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A musical information retrieval system for Classical Turkish Music makams

机译:古典土耳其音乐makams的音乐信息检索系统

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摘要

Musical information retrieval (MIR) applications have become an interesting topic both for researchers and commercial applications. The majority of the current knowledge on MIR is based on Western music. However, traditional genres, such as Classical Turkish Music (CTM), have great structural differences compared with Western music. Then, the validity of the current knowledge on this subject must be checked on such genres. Through this work, a MIR application that simulates the human music processing system based on CTM is proposed. To achieve this goal, first mel-frequency cepstral coefficients (MFCCs) and delta-MFCCs, which are the most frequent features used in audio applications, were used as features. In the last few years deep belief networks (DBNs) have become promising classifiers for sound classification problems. To confirm this statement, the classification accuracies of four probability theory-based neural networks, namely radial basis function networks, generalized regression neural networks, probabilistic neural networks, and support vector machines, were compared to the DBN. Our results show that the DBN outperforms the others.
机译:音乐信息检索(MIR)应用程序已成为研究人员和商业应用程序的一个有趣主题。当前有关MIR的大多数知识都是基于西方音乐。但是,与西方音乐相比,诸如古典土耳其音乐(CTM)之类的传统流派具有很大的结构差异。然后,必须在这种体裁上检查关于该主题的当前知识的有效性。通过这项工作,提出了一种基于CTM的模拟人类音乐处理系统的MIR应用程序。为了实现此目标,首先将音频频率应用中使用最频繁的特征“梅尔频率倒谱系数”(MFCC)和“Δ-MFCC”用作特征。在过去的几年中,深度信念网络(DBN)已成为声音分类问题的有前途的分类器。为了证实这一说法,将四种基于概率论的神经网络(即径向基函数网络,广义回归神经网络,概率神经网络和支持向量机)的分类精度与DBN进行了比较。我们的结果表明DBN优于其他DBN。

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