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Towards a More Natural Urdu: A Comprehensive Approach to Text-to-Speech and Voice Cloning

Muhammad Ramiz Saud, Muhammad Imran, Raja Hashim Ali

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Abstract

This paper introduces a comprehensive approach to building natural-sounding Urdu Text-to-Speech (TTS) and voice cloning systems, addressing the lack of computational resources for Urdu. We developed a large-scale dataset of over 100 h of Urdu speech, carefully cleaned and phonetically aligned through an automated transcription pipeline to preserve linguistic accuracy. The dataset was then used to fine-tune Tacotron2, a neural network model originally trained for English, with modifications tailored to Urdu’s phonological and morphological features. To further enhance naturalness, we integrated voice cloning techniques that capture regional accents and produce personalized speech outputs. Model performance was evaluated through mean opinion score (MOS), word error rate (WER), and speaker similarity, showing substantial improvements compared to previous Urdu systems. The results demonstrate clear progress toward natural and intelligible Urdu speech synthesis, while also revealing challenges such as handling dialectal variation and preventing model overfitting. This work contributes an essential resource and methodology for advancing Urdu natural language processing (NLP), with promising applications in education, accessibility, entertainment, and assistive technologies.

Topics & Concepts

Computer scienceUrduArtificial intelligenceSpeech recognitionNatural languageTranscription (linguistics)Cloning (programming)Natural language processingPipeline (software)Artificial neural networkHidden Markov modelWord (group theory)Phonetic transcriptionNatural (archaeology)Word error rateVariation (astronomy)PhoneticsResource (disambiguation)Deep neural networksSpeech synthesisSpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing