Surface (km2) (min–max) | Classification of ADA | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
L | SK | LS | CS | UP | |||||||||
C | P | C | P | C | P | C | P | ||||||
Abbadia San Salvatore | Asc. | 6 | 68 (6–20) | 0.095 (0.008–0.031) | 6 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 |
Des. | 4 | 28 (6–9) | 0.034 (0.008–0.009) | 4 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | |
Campiglia Marittima and Suvereto | Asc. | 4 | 33 (5–15) | 0.037 (0.006–0.015) | 0 | 0 | 0 | 0 | 3 | 1 | 0 | 0 | 0 |
Des. | 4 | 33 (5–14) | 0.046 (0.005–0.024) | 0 | 0 | 0 | 0 | 3 | 0 | 0 | 0 | 1 | |
Zeri | Asc. | 5 | 181 (5–62) | 0.238 (0.006–0.074) | 5 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 |
Des. | 5 | 88 (5–54) | 0.131 (0.006–0.082) | 4 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 1 |
Step (Figure 6) | Parameter | Abbadia | Campiglia-Suvereto | Zeri |
---|---|---|---|---|
InSAR data | Total number of PS | 2257 | 11,472 | 581 |
ADAfinder (step 1) | PS Ascending (number of points) | 1112 | 6205 | 317 |
PS Descending (number of points) | 1145 | 5267 | 264 | |
ADA Ascending (number of polygons) | 6 | 4 | 5 | |
ADA Descending (number of polygons) | 4 | 4 | 5 | |
Time for ADA finder | <1 s | <1 s | <1 s | |
LOS2HV (step 2) | Ascending PS used in LOS2HV (%) | 945 (85.0%) | 4,286 (69.1%) | 256 (80.8%) |
Descending PS used in LOS2HV (%) | 941 (82.2%) | 3976 (75.5%) | 223 (84.5%) | |
Total number of PS used in LOS2HV (%) | 1886 (83.6%) | 8262 (72.0%) | 479 (82.4%) | |
Cells containing ascending PS in LOS2HV | 430 | 2786 | 112 | |
Cells containing ascending PS in LOS2HV | 443 | 2430 | 98 | |
Cells containing both, ascending and descending PS | 327 | 1594 | 73 | |
Time for LOS2HV | <1 s | <1 s | <1 s | |
ADAclassifier (step 3) | nº DEM cells (X,Y) | 1092 × 1000 | 2053 × 1445 | 146 × 226 |
Landslide inventory (number of polygons) | 195 | 384 | 77 | |
Subsidence inventory (number of polygons) | 0 | 1 | 0 | |
Geology inventory (number of polygons) | 4 | 19 | 67 | |
Infrastructure inventory (number of polygons) | 1 | 7 | 2 | |
Classifications done | 6 | 6 | 6 | |
Time for ADA classifier | <1 s | <1 s | <1 s |
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Tomás, R.; Pagán, J.I.; Navarro, J.A.; Cano, M.; Pastor, J.L.; Riquelme, A.; Cuevas-González, M.; Crosetto, M.; Barra, A.; Monserrat, O.; et al. Semi-Automatic Identification and Pre-Screening of Geological–Geotechnical Deformational Processes Using Persistent Scatterer Interferometry Datasets. Remote Sens. 2019, 11, 1675. https://doi.org/10.3390/rs11141675
Tomás R, Pagán JI, Navarro JA, Cano M, Pastor JL, Riquelme A, Cuevas-González M, Crosetto M, Barra A, Monserrat O, et al. Semi-Automatic Identification and Pre-Screening of Geological–Geotechnical Deformational Processes Using Persistent Scatterer Interferometry Datasets. Remote Sensing. 2019; 11(14):1675. https://doi.org/10.3390/rs11141675
Chicago/Turabian StyleTomás, Roberto, José Ignacio Pagán, José A. Navarro, Miguel Cano, José Luis Pastor, Adrián Riquelme, María Cuevas-González, Michele Crosetto, Anna Barra, Oriol Monserrat, and et al. 2019. "Semi-Automatic Identification and Pre-Screening of Geological–Geotechnical Deformational Processes Using Persistent Scatterer Interferometry Datasets" Remote Sensing 11, no. 14: 1675. https://doi.org/10.3390/rs11141675