The growing availability of multi-sensor Persistent Scatterer (PS) data offers high-precision, multi-temporal measurements for monitoring ground displacements across large areas. The ability to detect ground deformation phenomena is largely determined by PS density, influenced by the sensor resolution and site-specific characteristics. This research proposes a robust data fusion method to integrate multi-band/ multi-sensor PS products, prioritizing spatial dimensions to enhance coverage and exploit complementary information from diverse sensors. The method employs a weighted least squares approach with an adaptive weighting scheme to generate synthetic measurement points that synthesize deformations along the East-West and Up-Down components, effectively addressing challenges posed by sparse and unevenly distributed data. The methodology, validated through Sentinel-1 (S1) and COSMO-SkyMed (CSK) data integration, employs quantitative metrics and field observations to assess the reliability of fusion predictions. Statistical analysis demonstrates superior performance, with R-squared values of 0.950 for Up-Down and 0.868 for East-West components. Spatial coverage expands from approximately 10% (S1) and 22% (CSK) to 67% of the total area of interest. The enhanced detection capabilities enable comprehensive monitoring of ground deformation processes, uncovering patterns otherwise undetectable through single-sensor analysis and providing crucial information for hazard assessment.

Multisensor Data Fusion for Enhanced Persistent Scatterer Analysis: Improving Ground Deformation Monitoring / Masciulli, Claudia; Berardo, Giorgia; Gaeta, Michele; Stefanini, Carlo Alberto; Giraldo Manrique, Santiago; Belcecchi, Niccolò; Bozzano, Francesca; Scarascia Mugnozza, Gabriele; Mazzanti, Paolo. - In: IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING. - ISSN 2151-1535. - 18:(2025), pp. 26812-26830. [10.1109/JSTARS.2025.3617779]

Multisensor Data Fusion for Enhanced Persistent Scatterer Analysis: Improving Ground Deformation Monitoring

Claudia Masciulli;Giorgia Berardo;Michele Gaeta;Carlo Alberto Stefanini;Francesca Bozzano;Gabriele Scarascia Mugnozza;Paolo Mazzanti
2025

Abstract

The growing availability of multi-sensor Persistent Scatterer (PS) data offers high-precision, multi-temporal measurements for monitoring ground displacements across large areas. The ability to detect ground deformation phenomena is largely determined by PS density, influenced by the sensor resolution and site-specific characteristics. This research proposes a robust data fusion method to integrate multi-band/ multi-sensor PS products, prioritizing spatial dimensions to enhance coverage and exploit complementary information from diverse sensors. The method employs a weighted least squares approach with an adaptive weighting scheme to generate synthetic measurement points that synthesize deformations along the East-West and Up-Down components, effectively addressing challenges posed by sparse and unevenly distributed data. The methodology, validated through Sentinel-1 (S1) and COSMO-SkyMed (CSK) data integration, employs quantitative metrics and field observations to assess the reliability of fusion predictions. Statistical analysis demonstrates superior performance, with R-squared values of 0.950 for Up-Down and 0.868 for East-West components. Spatial coverage expands from approximately 10% (S1) and 22% (CSK) to 67% of the total area of interest. The enhanced detection capabilities enable comprehensive monitoring of ground deformation processes, uncovering patterns otherwise undetectable through single-sensor analysis and providing crucial information for hazard assessment.
2025
data fusion; ground deformation monitoring; persistent scatterers; synthetic aperture radar
01 Pubblicazione su rivista::01a Articolo in rivista
Multisensor Data Fusion for Enhanced Persistent Scatterer Analysis: Improving Ground Deformation Monitoring / Masciulli, Claudia; Berardo, Giorgia; Gaeta, Michele; Stefanini, Carlo Alberto; Giraldo Manrique, Santiago; Belcecchi, Niccolò; Bozzano, Francesca; Scarascia Mugnozza, Gabriele; Mazzanti, Paolo. - In: IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING. - ISSN 2151-1535. - 18:(2025), pp. 26812-26830. [10.1109/JSTARS.2025.3617779]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1753555
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