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A novel wavelet based independent component analysis method for pre-processing computer video leakage signal

机译:一种用于预处理计算机视频泄漏信号的新型小波独立分量分析方法

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Computer displays emit electromagnetic waves, which compromise the information displayed by the computer. This can be a potential information security threat as the sensitive information can be stolen from a distance without leaving any trace. The video leakage signals contain the information of the image displayed in the computer, so the video leakage signals can be seen as special image signals. However, different from the normal image signal, the signal to noise ratio (SNR) of video leakage signal is low due to the environmental noise and many other man-made noises. In this paper, a novel wavelet based independent component analysis (ICA) method is proposed for improving SNR of computer video leakage signals. By using this method, we can improve the performance of pre-processing of computer video leaking signals. We solve the problem of using Fast ICA in processing video leakage signal by using a wavelet filter. The performance of Fast ICA is improved by working in wavelet domain because of advantages like ease of implementation and less computation time when compared to time domain. We pre-process one-dimensional received signal without reconstructing the image since it is inefficient to reconstruct signal before processing. A direct SNR can't be defined. Therefore, another metric called quasi signal to noise ratio (QSNR) is defined to estimate signal to noise ratio of video leakage signals. The processed results of the actual experimental data show that the proposed wavelet based ICA algorithm has a better performance than the Fast ICA algorithm and the Wavelet denoising algorithm.
机译:计算机显示发出的电磁波,损害了计算机显示的信息。这可以是潜在的信息安全威胁,因为敏感信息可以从距离被盗而不留下任何跟踪。视频泄漏信号包含计算机中显示的图像的信息,因此视频泄漏信号可以被视为特殊图像信号。然而,与普通图像信号不同,由于环境噪声和许多其他人造噪声,视频泄漏信号的信噪比(SNR)的信号很低。本文提出了一种新的基于小波的独立分量分析(ICA)方法,用于改善计算机视频泄漏信号的SNR。通过使用这种方法,我们可以提高计算机视频泄漏信号预处理的性能。我们通过使用小波滤波器解决在处理视频泄漏信号时使用快速ICA的问题。通过在小波域中工作,改善了快速ICA的性能,因为与时域相比,在实施方面的优点和较少的计算时间较少。我们预处理一维接收信号而不重建图像,因为它在处理之前重建信号效率低。无法定义直接SNR。因此,将称为准信号的另一个公制与噪声比(QSNR)定义为估计视频泄漏信号的信噪比。实际实验数据的处理结果表明,所提出的基于小波的ICA算法比快速ICA算法和小波去噪算法具有更好的性能。

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