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  4. Identification of Image Variations based on Equivalence Classes
 
conference paper

Identification of Image Variations based on Equivalence Classes

Maret, Y.  
•
Garcia Molina, G.
•
Ebrahimi, T.  
2005
SPIE Visual Communications and Image Processing 2005

This paper presents a fingerprinting method based on equivalence classes. An equivalence class is composed of a reference image and all its variations (or replicas). For each reference image, a decision function is built. The latter determines if a given image belongs to its corresponding equivalence class. This function is built in three steps: synthesis, projection, and analysis. In the first step, the reference image is replicated using different image operators (like JPEG compression, average filtering, etc). During the projection step, the replicas are projected onto a distance space. In the final step, the distance space is analyzed, using machine learning algorithms, and the decision function is built. In this study, three machine learning approaches are compared: orthotope, support vectors machine (SVM), and support vectors data description (SVDD). The orthotope is a computationally efficient ad-hoc method. It consists in building a generalized rectangle in the distance space. The SVM and SVDD are two more general learning algorithms.

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Type
conference paper
DOI
10.1117/12.631578
Web of Science ID

WOS:000232176400063

Author(s)
Maret, Y.  
Garcia Molina, G.
Ebrahimi, T.  
Date Issued

2005

Publisher

SPIE

Published in
SPIE Visual Communications and Image Processing 2005
Series title/Series vol.

SPIE Proceedings; 5960

Subjects

LTS1

Written at

EPFL

EPFL units
LTS  
GR-EB  
Available on Infoscience
June 14, 2006
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/231654
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