Abstract
Raw remotely sensed images contain geometric distortions and cannot be used directly for map-based applications, accurate locational information extraction or geospatial data integration. A geometric correction process must be conducted to minimize the errors related to distortions and achieve the desired location accuracy before further analysis. A considerable number of images might be needed when working over large areas or in temporal domains in which manual geometric correction requires more labor and time. To overcome these problems, new algorithms have been developed to make the geometric correction process autonomous. The Scale Invariant Feature Transform (SIFT) algorithm is an image matching algorithm used in remote sensing applications that has received attention in recent years. In this study, the effects of the incidence angle, surface topography and land cover (LC) characteristics on SIFT-based automated orthorectification were investigated at three different study sites with different topographic conditions and LC characteristics using Pleiades very high resolution (VHR) images acquired at different incidence angles. The results showed that the location accuracy of the orthorectified images increased with lower incidence angle images. More importantly, the topographic characteristics had no observable impacts on the location accuracy of SIFT-based automated orthorectification, and the results showed that Ground Control Points (GCPs) are mainly concentrated in the “Forest” and “Semi Natural Area” LC classes. A multi-thread code was designed to reduce the automated processing time, and the results showed that the process performed 7 to 16 times faster using an automated approach. Analyses performed on various spectral modes of multispectral data showed that the arithmetic data derived from pan-sharpened multispectral images can be used in automated SIFT-based RPC orthorectification.
Original language | English |
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Article number | 229 |
Journal | ISPRS International Journal of Geo-Information |
Volume | 7 |
Issue number | 6 |
DOIs | |
Publication status | Published - Jun 2018 |
Bibliographical note
Publisher Copyright:© 2018 by the authors.
Funding
The authors acknowledge the support of the Istanbul Technical University—Center for Satellite Communications and Remote Sensing (ITU-CSCRS) for providing the Pleiades 1A and 1B satellite images and the HGK for providing the reference orthophotos. The authors also thank the anonymous reviewers who helped to improve the article with their comments.
Funders | Funder number |
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Istanbul Teknik Üniversitesi |
Keywords
- Automated orthorectification
- Incidence angle
- Land cover
- SIFT algorithm
- Topography
- VHR image