SDCLLGASJan 3, 2023

An ensemble-based framework for mispronunciation detection of Arabic phonemes

arXiv:2301.01378v111 citationsh-index: 13
Originality Synthesis-oriented
AI Analysis

This work addresses mispronunciation detection for Arabic language learners, but it is incremental as it applies existing ensemble techniques to a new language domain.

The paper tackled mispronunciation detection for Arabic phonemes by introducing an ensemble model, achieving a classification accuracy of 95.9% using a voting classifier with Mel spectrogram features.

Determination of mispronunciations and ensuring feedback to users are maintained by computer-assisted language learning (CALL) systems. In this work, we introduce an ensemble model that defines the mispronunciation of Arabic phonemes and assists learning of Arabic, effectively. To the best of our knowledge, this is the very first attempt to determine the mispronunciations of Arabic phonemes employing ensemble learning techniques and conventional machine learning models, comprehensively. In order to observe the effect of feature extraction techniques, mel-frequency cepstrum coefficients (MFCC), and Mel spectrogram are blended with each learning algorithm. To show the success of proposed model, 29 letters in the Arabic phonemes, 8 of which are hafiz, are voiced by a total of 11 different person. The amount of data set has been enhanced employing the methods of adding noise, time shifting, time stretching, pitch shifting. Extensive experiment results demonstrate that the utilization of voting classifier as an ensemble algorithm with Mel spectrogram feature extraction technique exhibits remarkable classification result with 95.9% of accuracy.

Foundations

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