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Recognizing ragas of Carnatic genre using advanced intelligence: a classification system for Indian music

机译:使用先进的识别卡纳蒂克拉格的流派情报:印度的分类系统音乐

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Purpose In general, Indian Classical Music (ICM) is classified into two: Carnatic and Hindustani. Even though, both the music formats have a similar foundation, the way of presentation is varied in many manners. The fundamental components of ICM are raga and taala. Taala basically represents the rhythmic patterns or beats (Dandawate et al., 2015; Kirthika and Chattamvelli, 2012). Raga is determined from the flow of swaras (notes), which is denoted as the wider terminology. The raga is defined based on some vital factors such as swaras, aarohana-avarohna and typical phrases. Technically, the fundamental frequency is swara, which is definite through duration. Moreover, there are many other problems for automatic raga recognition model. Thus, in this work, raga is recognized without utilizing explicit note series information and necessary to adopt an efficient classification model. Design/methodology/approach This paper proposes an efficient raga identification system through which music of Carnatic genre can be effectively recognized. This paper also proposes an adaptive classifier based on NN in which the feature set is used for learning. The adaptive classifier exploits advanced metaheuristic-based learning algorithm to get the knowledge of the extracted feature set. Since the learning algorithm plays a crucial role in defining the precision of the raga recognition, this model prefers to use the GWO. Findings Through the performance analysis, it is witnessed that the accuracy of proposed model is 16.6% better than NN with LM, NN with GD and NN with FF respectively, 14.7% better than NN with PSO. Specificity measure of the proposed model is 19.6, 24.0, 13.5 and 17.5% superior to NN with LM, NN with GD, NN with FF and NN with PSO, respectively. NPV of the proposed model is 19.6, 24, 13.5 and 17.5% better than NN with LM, NN with GD, NN with FF and NN with PSO, respectively. Thus it has proven that the proposed model has provided the best result than other conventional classification methods. Originality/value This paper intends to propose an efficient raga identification system through which music of Carnatic genre can be effectively recognized. This paper also proposes an adaptive classifier based on NN.
机译:目的在一般情况下,印度古典音乐(ICM)分为两个:卡纳蒂克和印度斯坦语。即使,有一个音乐格式类似的基础,演讲的方式在许多礼仪不同。ICM的组件是拉格和taala。基本上代表了有节奏的模式或Chattamvelli, 2012)。流的课本(笔记),表示为更广泛的术语。一些重要因素,如课本上,aarohana-avarohna和典型的短语。从技术上讲,基频是课本上的,这是明确的通过时间。还有许多其他问题自动拉格识别模型。承认没有利用显式注意系列必要信息,采用一种有效的分类模型。本文提出了一种高效的拉格音乐识别系统卡纳蒂克风格可以有效地识别。本文还提出了一种自适应分类器基于神经网络的特性集学习。先进metaheuristic-based学习算法得到的知识提取的功能集。角色定义拉格的精确性这个模型识别,更喜欢使用拥有。通过性能分析结果目睹了提出模型的准确性16.6%比与LM神经网络,神经网络与GD和神经网络分别与FF, 14.7%比神经网络算法。19.6, 24.0, 13.5和17.5%优于神经网络LM神经网络与GD, NN FF和PSO神经网络,分别。24日,17.5%和13.5比与LM神经网络,神经网络GD, NN FF和PSO神经网络,分别。模型提供了最好的结果其他传统的分类方法。创意/值本文打算提出一个高效的拉格识别系统卡纳蒂克的音乐流派可以有效地公认的。基于神经网络的分类器。

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