基于K-Means聚类算法支持向量机的音乐类型预测器低频时域特征音频文件分类

S. Sruthi, S. Sridhar
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引用次数: 0

摘要

本研究的主要目的是利用k均值聚类(K-Means)和支持向量机(SVM)对具有低频频域和时域特征的音频文件进行基于音乐类型预测的分类。材料与方法:本研究采用支持向量机和K-Means方法。使用G power软件计算样本量,确定为每组10个,预试功率为80%,阈值为0.05%,CI为95%。结果:SVM对频域低阶特征音频文件分类的预测准确率为95.35%,高于K-Means算法的75.20%。两组间差异有统计学意义,显著性值为0.28 (p < 0.05)。结论:NovelSupport Vector Machine算法对低频音频文件的预测优于K-Means算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Music Genre Predictor based Classification of Audio Files with Low Level Feature of Frequency and Time Domain using Support Vector Machine Over K-Means Clustering Algorithm
Main goal of the research is to employ Music genre prediction-based classification of audio files with low level feature of frequency domain and time domain using K-Means Clustering (K-Means) and Support Vector Machine (SVM). Materials and Methods: SVM and K-Means are implemented in this research work. Sample size is calculated using G power software and determined as 10 per group with pretest power 80%, threshold 0.05% and CI 95%. Result: SVM provides a higher of 95.35% compared to K-Means algorithm with 75.20% in predicting classification of Audio files with low level feature of frequency domain. There is a noteworthy difference between two groups with a significance value of 0.28 (p>0.05). Conclusion: NovelSupport Vector Machine algorithm predicts audio files with low level frequency better than K-Means algorithm.
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