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ICIP
2008
IEEE

Robust video fingerprinting based on 2D-OPCA of affine covariant regions

14 years 6 months ago
Robust video fingerprinting based on 2D-OPCA of affine covariant regions
This paper proposes a robust video fingerprinting method based on 2-Dimensional Oriented Principal Component Analysis (2D-OPCA) of affine covariant regions. The goal of video fingerprinting is to identify a video clip using perceptual features called fingerprints. In the proposed method, to achieve the robustness against geometric transformations, fingerprints are extracted from local regions covariant with a class of affine transformations. The detected affine covariant regions are normalized geometrically and photometrically, and local fingerprints are extracted by applying a novel discriminant analysis algorithm, 2D-OPCA to the normalized regions. For the reliable matching of local fingerprints, only spatio-temporally consistent matches are taken into account. The experimental results show that the proposed method is robust against both geometric and non-geometric transformations.
Chang Dong Yoo, Sunil Lee
Added 20 Oct 2009
Updated 20 Oct 2009
Type Conference
Year 2008
Where ICIP
Authors Chang Dong Yoo, Sunil Lee
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