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Recognition test on highly newly robust Malay corpus based on statistical analysis for Malay articulation disorder

机译:基于统计分析的马来发音障碍对高度健壮的马来语语料的识别测试

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In designing the Malay language database for articulation disorder, the priority is more on Malay alveolar target words where the important set of words had been used for therapy training exercise especially for the patient at Sekolah Kebangsaan Pendidikan Khas (SKPK), Johor Bahru [9]. The use of manual or traditional technique by speech-language pathologist (SLP) at SKPK is not efficient anymore because it can lead to time consuming and require a lot of involvement of SLP for each therapy session for the ratio of 2:1000 of SLP to patient. Therefore this paper describe the computerized technique that been use in speech recognition where few experiment had been conducted in the process of building the Computer-based Malay Language Articulation Diagnostic System that can be use specifically for speech articulation disorder. The technique use for statistical and processing the word behind this system is Hidden Markov Model (HMM). From the total 108 target words that been collected, few words been selected to run the experiment by using voice sample of real patient The experiment results shows the accuracy of the recognition rate has achieved about 97% from the overall sample and few words can be claimed as “major spoken” mistake that always happen in speech articulation disorder case. The experiment regarding to voice sample evaluation had also been done to find the total accuracy rate for Malay alveolar consonants.
机译:在设计针对发音障碍的马来语语言数据库时,优先考虑的是马来语肺泡目标词,其中重要的词组已用于治疗培训,尤其是柔佛州新山的Sekolah Kebangsaan Pendidikan Khas(SKPK)的患者[9] 。 SKPK的言语病理学家(SLP)使用手动或传统技术不再有效,因为它可能会耗时,并且每次治疗会话都需要SLP的大量参与,SLP与SLP的比例为2:1000病人。因此,本文描述了语音识别中使用的计算机化技术,在构建专门用于语音清晰度障碍的基于计算机的马来语语言清晰度诊断系统的过程中,很少进行任何实验。用于统计和处理该系统背后单词的技术是隐马尔可夫模型(HMM)。从收集到的108个目标词中,使用真实患者的语音样本选择了少数词来进行实验。实验结果表明,从总体样本中识别率的准确率达到了约97%,可以断言的词少作为语音清晰度障碍案例中经常发生的“主要口头”错误。还进行了有关语音样本评估的实验,以找到马来语肺泡辅音的总准确率。

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