Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation Modeling

This paper proposes a robust feature-based mosaicking method that can handle images obtained by lightweight unmanned aerial vehicles (UAVs). The imaging geometry of small UAVs can be characterized by unstable flight attitudes and low flight altitudes. These can reduce mosaicking performance by causi...

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Main Authors: Jae-In Kim, Hyun-cheol Kim, Taejung Kim
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/6/1002
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spelling doaj-3ed19d3d3af14c999b67ac60f17128202020-11-25T03:29:29ZengMDPI AGRemote Sensing2072-42922020-03-01126100210.3390/rs12061002rs12061002Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation ModelingJae-In Kim0Hyun-cheol Kim1Taejung Kim2Unit of Arctic Sea-Ice Prediction, Korea Polar Research Institute (KOPRI), Incheon 21990, KoreaUnit of Arctic Sea-Ice Prediction, Korea Polar Research Institute (KOPRI), Incheon 21990, KoreaDepartment of Geoinformatic Engineering, Inha University, Incheon 21990, KoreaThis paper proposes a robust feature-based mosaicking method that can handle images obtained by lightweight unmanned aerial vehicles (UAVs). The imaging geometry of small UAVs can be characterized by unstable flight attitudes and low flight altitudes. These can reduce mosaicking performance by causing insufficient overlaps, tilted images, and biased tiepoint distributions. To solve these problems in the mosaicking process, we introduce the tiepoint area ratio (TAR) as a geometric stability indicator and orthogonality as an image deformation indicator. The proposed method estimates pairwise transformations with optimal transformation models derived by geometric stability analysis between adjacent images. It then estimates global transformations from optimal pairwise transformations that maximize geometric stability between adjacent images and minimize mosaic deformation. The valid criterion for the TAR in selecting an optimal transformation model was found to be about 0.3 from experiments with two independent image datasets. The results of a performance evaluation showed that the problems caused by the imaging geometry characteristics of small UAVs could actually occur in image datasets and showed that the proposed method could reliably produce image mosaics for image datasets obtained in both general and extreme imaging environments.https://www.mdpi.com/2072-4292/12/6/1002lightweight uavimage mosaicimaging geometrytiepoint area ratio
collection DOAJ
language English
format Article
sources DOAJ
author Jae-In Kim
Hyun-cheol Kim
Taejung Kim
spellingShingle Jae-In Kim
Hyun-cheol Kim
Taejung Kim
Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation Modeling
Remote Sensing
lightweight uav
image mosaic
imaging geometry
tiepoint area ratio
author_facet Jae-In Kim
Hyun-cheol Kim
Taejung Kim
author_sort Jae-In Kim
title Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation Modeling
title_short Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation Modeling
title_full Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation Modeling
title_fullStr Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation Modeling
title_full_unstemmed Robust Mosaicking of Lightweight UAV Images Using Hybrid Image Transformation Modeling
title_sort robust mosaicking of lightweight uav images using hybrid image transformation modeling
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-03-01
description This paper proposes a robust feature-based mosaicking method that can handle images obtained by lightweight unmanned aerial vehicles (UAVs). The imaging geometry of small UAVs can be characterized by unstable flight attitudes and low flight altitudes. These can reduce mosaicking performance by causing insufficient overlaps, tilted images, and biased tiepoint distributions. To solve these problems in the mosaicking process, we introduce the tiepoint area ratio (TAR) as a geometric stability indicator and orthogonality as an image deformation indicator. The proposed method estimates pairwise transformations with optimal transformation models derived by geometric stability analysis between adjacent images. It then estimates global transformations from optimal pairwise transformations that maximize geometric stability between adjacent images and minimize mosaic deformation. The valid criterion for the TAR in selecting an optimal transformation model was found to be about 0.3 from experiments with two independent image datasets. The results of a performance evaluation showed that the problems caused by the imaging geometry characteristics of small UAVs could actually occur in image datasets and showed that the proposed method could reliably produce image mosaics for image datasets obtained in both general and extreme imaging environments.
topic lightweight uav
image mosaic
imaging geometry
tiepoint area ratio
url https://www.mdpi.com/2072-4292/12/6/1002
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AT hyuncheolkim robustmosaickingoflightweightuavimagesusinghybridimagetransformationmodeling
AT taejungkim robustmosaickingoflightweightuavimagesusinghybridimagetransformationmodeling
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