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Robust image hashing based on low-rank and sparse decomposition

机译:基于低秩和稀疏分解的鲁棒图像哈希

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We propose in this paper a low-rank and sparse decomposition based image hashing algorithm, aiming to summarize the structural information and sparse salient components of digital image to compact digest. More specifically, we leverage compressive sampling and random projection to separately aggregate the low-rank approximation of input image and the spatial layout of salient components into binary hash. Owing to its capability of capturing and fusing intrinsic visual characteristics, the proposed work demonstrates high robustness and discriminability. As observed in content identification experiments, it shows much higher accuracy than state-of-the-art algorithms. Furthermore, we also analytically evaluate the security of the proposed hashing algorithm using the entropy based metric, and its performance in content identification is analyzed using the channel coding theorem.
机译:本文提出了一种基于低秩和稀疏分解的图像哈希算法,旨在总结数字图像的结构信息和稀疏显着分量以压缩摘要。更具体地说,我们利用压缩采样和随机投影将输入图像的低秩近似和显着分量的空间布局分别汇总到二进制哈希中。由于其具有捕获和融合内在视觉特征的能力,因此所提出的工作表现出很高的鲁棒性和可辨别性。如内容识别实验中所观察到的,它显示出比最新算法高得多的准确性。此外,我们还使用基于熵的度量对所提出的哈希算法的安全性进行了分析评估,并使用信道编码定理分析了其在内容识别中的性能。

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