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Poetic Meter Classification Using Acoustic Cues

机译:使用声学提示对仪表进行分类

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摘要

Poems, which communicate through rhythm and its apparent meaning have a vital role in any literary. Meter, a set of well defined rules gives rhythm to the poetry. In this paper, a meter classification scheme using fusion of low level, mid-level and high-level musical texture features, computed from recited poems is addressed. The performance of the proposed system is evaluated using a newly created poetic corpus in Malayalam, one of the classical languages in India. Initially, a baseline system with mel-frequency cepstral coefficient (MFCC) feature set is performed. In the second phase, experiment is conducted with musical texture features. In the third phase, experiment is extended using early fusion of MFCC with the feature set considered in the second phase. Support vector based classifier is used in the classification phase. Later, the same feature-sets are experimented with deep neural network(DNN) based classifier. Whilst MFCC-SVM system reports an overall accuracy of 60%, the second phase reported an accuracy of 68%. In the third phase, complementary information provided by the MFCC and musical texture features aided to improve the system performance (accuracy, 90%). In the DNN based experiments, the highest accuracy of 92% is reported for feature-fusion. The experimental study shows the promise of early fusion of MFCC with musical texture feature set in poetic meter classification and its analysis.
机译:通过节奏及其明显含义进行交流的诗歌在任何文学作品中都起着至关重要的作用。米,一组定义明确的规则使诗歌具有节奏感。在本文中,提出了一种使用低,中,高音乐质感特征融合而成的仪表分类方案,该方案是根据朗诵的诗歌计算得出的。拟议系统的性能是使用马拉雅拉姆语(印度的一种经典语言)中新创建的诗意语料库进行评估的。最初,执行具有梅尔频率倒谱系数(MFCC)功能集的基线系统。在第二阶段,使用音乐纹理特征进行实验。在第三阶段中,使用MFCC的早期融合与第二阶段中考虑的功能集进行了扩展。在分类阶段使用基于支持向量的分类器。随后,使用基于深度神经网络(DNN)的分类器对相同的特征集进行了实验。 MFCC-SVM系统报告的总体准确度为60%,而第二阶段报告的准确度为68%。在第三阶段,由MFCC提供的补充信息和音乐纹理特征有助于改善系统性能(准确性为90%)。在基于DNN的实验中,特征融合的准确度最高,达到92%。实验研究表明,MFCC与音乐质构特征集的早期融合有望在诗表分类及其分析中发挥作用。

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