基于压缩感知的优化感知矩阵图像加密

Rudy Susanto Endra
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引用次数: 15

摘要

信号的降维可以通过将信号投影到感知矩阵中来获得,这种技术被称为压缩感知(CS)。CS还提供了一种数据安全(加密)机制,因为只有在字典和感知矩阵已知的情况下才能重构信号。由于压缩和加密是通过信号投影到传感矩阵中同时进行的,因此与传统技术相比,该技术性能更好。此外,信号投影到传感矩阵中相对简单,不需要大量的计算负荷,因此在便携式设备中实现将非常有效。采用一种新的感知矩阵优化方法,提出了一种基于CS的图像同步压缩加密方案。仿真结果表明,与cs加密中常用的随机感知矩阵相比,优化后的感知矩阵提高了重构图像的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressive sensing-based image encryption with optimized sensing matrix
The dimentional reduction of the signal can be obtained by projecting the signal into a sensing matrix, the technique is known as Compressive Sensing (CS). The CS also provides a mechanism for data security (encryption) because the signal can only be reconstructed if the dictionary and the sensing matrix are known. This technique is better compared to the conventional technique because the compression and encryption is done simultaneously through the signal projection into the sensing matrix. Moreover the signal projection into the sensing matrix is relatively simple and doesn't need heavy computational load so it will be very effective to implement in a portable device. We proposed a scheme of simultaneous image compression-encryption based on CS by using a novel method of optimized sensing matrix. The simulation results showed that by using optimized sensing matrix improved the quality of reconstructed image compared with random sensing matrix that is usually used in CS-based encryption.
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