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Page 1: Automated co registration in SfM photogrammetry for landslide … · 2018. 12. 16. · Automated co‐registration in SfM photogrammetry for landslide change detection doi: 10.1002/esp.4502

Automated co‐registration in SfM

photogrammetry for

landslide change detectiondoi: 10.1002/esp.4502

Topo@drone,

Σχολή Αγρονόμων Τοπογράφων ΜηχανικώνΕΜΠ, 30/11/2018

Μαρία Βαλασία Πέππα

Jon Mills, Philip Moore,

Jon Chambers, Pauline Miller

School of Engineering Newcastle University,

British Geological Survey, The James Hutton Institute, UK

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ntv.org.np

8.5 thousand human losses from the earthquake in Nepal on 25th of April 2015 (Chaulagain et al., 2016)

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Introduction

© BGS

❑ Σημαντική αύξηση στις κατολισθήσεις κατά τη διάρκεια του 2012 λόγω της αύξησης των ακραίων βροχοπτώσεων το ίδιο έτος(Uhlemann et al., 2015; Gariano and Guzzetti, 2016)

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Research motivation

Any type of UAV High-grade UAV Low-grade UAV

Planimetric accuracy few cm 40 cm 2-10 m

Vertical accuracy few cm 35 cm 2-30 m

Indirect

georeferencing

(IG) (with GCPs)

Direct georeferencing (DG)

UAV cam. positions

hours

minutes

IG

High-grade

RTK-UAVLow-grade

centimetres metres

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PhD Aim/Contribution

Aim:

The potential of a mini fixed-wing UAV to a) register multi-temporal imagery (ταύτιση εικόνων πολλαπλών χρονικών περιόδων) b) provide 3D landslide time-series (3Δ επιφανειακής μετακίνησης)in the absence of physically established GCPs (χωρίς σημεία ελέγχου-φωτοσταθερά)

PhD Contribution:

This study introduces a semi-automatic workflow to generate “pseudo control” over relatively “stable” terrain for the effective co-registration of time-series DEMs derived from a consumer-grade, fixed-wing mini UAV and SfM-MVS pipeline.

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Hollin Hill landslide, BGS observatory site

Shaded relief together with two flight trajectories.

An active slow moving earth-slide, earth-flow landslide with an average 2 m/yr movement rate (Chambers et al., 2011; Uhlemann et al. (2017).

(a) Quest-300 UAV with Panasonic DMC-LX5. (b) Payload setup inside the main UAV body. (c) AutoCAD 3D model and (d) 3D printed version of a camera case to hold the Sony A6000 camera.

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Hollin Hill landslide, BGS observatory site

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Hollin Hill landslide, BGS observatory site

▪ Panasonic:0.03 m GSD0.06 m DEM

▪ Sony:0.02 m GSD0.04 m DEM

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Hollin Hill landslide, BGS observatory site

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Methodology

Morphology-based co-Registration

(MBR)

Structure-from-Motion (SfM) Mutli-View Stereo (MVS) image matching pipeline

geo.tuwien.ac.at/opals

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Hollin Hill landslide: Key-points as derived from the SIFT-RANSAC implementationwith (a) E0 (12/14) and (b) E4 (02/16) orthomosaics.

SIFT algorithm with optical orthomosaic

Wrong matches Good matches

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Hollin Hill landslide: Mean curvature grids of (a) E0 (12/14) and (b) E4 (02/16) epochs with their corresponding pseudo GCPs over stable terrain.

Morphology-based co-Registration analysis

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Stable terrain - Openness

• Identification of stable (smooth) and unstable (rough) terrain

• Due to underlying surface mechanisms, an active landslide area (i.e. failed terrain) has relatively rougher surface topography than a non-failing region.

Modified from McKean ad Roering (2004) and Hobson (1972)

(a) positive openness

L

nadirL

zenith

(b) negative openness

Positive (a) and negative (b) openness at a particular point of a DEM with L denoting the spatial limit. Extracted and modified from Yokoyama et al. (2002) and Chen et al. (2015).

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Op

en

ne

ss-H

ollin

Hill

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Results-Hollin Hill landslide

RMSEs and sensitivity (s1, s2) estimations of the GCP-based and MBR-GCP experiments.

❑ RMSEs and sensitivity (s1, s2) estimations of the GCP-based and MBR-GCP experiments.

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▪ RMSEs (Panasonic) 1.9-3.3 x GSD RMSEs (Sony) 1-1.6 x GSD

▪ 0.109 m optimal sensitivity

▪ 0.109-0.221 m sensitivity range with biases e.g. seasonal variationsunresolved DEM deformations unreliable pseudo GCPs etc.

✓ Elevation differences

✓ 2D displacement rate

✓ Volume change

Hollin Hill

landslide change

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▪ RMSEs (Panasonic) 1.9-3.3 x GSD RMSEs (Sony) 1-1.6 x GSD

▪ 0.109 m optimal sensitivity

▪ 0.109-0.221 m sensitivity range with biases e.g. seasonal variationsunresolved DEM deformations unreliable pseudo GCPs etc.

✓ Elevation differences

✓ 2D displacement rate

✓ Volume change

Hollin Hill

landslide change

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Conclusions

❑ A morphology-based co-registration (MBR) strategy aligns multi-temporal UAV and SfM-derived products for quantifying landslide information, without the usual reliance on ground control information, as a low-cost solution.

❑ It applies the openness roughness measure to identify stable surfaces and the SIFT algorithm with curvature grids to automatically extract correspondences in epoch-pairs, incorporating them into the SfM-photogrammetry.

❑ Relative error ratios (RMSE/flying height) from MBR results lie in the range 1:800-2500, are in good agreement to the ratios 1:1600-1900 reported in recent studies with RTK-UAVs (Gerke and Przybilla, 2016; Dall'Asta et al., 2017).

❑ A better outcome could be achieved mostly with periodic observations of a higher temporal frequency and over stable regions that are not adversely affected by vegetation changes.

❑ Further work over other landslide types is required.

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Ευχαριστώ πολύ

Peppa et al. 2018, Automated co-registration and calibration in SfMphotogrammetry for landslide change detection,

Earth Surface Processes and Landforms (ESPL), doi: 10.1002/esp.4502

UAV geomatics team

[email protected]