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Audio segmentation-by-classification approach based on factor analysis in broadcast news domain

机译:广播新闻领域中基于因子分析的音频分类方法

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This paper studies a novel audio segmentation-by-classification approach based on factor analysis. The proposed technique compensates the within-class variability by using class-dependent factor loading matrices and obtains the scores by computing the log-likelihood ratio for the class model to a non-class model over fixed-length windows. Afterwards, these scores are smoothed to yield longer contiguous segments of the same class by means of different back-end systems. Unlike previous solutions, our proposal does not make use of specific acoustic features and does not need a hierarchical structure. The proposed method is applied to segment and classify audios coming from TV shows into five different acoustic classes: speech, music, speech with music, speech with noise, and others. The technique is compared to a hierarchical system with specific acoustic features achieving a significant error reduction.
机译:本文研究了一种基于因子分析的新型音频分类方法。所提出的技术通过使用与类有关的因子加载矩阵来补偿类内变异性,并通过计算固定长度窗口上的类模型与非类模型的对数似然比来获得分数。之后,通过不同的后端系统对这些分数进行平滑处理,以产生相同类别的更长的连续片段。与以前的解决方案不同,我们的建议不使用特定的声学特征,并且不需要分层结构。所提出的方法被应用于将来自电视节目的音频分割和分类为五个不同的声学类别:语音,音乐,带音乐的语音,带噪声的语音等。将该技术与具有特定声学特征的分层系统进行了比较,从而显着减少了错误。

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