Robust video fingerprints based on subspace embedding

R. Radhakrishnan, C. Bauer
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引用次数: 33

Abstract

We present a novel video fingerprinting method based on subspace embedding. The proposed method is particularly robust against frame-rate conversion attacks and geometric attacks among other attacks including compression and spatial scaling. Using a sliding window, we extract fingerprints from a group of subsequent video frames. For the generation of the fingerprints, we first calculate the basis vectors of a coarse representation of this group of frames using a singular value decomposition (SVD). Then, we project the coarse representation of the video frames onto a subset of the basis vectors. Thus, we obtain a subspace representation of the input video frames. Finally, we extract the fingerprint bits by projecting a temporal average of these representations onto pseudorandom basis vectors. Since the subspace is estimated from the input video data itself, any global attack on video such as rotation would result in a corresponding change in estimated basis vectors thereby preserving the subspace representation. We present experimental results on 250 hrs of video to show the robustness and sensitivity of the proposed signature extraction method.
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基于子空间嵌入的鲁棒视频指纹
提出了一种基于子空间嵌入的视频指纹识别方法。在压缩和空间缩放等攻击中,该方法对帧率转换攻击和几何攻击具有较强的鲁棒性。使用滑动窗口,我们从一组后续视频帧中提取指纹。为了生成指纹,我们首先使用奇异值分解(SVD)计算这组帧的粗糙表示的基向量。然后,我们将视频帧的粗表示投影到基向量的子集上。因此,我们得到了输入视频帧的子空间表示。最后,我们通过将这些表示的时间平均值投影到伪随机基向量上来提取指纹比特。由于子空间是从输入视频数据本身估计的,任何对视频的全局攻击(如旋转)都会导致估计的基向量发生相应的变化,从而保留子空间表示。实验结果表明,该方法具有较好的鲁棒性和灵敏度。
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