A Logarithmic Quantization Index Modulation for Perceptually Better Data Hiding

Nima Khademi Kalantari;Seyed Mohammad Ahadi
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引用次数: 92

Abstract

In this paper, a novel arrangement for quantizer levels in the Quantization Index Modulation (QIM) method is proposed. Due to perceptual advantages of logarithmic quantization, and in order to solve the problems of a previous logarithmic quantization-based method, we used the compression function of ¿ -Law standard for quantization. In this regard, the host signal is first transformed into the logarithmic domain using the ¿ -Law compression function. Then, the transformed data is quantized uniformly and the result is transformed back to the original domain using the inverse function. The scalar method is then extended to vector quantization. For this, the magnitude of each host vector is quantized on the surface of hyperspheres which follow logarithmic radii. Optimum parameter ¿ for both scalar and vector cases is calculated according to the host signal distribution. Moreover, inclusion of a secret key in the proposed method, similar to the dither modulation in QIM, is introduced. Performance of the proposed method in both cases is analyzed and the analytical derivations are verified through extensive simulations on artificial signals. The method is also simulated on real images and its performance is compared with previous scalar and vector quantization-based methods. Results show that this method features stronger a watermark in comparison with conventional QIM and, as a result, has better performance while it does not suffer from the drawbacks of a previously proposed logarithmic quantization algorithm.
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一种用于感知更好的数据隐藏的对数量化指数调制
本文提出了量化指数调制(QIM)方法中量化器电平的一种新安排。由于对数量化的感知优势,并且为了解决以前基于对数量化的方法的问题,我们使用了?-律标准的压缩函数进行量化。在这方面,首先使用?定律压缩函数将主机信号转换到对数域。然后,对变换后的数据进行均匀量化,并使用逆函数将结果变换回原始域。然后将标量方法扩展到矢量量化。为此,每个主向量的大小在遵循对数半径的超球面表面上被量化。根据宿主信号分布计算标量和矢量情况下的最佳参数。此外,还介绍了在所提出的方法中包含一个密钥,类似于QIM中的抖动调制。分析了所提出的方法在这两种情况下的性能,并通过对人工信号的广泛模拟验证了分析推导。该方法也在真实图像上进行了仿真,并与以前的基于标量和矢量量化的方法进行了性能比较。结果表明,与传统的QIM相比,该方法的水印更强,因此具有更好的性能,同时不存在先前提出的对数量化算法的缺点。
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