用返回超时系统网络检测错误语音应答行为

JK Aditya Christya Buditama, Catur Atmaji, A. E. Putra
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引用次数: 1

摘要

爪哇语是一种需要保存的印尼文化,但是很多爪哇学生在爪哇语字母的发音上出现了错误,由于时间和主观评价的限制,人类教师很难分析错误,因此需要一个系统来检测爪哇语字母的错误发音。错误读音检测系统在外文中得到了广泛的应用,但对爪哇语卡拉坎语字母的错误读音检测系统尚未实现。本研究开发了基于反向传播人工神经网络(BP-ANN)的爪哇字母误读检测系统。该数据集是由24位说话者5次重复的哈那卡拉卡文本的发音记录获得的。然后用ALNS方法将信号自动分割成音节。ANN-PB采用Mel-Frequency Cepstral Coefficient (MFCC)方法统计值,分别为7和14个系数。10-Fold交叉验证用于验证和测试系统。利用7MFCC系数检测爪哇语的发音错误,准确率最高,达到80,07%。而使用14个MFCC系数检测爪哇语的错误发音,准确率最高可达82.36%。
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Deteksi Kesalahan Pengucapan Huruf Jawa Carakan dengan Jaringan Syaraf Tiruan Perambatan Balik
Javanese is an Indonesian culture which needs to be preserved, but many Javanese students make mistakes in the pronunciation of Javanese letters and find it difficult to analyze errors by human teachers because of the limited time and subjective assessment, so a system is needed to detect incorrect pronunciation of Javanese letters. Mispronunciation detection system has been widely applied in foreign languages, but the system has not been implemented for Javanese carakan letters. This research develops the Javanese letters mispronunciation detection system using Back-Propagation Artificial Neural Networks (BP-ANN). The dataset is obtained from the recorded pronunciation of hanacaraka texts by 24 speakers  with 5 repetitions. ALNS method then used to automatically segment the signal into syllables. ANN-PB use statistical value of Mel-Frequency Cepstral Coefficient (MFCC) method with 7 and 14 coefficients. 10-Fold Cross Validation is used to validate and test the system. The Javanese mispronunciation detection using 7MFCC coefficients produces the highest accuracy of 80,07%. While the Javanese mispronunciation detection using 14 MFCC coefficients produces an accuracy of 82.36% at the highest.
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