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首页> 外文期刊>Journal of computer sciences >Latent Dirichlet Allocation Model for Raga Identification of Carnatic Music | Science Publications
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Latent Dirichlet Allocation Model for Raga Identification of Carnatic Music | Science Publications

机译:随机音乐的Raga识别的潜在Dirichlet分配模型科学出版物

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> Problem statement: In this study the Raga of South Indian Carnatic music is determined by constructing a model. Raga is a pre-determined arrangement of notes, which is characterized by an Arohana and Avarohana, which is the ascending and descending arrangement of notes and Raga lakshana. Approach: In this study a Latent Dirichlet Allocation (LDA) model is constructed to identify the Raga of South Indian Carnatic music. LDA is an unsupervised statistical approach which is being used for document classification to determine the underlying topics in a given document. The construction of LDA is based on the assumption that the notes of a given music piece can be mapped to the words in a topic and the topics in a document can be mapped to the Raga. The identification of notes is very difficult due to the narrow range of frequency and the characteristics of Carnatic music. This inclined us in moving to a probabilistic approach for the identification of Raga. In this study we identify the notes of a given signal and using these notes and Raga lakshana, a probabilistic model in terms of LDA's parameters ∝ and θ are computed and constructed for every Raga by initially assuming a value which is constant for every Raga. This value of ∝ is cultured after determining θ for a given Raga. The θ of a given Raga is computed using the characteristic phrases which is a sequence of notes and is unique for a given Raga. During the Raga identification phase, the value of ∝ and θ are computed and is matched with the constructed LDA model to identify the given Raga. Results: Using this model, the Raga identification of Parent Ragas had a lower error rate than that of Child Raga. For parent Raga an average identification rate of 75% was achieved. Conclusion/Recommendations: The accuracy of the algorithm can be improved by using more features of Raga lakshana. After identifying the Raga, it can be used as features to be used by a Music Information Retrieval system.
机译: > 问题陈述:在本研究中,通过构建模型来确定南印度裔狂欢节音乐的狂欢。 Raga是音符的预定排列,其特征是Arohana和Avarohana,即音符和Raga lakshana的升序和降序排列。 方法:在本研究中,构建了潜在狄利克雷分配(LDA)模型来识别南印度狂欢音乐的Raga。 LDA是一种无监督的统计方法,用于文档分类以确定给定文档中的基础主题。 LDA的构建基于这样的假设:给定乐曲的音符可以映射到主题中的单词,文档中的主题可以映射到Raga。由于频率范围窄和Carnatic音乐的特征,音符的识别非常困难。这使我们倾向于采用概率方法来识别Raga。在这项研究中,我们确定给定信号的音符,并使用这些音符和Raga lakshana,通过最初假设每个Raga的值都是恒定的,针对每个Raga计算并构造LDA参数∝和θ的概率模型。在确定给定Raga的θ之后培养culture的值。使用特征短语计算给定Raga的θ,该特征短语是音符序列,对于给定Raga而言是唯一的。在Raga识别阶段,计算∝和θ的值,并将其与构建的LDA模型匹配以识别给定的Raga。 结果:使用此模型,对父拉加斯的Raga识别错误率比对子拉加的错误率低。对于父代Raga,平均识别率为75%。 结论/建议:使用Raga lakshana的更多功能可以提高算法的准确性。识别Raga之后,它可以用作音乐信息检索系统要使用的功能。

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