Feature Extraction for Traditional Malay Musical Instruments Classification System

N. Senan, R. Ibrahim, Nazri M. Nawi, M. Mokji
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引用次数: 15

Abstract

Automatic musical instrument classification system deals with a large number of sound database and various types of features schemes. With the lack of data pre-processing, it might become invaluable asset that can impact the whole classification tasks. In handling an effective classification system, finding the best data sets with the best features schemes often a vital step in the data representation and feature extraction process. Thus, this study is conducted in order to investigate the impact of several factors that might affecting the classification accuracy such as audio length, segmented frame size and data sets size (for training and testing) towards Traditional Malay musical instruments sounds classification system. The perception-based and MFCC features schemes with total of 37 features was utilized in this study. Meanwhile, Multi-Layered Perceptrons classifier is employed to evaluate the modified data sets and extracted features schemes in terms of their classification performance. Results show that the highest accuracy of 99.57% was obtained from the best data sets with the combination of full features. It is also revealed that the identified factors had a significant role to the performance of classification accuracy. Hence, this study suggest that further feature analysis research is necessary for better solution in Traditional Malay musical instruments sounds classification system problem.
马来传统乐器分类系统的特征提取
乐器自动分类系统涉及大量的声音数据库和各种类型的特征方案。由于缺乏数据预处理,它可能会成为影响整个分类任务的宝贵资产。在处理有效的分类系统时,寻找具有最佳特征方案的最佳数据集通常是数据表示和特征提取过程中的关键步骤。因此,本研究是为了调查可能影响分类准确性的几个因素,如音频长度,分段帧大小和数据集大小(用于训练和测试)对传统马来乐器声音分类系统的影响。本研究采用了基于感知和MFCC的特征方案,共37个特征。同时,利用多层感知器分类器对修改后的数据集和提取的特征方案的分类性能进行评价。结果表明,在全特征组合的最佳数据集上,准确率达到99.57%。结果还表明,所识别的因素对分类精度的表现有显著的影响。因此,本研究建议有必要进一步的特征分析研究,以更好地解决传统马来乐器声音分类系统的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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