论文标题
亲爱的:基于深度学习的音频重新录制弹性水印
DeAR: A Deep-learning-based Audio Re-recording Resilient Watermarking
论文作者
论文摘要
音频水印广泛用于泄漏源跟踪。水印的鲁棒性决定了算法的可追溯性。随着数字技术的发展,音频重新录制(AR)已成为一种有效而秘密的手段,可以窃取秘密。 AR工艺可以在保留原始信息的同时大量破坏水印信号。这为在此阶段提出了一个新的要求水印的新要求,也就是说,要对AR扭曲变得可靠。不幸的是,由于AR过程的复杂性,现有的算法都无法有效抵抗AR攻击。为了解决这一限制,本文提出了Dear,Dear,这是一种基于深度学习的音频再录制的抗性水印。受到DNN的图像水印的启发,我们为音频载体提供了深度学习框架,可以有效地嵌入和提取水印信号。同时,为了抵抗AR攻击,我们精心分析了在AR过程中发生的扭曲,并设计了相应的失真层以与所提出的水印框架合作。广泛的实验表明,所提出的算法不仅可以抵抗常见的电子通道扭曲,而且可以抵抗AR畸变。在高质量嵌入(SNR = 25.86dB)的前提下,在常见的重新录制距离(20厘米)的情况下,算法可以有效地达到平均恢复精度为98.55%。
Audio watermarking is widely used for leaking source tracing. The robustness of the watermark determines the traceability of the algorithm. With the development of digital technology, audio re-recording (AR) has become an efficient and covert means to steal secrets. AR process could drastically destroy the watermark signal while preserving the original information. This puts forward a new requirement for audio watermarking at this stage, that is, to be robust to AR distortions. Unfortunately, none of the existing algorithms can effectively resist AR attacks due to the complexity of the AR process. To address this limitation, this paper proposes DeAR, a deep-learning-based audio re-recording resistant watermarking. Inspired by DNN-based image watermarking, we pioneer a deep learning framework for audio carriers, based on which the watermark signal can be effectively embedded and extracted. Meanwhile, in order to resist the AR attack, we delicately analyze the distortions that occurred in the AR process and design the corresponding distortion layer to cooperate with the proposed watermarking framework. Extensive experiments show that the proposed algorithm can resist not only common electronic channel distortions but also AR distortions. Under the premise of high-quality embedding (SNR=25.86dB), in the case of a common re-recording distance (20cm), the algorithm can effectively achieve an average bit recovery accuracy of 98.55%.