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Choosing an Accurate number of Mel Frequency Cepstral Coefficients for Audio Classification Purpose

机译:为音频分类目的选择准确的MEL频率谱系系数

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In this paper, we study several audio classification schemes applied on different number of features for multiclass classification with imbalanced datasets. As features, we proposed the liftering Mel frequency cepstral coefficients, while for classification we use probabilistic methods, instance-based learning algorithms, support vector machines, neural networks, L~∞-norm based classifier, fuzzy lattice reasoning classifier, and trees. The final goal is to find the appropriate number of liftering Mel frequency cepstral coefficients to provide the desired accuracy for audio classification purpose. The best results are obtained using 16 features and k-Nearest Neighbor as a classifier. In this case, the correct classification rate is 99.79%, the false alarm rate is 0.05%, the miss rate is 0.21%, the precision is 99.80% and the F-measure is 99.79%.
机译:在本文中,我们研究了在不同数量的特征上应用了多个音频分类方案,以便使用不平衡数据集进行多字符分类。作为特征,我们提出了升降器隆频谱系齐数,而用于分类我们使用概率方法,基于实例的学习算法,支持向量机,神经网络,L〜∞ - 范数基于基于分类器,模糊格推理分类器和树木。最终目标是找到适当数量的升降型MEL频率跳跃系数,以提供所需的音频分类目的精度。使用16个特征和k最近邻居作为分类器获得最佳结果。在这种情况下,正确的分类率为99.79%,错误报警速率为0.05%,错过率为0.21%,精度为99.80%,F措施为99.79%。

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