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Dr. Wael Abdel-Rahman Mohamed Ahmed :: Publications:

Title:
Optimizing SIFT algorithm parameters for better matching UAV and satellite images
Authors: KA Elorabi, A Zekry, WA Mohamed
Year: 2023
Keywords: Not Available
Journal: Journal of Physics: Conference Series
Volume: 2616
Issue: 1
Pages: 012044
Publisher: IOP Publishing
Local/International: International
Paper Link:
Full paper Wael Abdel-Rahman Mohamed Ahmed_Elorabi_2023_J._Phys.__Conf._Ser._2616_012044 Optimizing SIFT algorithm parameters for better matching UAV and satellite images.pdf
Supplementary materials Not Available
Abstract:

Image registration has been increasingly employed in various applications such as target identification, 3D mapping, and motion tracking. The main idea of Image registration is aligning two or more images of the same scene captured from different viewpoints, at different times. Scale-invariant feature transform, SIFT, is considered one of the most robust algorithms used in image registration for extracting and matching features under different conditions. Using SIFT algorithm default parameters in Matching UAV and satellite Images provides unreliable results due to the nature of aerial images because the dynamic range is quite low. The number of extracted features depends on the image content and the selected parameters. In this paper we tuned SIFT parameters to get the best performance with aerial images, to increase the number of features (SM) and the correct match rate (CMR) which increases the efficiency

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