Commercial detection by mining maximal repeated sequence in audio stream

Jiansong Chen, Teng Li, Lei Zhu, Peng Ding, Bo Xu
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引用次数: 3

Abstract

Efficient detection of commercial is an important topic for many applications such as commercial monitoring, market investigation. This paper reports an unsupervised technique of discovering commercial by mining repeated sequence in audio stream. Compared with previous work, we focus on solving practical problems by introducing three principles of commercial: repetition principle, independence principle and equivalence principle. Based on these principles, we detect the commercials by first mining maximal repeated sequences (MRS) and then post-processing the MRS pairs based on independence principle and equivalence principle for final result. In addition, a coarse-to-fine scheme is adopted in the acoustic matching stage to save computational cost. Extensive experiments both on simulated data and real broadcast data demonstrate the effectiveness of our method.
音频流中最大重复序列挖掘的商业检测
商业高效检测是商业监控、市场调查等诸多应用领域的重要课题。本文报道了一种通过挖掘音频流中的重复序列来发现商业广告的无监督技术。与以往的工作相比,我们着重于解决实际问题,引入了商业的三个原则:重复原则、独立原则和等价原则。在此基础上,我们首先挖掘最大重复序列(MRS),然后根据独立性原则和等效原则对MRS对进行后处理,得到最终结果。此外,在声学匹配阶段采用了由粗到精的方案,节省了计算成本。在模拟数据和真实广播数据上的大量实验证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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