CLFeb 27, 2023

Diacritic Recognition Performance in Arabic ASR

arXiv:2302.14022v18 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

This work addresses a specific issue in Arabic ASR for improving diacritic accuracy, but it is incremental as it builds on existing methods and focuses on a narrow domain.

This paper tackles the problem of diacritic recognition in Arabic ASR by experimentally evaluating whether input diacritization degrades ASR quality and comparing it to text-based post-processing. The result shows that ASR diacritization significantly outperforms text-based diacritization, especially when fine-tuned with manually diacritized transcripts.

We present an analysis of diacritic recognition performance in Arabic Automatic Speech Recognition (ASR) systems. As most existing Arabic speech corpora do not contain all diacritical marks, which represent short vowels and other phonetic information in Arabic script, current state-of-the-art ASR models do not produce full diacritization in their output. Automatic text-based diacritization has previously been employed both as a pre-processing step to train diacritized ASR, or as a post-processing step to diacritize the resulting ASR hypotheses. It is generally believed that input diacritization degrades ASR performance, but no systematic evaluation of ASR diacritization performance, independent of ASR performance, has been conducted to date. In this paper, we attempt to experimentally clarify whether input diacritiztation indeed degrades ASR quality, and to compare the diacritic recognition performance against text-based diacritization as a post-processing step. We start with pre-trained Arabic ASR models and fine-tune them on transcribed speech data with different diacritization conditions: manual, automatic, and no diacritization. We isolate diacritic recognition performance from the overall ASR performance using coverage and precision metrics. We find that ASR diacritization significantly outperforms text-based diacritization in post-processing, particularly when the ASR model is fine-tuned with manually diacritized transcripts.

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