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Neural network based system for optimal watermark embodiment in audio signals

机译:基于神经网络的音频信号最佳水印体现系统

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Summary form only given. In this work we present a novel technique for optimal embodiment of watermark, i.e. auxiliary digital signals, into audio host signals based on a properly trained neural network. One of the important practical applications of such a class of systems pertains to automatic royalty tracking and proof of copyrighted material or commercial advertisements, when advertisers are able to confirm that commercials which they have paid for were actually broadcast at the proper time and date. Our method includes introduction of a local detection subsystem on the embedder side. The embedder simulates the extractor process at receiver side, including expected channel distortion, giving reliable estimate of actual watermark detection error rate. Collecting pairs of selected characteristics of host signals and the estimated error rate, it is possible to train a corresponding multilayer neural network which can find the optimal watermark embodiment during the working regime of the embedder.
机译:仅提供摘要表格。在这项工作中,我们提出了一种新技术,用于基于适当训练的神经网络将水印(即辅助数字信号)最佳化为音频主机信号。当广告商能够确认他们所付费的广告实际上已经在适当的时间和日期播出时,此类系统的重要实际应用之一涉及自动版税跟踪和版权材料或商业广告的证明。我们的方法包括在嵌入器端引入本地检测子系统。嵌入器在接收器端模拟提取器过程,包括预期的信道失真,从而给出实际水印检测错误率的可靠估计。收集主机信号的选定特征对和估计的错误率,可以训练相应的多层神经网络,该网络可以在嵌入器的工作过程中找到最佳的水印实施方式。

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