CLSDASMar 29, 2024

Where Are You From? Let Me Guess! Subdialect Recognition of Speeches in Sorani Kurdish

arXiv:2404.00124v11 citationsh-index: 1
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of subdialect recognition for Sorani Kurdish speakers, but it is incremental as it applies existing methods to a new dataset.

The paper tackled the problem of classifying Sorani Kurdish subdialects by collecting 29+ hours of audio from 107 interviews and adapting deep learning models, with RNN-LSTM achieving 96% accuracy, outperforming CNN (93%) and ANN (75%).

Classifying Sorani Kurdish subdialects poses a challenge due to the need for publicly available datasets or reliable resources like social media or websites for data collection. We conducted field visits to various cities and villages to address this issue, connecting with native speakers from different age groups, genders, academic backgrounds, and professions. We recorded their voices while engaging in conversations covering diverse topics such as lifestyle, background history, hobbies, interests, vacations, and life lessons. The target area of the research was the Kurdistan Region of Iraq. As a result, we accumulated 29 hours, 16 minutes, and 40 seconds of audio recordings from 107 interviews, constituting an unbalanced dataset encompassing six subdialects. Subsequently, we adapted three deep learning models: ANN, CNN, and RNN-LSTM. We explored various configurations, including different track durations, dataset splitting, and imbalanced dataset handling techniques such as oversampling and undersampling. Two hundred and twenty-five(225) experiments were conducted, and the outcomes were evaluated. The results indicated that the RNN-LSTM outperforms the other methods by achieving an accuracy of 96%. CNN achieved an accuracy of 93%, and ANN 75%. All three models demonstrated improved performance when applied to balanced datasets, primarily when we followed the oversampling approach. Future studies can explore additional future research directions to include other Kurdish dialects.

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