母语儿童与非母语儿童使用和声音高的口音分类

Kodali Radha, Mohan Bansal, Shaik Mulla Shabber
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引用次数: 10

摘要

为应对新冠肺炎疫情,教育系统从课堂转向数字平台上独特的电子学习,有效利用了基于语音的识别系统,特别是对识字前的儿童。由于儿童的声道发育不成熟,语音识别系统面临着多重挑战,而且由于不同口音的儿童发音不同,因此需要更多的智力。口音指的是一种独特的语言发音方式,尤其是与特定的国家、地区或社会经济背景有关的语言。本文旨在利用谐波音高估计和Mel频率倒谱系数(mfccc)来训练k-近邻(k-NN)分类器,提取可靠的声学和韵律语音线索,用于本族和非本族学龄前儿童的口音分类。实验结果表明,所提出的鲁棒模型在本地和非本地儿童口音分类的准确率和F-Measure方面优于各种特征提取器,并且对噪声环境的区分能力更强。
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Accent Classification of Native and Non-Native Children using Harmonic Pitch
To combat the Covid-19 outbreak, the education system shifted away from the classroom to distinct e-learning on digital platforms, which made effective use of voice-based recognition systems, especially for preliterate children. Children’s speech recognition systems face multiple challenges owing to their immature vocal tracts, and they demand more intelligence due to the fact that children with diverse accents utter words differently. Accent refers to a unique style of pronouncing a language, particularly one associated with a specific nation, place, or socio-economic background. This paper aims to extract reliable acoustic and prosodic speech cues of accent for classification of native and non-native preschool children using harmonic pitch estimation along with Mel Frequency Cepstral Coefficients (MFCCs) to train the k-Nearest Neighbour (k-NN) classifier. The experimental results reveal that the proposed robust model outperforms various feature extractors in accent classification of native and non-native children in terms of accuracy & F-Measure and more discriminate against noisy environments.
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