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PCA-based denoising of Sensor Pattern Noise for source camera identification

机译:基于PCA的传感器模式噪声去噪,用于源摄像机识别

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Sensor Pattern Noise (SPN) has been proved to be an inherent fingerprint of the imaging device for source identification. However, SPN extracted from digital images can be severely contaminated by scene details. Moreover, SPN with high dimensionality may cause excessive time cost on calculating correlation between SPNs, which will limit its applicability to the source camera identification or image classification with a large dataset. In this work, an effective scheme based on principal component analysis (PCA) is proposed to address these two problems. By transforming SPN into eigenspace spanned by the principal components, the scene details and trivial information can be significantly suppressed. In addition, due to the dimensionality reduction property of PCA, the size of SPN is greatly reduced, consequently reducing the time cost of calculating similarity between SPNs. Our experiments are conducted on the Dresden database, and results demonstrate that the proposed method outperforms could achieve the state-of-art performance in terms of the Receiver Operating Characteristic (ROC) curves while reducing the dimensionality of SPN.
机译:传感器模式噪声(SPN)已被证明是用于源识别的成像设备的固有指纹。但是,从数字图像中提取的SPN可能会被场景细节严重污染。此外,具有高维数的SPN可能会在计算SPN之间的相关性时导致过多的时间成本,这将限制其在源相机识别或具有大数据集的图像分类中的适用性。在这项工作中,提出了一种基于主成分分析(PCA)的有效方案来解决这两个问题。通过将SPN转换为由主成分覆盖的本征空间,可以显着抑制场景细节和琐碎信息。另外,由于PCA的降维特性,SPN的尺寸大大减小,因此减少了计算SPN之间的相似度的时间成本。我们的实验是在德累斯顿数据库上进行的,结果表明,所提出的方法性能优于接收器工作特性(ROC)曲线,同时可以降低SPN的维数,从而可以达到最先进的性能。

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