Analysis And Voice Recognition In Indonesian Language Using MFCC And SVM Method

ComTech Pub Date : 2016-06-01 DOI:10.21512/COMTECH.V7I2.2252
Harvianto Harvianto, Livia Ashianti, Jupiter Jupiter, Suhandi Junaedi
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引用次数: 4

Abstract

Voice recognition technology is one of biometric technology. Sound is a unique part of the human being which made an individual can be easily distinguished one from another. Voice can also provide information such as gender, emotion, and identity of the speaker. This research will record human voices that pronounce digits between 0 and 9 with and without noise. Features of this sound recording will be extracted using Mel Frequency Cepstral Coefficient (MFCC). Mean, standard deviation, max, min, and the combination of them will be used to construct the feature vectors. This feature vectors then will be classified using Support Vector Machine (SVM). There will be two classification models. The first one is based on the speaker and the other one based on the digits pronounced. The classification model then will be validated by performing 10-fold cross-validation.The best average accuracy from two classification model is 91.83%. This result achieved using Mean + Standard deviation + Min + Max as features.
基于MFCC和SVM方法的印尼语语音分析与识别
语音识别技术是生物识别技术的一种。声音是人类独特的一部分,它使人可以很容易地与他人区分开来。声音还可以提供说话人的性别、情感和身份等信息。这项研究将记录人类在有噪音和无噪音的情况下发出0到9之间数字的声音。该录音的特征将使用Mel频率倒谱系数(MFCC)提取。将使用均值、标准差、最大值、最小值以及它们的组合来构建特征向量。然后使用支持向量机(SVM)对这些特征向量进行分类。将有两种分类模型。第一个是基于说话人,另一个是基于发音的数字。然后将通过执行10倍交叉验证来验证分类模型。两种分类模型的最佳平均准确率为91.83%。该结果使用均值+标准差+最小值+最大值作为特征。
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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6
审稿时长
16 weeks
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