Face Phylogeny Tree Using Basis Functions
Photometric transformations, such as brightness and contrast adjustment, can be applied to a face image repeatedly resulting in a set of near-duplicate images. Identifying the original image from a set of such near-duplicates and deducing the relationship between them are important in the context of...
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Veröffentlicht in: | IEEE transactions on biometrics, behavior, and identity science behavior, and identity science, 2020-10, Vol.2 (4), p.310-325 |
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Sprache: | eng |
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Zusammenfassung: | Photometric transformations, such as brightness and contrast adjustment, can be applied to a face image repeatedly resulting in a set of near-duplicate images. Identifying the original image from a set of such near-duplicates and deducing the relationship between them are important in the context of digital image forensics. This is commonly done by generating an image phylogeny tree (IPT)-a hierarchical structure depicting the relationship between a set of near-duplicate images. In this work, we utilize three different families of basis functions to model pairwise relationships between near-duplicate images. The basis functions used in this work are orthogonal polynomials, wavelet basis functions and radial basis functions. We perform extensive experiments to assess the performance of the proposed method across three different modalities, namely, face, fingerprint and iris; across different image phylogeny tree configurations; and across different types of photometric transformations. We also utilize the same basis functions to model geometric transformations and deep-learning based transformations. Finally, we utilize the concept of approximate von Neumann graph entropy to explain the success and failure cases of the proposed IPT generation algorithm. Experiments indicate that the proposed algorithm generalizes well across different scenarios thereby suggesting the merits of using basis functions to model the relationship between photometrically or geometrically modified images. |
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ISSN: | 2637-6407 2637-6407 |
DOI: | 10.1109/TBIOM.2020.2983321 |