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AUTHOR(S):

Petar Rutesic, Zorana Stosic

 

TITLE

Image Registration Based on Normalized Cross Correlation and Discrete Cosine Transform

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ABSTRACT

There have been great advancements in recent years regarding computer vision, medical imaging, cartography, astronomy and similar image acquisition methods. Therefore, there is certainly need for efficient image registration techniques. Image registration is a process in which two images, that represent the same scene but are captured from different angles, sensors or time periods, are geometrically aligned to each other. This is one of the fundamental image processing techniques and is very useful when combining images captured from various sensors or time periods. The basic concept is to find points of interest by comparing unregistered image with source image. Points of interest are parts of source image that are highly similar to unregistered image. In this paper, points of interest are obtained by two approaches - by using normalized cross correlation (NCC) and discrete cosine transform (DCT). The proposed method was applied to satellite images. Tests have been successfully concluded even with high resolution images with some form of local distortion. Testing shows that DCT approach is quicker and more accurate.

KEYWORDS

normalized cross correlation, discrete cosine transform, image registration, root mean squared error, points of interest extraction

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Cite this paper

Petar Rutesic, Zorana Stosic. (2018) Image Registration Based on Normalized Cross Correlation and Discrete Cosine Transform. International Journal of Signal Processing, 3, 16-20

 

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