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Robust information hiding and extraction algorithms in speech

机译:语音中强大的信息隐藏和提取算法

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Speech with hidden data will be disturbed and damaged by a variety of interference, such as noises, codec and filters, etc. To improve the robustness, the speech information hiding and extraction algorithmbased on PSO-NN (Particle SwarmOptimizer Neural Network) is proposed. To improve the performance of anti-channel interference, the algorithmadds redundant data into the hidden data and then trains at the decoding end. At the same time, to improve the training efficiency and decoding accuracy, the algorithm firstly uses wavelet decomposition to get high-frequency coefficients of the signal, and then calculates the characteristic of highfrequency coefficients. At last, the algorithm selects 32 optimal features to train the neural network based on the FDR (Fish Discriminant Ratio). Simulation results show that the proposed algorithm improves the robustness of speech information hiding approach against filtering attack, noise attack, sampling attack and compression attack. Though the improvement on tensile attacks is ineffective, it was also better than others neural network algorithm.
机译:带有隐藏数据的语音会受到噪声,编解码器和滤波器等多种干扰的干扰和破坏。为了提高鲁棒性,提出了一种基于粒子群优化神经网络的粒子群信息隐藏和提取算法。为了提高抗信道干扰性能,该算法将冗余数据添加到隐藏数据中,然后在解码端进行训练。同时,为了提高训练效率和解码精度,该算法首先利用小波分解得到信号的高频系数,然后计算出高频系数的特征。最后,该算法基于FDR(鱼判别率)选择32个最优特征来训练神经网络。仿真结果表明,该算法提高了语音信息隐藏方法对滤波攻击,噪声攻击,采样攻击和压缩攻击的鲁棒性。尽管对拉伸攻击的改进效果不明显,但它也优于其他神经网络算法。

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