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A New MRF-Based Lossy Compression for Encrypted Binary Images

机译:用于加密二进制图像的基于MRF的损耗压缩

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Although there exist many researches on the compression of original non-encrypted binary images, few approaches focus on the compression of encrypted binary images. As binary images like contract, signature, halftone images are still used widely in practice, how to compress efficiently encrypted binary images in a lossy way deserves further exploration. To this end, this paper develops a lossy compression scheme for encrypted binary images by exploiting the Markov random field (MRF) model. Considering that the third-party in scenarios of cloud or distributed computing cannot access to the encryption key, we develop the concatenated down-sampling and LDPC-based encoding to perform the compression, in which four different down-sampling methods are designed to facilitate improving the quality of reconstructed image. In reconstruction, we first formulate the lossy reconstruction from the encrypted and compressed binary image as an optimization problem, and then build a joint factor graph involving the LDPC-decoding, decryption, and MRF to solve this optimization problem, in which the MRF is exploited to well infer pixels discarded in the down-sampling process. By adapting the sum-product algorithm (SPA) to the constructed joint factor graph for lossy reconstruction (JFG-LR) and running the adapted SPA on the JFG-LR, we thus recover the original binary image in a lossy way. By integrating the stream-cipher-based encryption, the down-sampling and LDPC-based compression, and the JFG-LR-involved reconstruction, we thus propose a new lossy compression scheme for encrypted binary images. Experimental results show that the proposed scheme achieves desirable compression efficiency, which is comparable to or even better than that of the JBIG2 with the original unencrypted binary image as input.
机译:尽管对原始非加密二进制图像的压缩存在许多研究,但很少几个方法侧重于加密二进制图像的压缩。作为合同,签名,签名,半色调图像的二进制图像仍然广泛使用,如何以有损方式压缩有效加密的二进制图像,值得进一步的探索。为此,本文通过利用Markov随机字段(MRF)模型来开发用于加密二进制图像的有损压缩方案。考虑到云或分布式计算方案中的第三方无法访问加密密钥,我们开发连接的倒置抽样和基于LDPC的编码,以执行压缩,其中设计了四种不同的下采样方法以便于改善重建图像的质量。在重建中,我们首先将来自加密和压缩二进制图像的有损重建作为优化问题,然后构建涉及LDPC解码,解密和MRF的联合因子图来解决该优化问题,其中MRF被利用在下抽样过程中丢弃的良好介绍像素。通过将总和 - 产品算法(SPA)调整为有损重建(JFG-LR)的构造联合因子图并在JFG-LR上运行适应的SPA,因此我们以有损方式恢复原始二进制图像。通过集成基于流基于流的加密,下采样和基于LDPC的压缩,以及JFG-LR涉及的重建,因此提出了一种用于加密二进制图像的新的有损压缩方案。实验结果表明,该方案实现了所需的压缩效率,其与作为输入的原始未加密二进制图像的JBIG2的甚至更好。

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