基于谱质心的支持向量机声信号分类改进方法

S. Kavitha, J. Manikandan
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引用次数: 1

摘要

声学信号的分类问题在这项工作中使用频谱检查,通道提取的特征从输入和机器学习算法。这篇简短的文章探讨了各种设置对特征提取的影响。然后观察到这种特征级通道组合的精度增加。为了对事物进行分类,模式识别利用了各种各样的分类方案。“模式”是指必须进行分类并提取准确特征的度量。图像和音频信号是最常见的测量方式。在多媒体技术不断发展的背景下,提出了支持向量机(SVM)对声信号进行有效分类的必要性。本研究使用两种机器学习算法来增强音频分类和分类。基于谱特征的支持向量机比其他机器学习算法具有更好的性能。
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Improved Methodology of SVM to Classify Acoustic Signal by Spectral Centroid
Acoustic signal classification issues are addressed in this work using spectral examination, channel extracting the features from the input and machine learning algorithm. This brief article examines the effect of various settings on feature extraction. This feature-level channel combination's accuracy increase is then observed. To categorise things, pattern recognition utilises a variety of classification schemes. "Pattern" refers to the measures that must be categorised with accurate feature extracted. Images and audio signals are among the most common kinds of measurements. The proposed Support Vector Machine (SVM) is used for the necessity of an effective categorization of acoustic signals driven by the continual improvements in multimedia technology. This study uses two machine learning algorithms to enhance audio classification and categorization. The proposed SVM achieves superior performance than the other ML algorithm by spectral features.
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