Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope Instabilities

We evaluate the capability of three different digital image correlation (DIC) algorithms to measure long-term surface displacement caused by a large slope instability in the Swiss Alps. DIC was applied to high-resolution optical imagery taken by airborne sensors, and the accuracy of the displacement...

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Main Authors: Valentin Tertius Bickel, Andrea Manconi, Florian Amann
Format: Article
Language:English
Published: MDPI AG 2018-06-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/10/6/865
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spelling doaj-70df1157c5d24a169f49318a3f537b0c2020-11-25T01:48:28ZengMDPI AGRemote Sensing2072-42922018-06-0110686510.3390/rs10060865rs10060865Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope InstabilitiesValentin Tertius Bickel0Andrea Manconi1Florian Amann2Engineering Geology, Swiss Federal Institute of Technology Zurich, 8092 Zurich, SwitzerlandEngineering Geology, Swiss Federal Institute of Technology Zurich, 8092 Zurich, SwitzerlandEngineering Geology, Swiss Federal Institute of Technology Zurich, 8092 Zurich, SwitzerlandWe evaluate the capability of three different digital image correlation (DIC) algorithms to measure long-term surface displacement caused by a large slope instability in the Swiss Alps. DIC was applied to high-resolution optical imagery taken by airborne sensors, and the accuracy of the displacements assessed against global navigation satellite system measurements. A dynamic radiometric correction of the input images prior to DIC application was shown to enhance both the correlation success and accuracy. Moreover, a newly developed spatial filter considering the displacement direction and magnitude proved to be an effective tool to enhance DIC performance and accuracy. Our results show that all algorithms are capable of quantifying slope instability displacements, with average errors ranging from 8 to 12% of the observed maximum displacement, depending on the DIC processing parameters, and the pre- and postprocessing of the in- and output. Among the tested approaches, the results based on a fast Fourier transform correlation approach provide a considerably better spatial coverage of the displacement field of the slope instability. The findings of this study are relevant for slope instability detection and monitoring via DIC, especially in the context of an ever-increasing availability of high-resolution air- and spaceborne imagery.http://www.mdpi.com/2072-4292/10/6/865digital image correlationslope instabilitieslandslide displacement monitoring
collection DOAJ
language English
format Article
sources DOAJ
author Valentin Tertius Bickel
Andrea Manconi
Florian Amann
spellingShingle Valentin Tertius Bickel
Andrea Manconi
Florian Amann
Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope Instabilities
Remote Sensing
digital image correlation
slope instabilities
landslide displacement monitoring
author_facet Valentin Tertius Bickel
Andrea Manconi
Florian Amann
author_sort Valentin Tertius Bickel
title Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope Instabilities
title_short Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope Instabilities
title_full Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope Instabilities
title_fullStr Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope Instabilities
title_full_unstemmed Quantitative Assessment of Digital Image Correlation Methods to Detect and Monitor Surface Displacements of Large Slope Instabilities
title_sort quantitative assessment of digital image correlation methods to detect and monitor surface displacements of large slope instabilities
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2018-06-01
description We evaluate the capability of three different digital image correlation (DIC) algorithms to measure long-term surface displacement caused by a large slope instability in the Swiss Alps. DIC was applied to high-resolution optical imagery taken by airborne sensors, and the accuracy of the displacements assessed against global navigation satellite system measurements. A dynamic radiometric correction of the input images prior to DIC application was shown to enhance both the correlation success and accuracy. Moreover, a newly developed spatial filter considering the displacement direction and magnitude proved to be an effective tool to enhance DIC performance and accuracy. Our results show that all algorithms are capable of quantifying slope instability displacements, with average errors ranging from 8 to 12% of the observed maximum displacement, depending on the DIC processing parameters, and the pre- and postprocessing of the in- and output. Among the tested approaches, the results based on a fast Fourier transform correlation approach provide a considerably better spatial coverage of the displacement field of the slope instability. The findings of this study are relevant for slope instability detection and monitoring via DIC, especially in the context of an ever-increasing availability of high-resolution air- and spaceborne imagery.
topic digital image correlation
slope instabilities
landslide displacement monitoring
url http://www.mdpi.com/2072-4292/10/6/865
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