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Neural net based image matching

conference contribution
posted on 2024-02-09, 19:08 authored by Anna K. Jerebko, Nikita E. Barabanov, Vadim R. Luciv, Nigel AllinsonNigel Allinson
<p>The paper describes a neural-based method for matching spatially distorted image sets. The matching of partially overlapping images is important in many applications - integrating information from images formed from different spectral ranges, detecting changes in a scene and identifying objects of differing orientations and sizes. Our approach consists of extracting contour features from both images, describing the contour curves as sets of line segments, comparing these sets, determining the corresponding curves and their common reference points, calculating the image-to-image co-ordinate transformation parameters on the basis of the most successful variant of the derived curve relationships. The main steps are performed by custom neural networks. The algorithms described in this paper have been successfully tested on a large set of images of the same terrain taken in different spectral ranges, at different seasons and rotated by various angles. In general, this experimental verification indicates that the proposed method for image fusion allows the robust detection of similar objects in noisy, distorted scenes where traditional approaches often fail.</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Proceedings of SPIE - The International Society for Optical Engineering

Volume

3962

Publisher

SPIE

ISSN

0277-786X

Date Submitted

2013-04-19

Date Accepted

2013-04-19

Date of First Publication

2013-04-19

Date of Final Publication

2013-04-19

Event Name

Applications of Artificial Neural Networks in Image Processing V

Event Dates

27-28 January 2000

ePrints ID

8583

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