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Self-optimized spectral correlation method for background music identification

机译:用于背景音乐识别的自优化光谱相关方法

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摘要

This paper proposes a new method of detecting a known reference signal in an input signal highly corrupted by other sounds. One major application of the method is the identification of broadcast background music corrupted by speech. In this method, the reference signal is first decomposed into a number of small time-frequency components, and the maximum similarity between each component and the input is calculated. The similarities for all the components are then integrated by a voting method. Finally, the result is used to determine whether or not the reference exists in the input; and if it exists, to determine its position. Experiments on the identification of background music and the classification of similar TV commercials have shown that this method can identify 100% of target signals with an SNR of -10dB.
机译:本文提出了一种新的方法,用于检测由其他声音高度损坏的输入信号中的已知参考信号。 该方法的一个主要应用是识别语音损坏的广播背景音乐。 在该方法中,首先将参考信号分解成多个小时频分量,并且计算每个组件与输入之间的最大相似性。 然后通过投票方法整合所有组件的相似性。 最后,结果用于确定输入中是否存在参考; 如果存在,以确定其位置。 关于背景音乐识别的实验和类似电视广告的分类表明,该方法可以识别100%的目标信号,SNR为-10dB。

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