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An SVD-based adaptive robust speech steganography using MDCT coefficient

机译:基于SVD的自适应强大的语音隐写术,使用MDCT系数

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摘要

Speech is one of the essential ways of communication. The study of speech steganography provides great value in information security. To improve imperceptibility and robustness of speech steganography, the characteristics of speech signals should be fully taken into account. In this paper, a robust speech steganographic scheme based on Singular Value Decomposition (SVD) and Modified Discrete Cosine Transform (MDCT) is proposed. Firstly, Voice Activity Detector (VAD) is used to detect voiced frames from speech signals, along with MDCT with Kaiser Bessel Derived (KBD) window being performed on each frame. Then the MDCT coefficients are selected from a certain frequency range and divided into a pair of segments. The two largest singular values of the paired segments are modified respectively according to their value difference to embed secret message. The thresholds are adaptively adjusted according to the largest singular values. Extensive experiments are carried out to compare the proposed method with three other methods from imperceptibility, robustness, capacity, and security. The experimental results show that under the simulation parameters β = 320, N_k=58, f_l=100 Hz, f_h,=3 kHz, and α=0.61, the proposed method has striking advantages to resist common robust attacks and the state-of-the-art steganalysis attacks while maintaining good imperceptibility.
机译:言语是重要的沟通方式之一。语音隐写术的研究在信息安全方面提供了很大的价值。为了提高语音隐写术的难以察觉和稳健性,应充分考虑语音信号的特性。本文提出了一种基于奇异值分解(SVD)和修改的离散余弦变换(MDCT)的强大语音定位方案。首先,语音活动检测器(VAD)用于检测来自语音信号的浊音帧,以及MDCT与正在对每个帧执行的kaiser贝塞尔导出的(KBD)窗口。然后,MDCT系数选自某个频率范围并分成一对段。成对段的两个最大奇异值分别根据其值差异来修改,以嵌入秘密消息。根据最大的奇异值自适应地调整阈值。进行了广泛的实验,以将提出的方法与其他三种方法进行比较,来自难以察觉,鲁棒性,容量和安全性。实验结果表明,在仿真参数β= 320,N_K = 58,F_L = 100Hz,F_H,= 3 kHz和α= 0.61,该方法具有抗拒普通稳健攻击和状态的优势。最艺术的隐星分析攻击,同时保持良好的难以察觉。

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