基于多分类器融合的音乐类型分类

Lei Wang, Shen Huang, Shijin Wang, Jiaen Liang, Bo Xu
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引用次数: 15

摘要

尽管近年来研究人员在音乐类型分类方面取得了很大的进展,但对更准确的分类系统的需求仍未得到满足。本文提出了一种基于多分类器融合的分类错误率进一步降低的方法。首先,在每个短时间帧中提取mfccc和MPEG-7音频描述符中的四个特征,然后将一组帧聚集成一个较长的片段,计算这些短时间帧特征的均值和方差。该段被认为是培训和测试模块的基本单元。然后分别对随机森林(RF)和多层感知器神经网络(MLP)分别执行。最后,采用加权投票融合策略将两个分类器在每个片段上的结果进行融合,并在所有片段上选择标记频率最高的类型进行整个文件决策。实验表明,该方法是有效的。与基线系统相比,融合结果的错误率相对降低了12.4%。
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Music Genre Classification Based on Multiple Classifier Fusion
Although researchers have made great progresses on music genre classification in recent years, the need for more accurate system is still not satisfied. In this paper, we propose a method for further reducing the classification error rate based on multiple classifier fusion. First of all, MFCCs and four features from MPEG-7 audio descriptor are extracted in every short time frame, and then a group of frames are gathered into a longer segment, in which mean and variance of these short time frames features are calculated. The segment is considered as the basic unit for training and testing module. Then random forest (RF) and multilayer perceptron neural network (MLP) are executed on such segment independently. Finally, a weighted voting fusion strategy is employed to fusion the result of the two classifiers on each segment, and the whole file decision is made by selecting the most frequently labeled genre over all the segments. Experiments showed that the approach is effective. The fusion result gets 12.4% relative reduction in error rate compared to our baseline system.
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