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Audio classification utilizing a rule-based approach and the support vector machine classifier

机译:利用基于规则的方法和支持向量机分类器进行音频分类

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The evaluation of two classification architectures utilizing the rule-based approach and the one-against-one support vector machine (OAO-SVM) is presented in this paper. The classification of the audio stream is carried out in two steps. At first, the rule-based speechon-speech and music/environment sound discrimination is conducted. The set of adopted features, with a high efficiency in separation of speech and music signals, is implemented in order to find the best discriminator. Consequently, speech segments are classified into pure speech, speech with music and speech with env. sound using the OAO-SVM multi-class classification scheme. Experimental results show that the used classification architecture can decrease the classification error in comparison with OAO-SVM by using MFCC features only.
机译:本文介绍了使用基于规则的方法和一对一支持向量机(OAO-SVM)对两种分类体系结构的评估。音频流的分类分两个步骤进行。首先,进行基于规则的语音/非语音和音乐/环境声音的判别。为了找到最佳的鉴别器,实施了一组采用的特征,这些特征在语音和音乐信号的分离中具有很高的效率。因此,语音段被分为纯语音,带音乐的语音和带环境的语音。声音使用OAO-SVM多类别分类方案。实验结果表明,与仅使用MFCC功能的OAO-SVM相比,所使用的分类体系结构可以减少分类错误。

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