MELA-TTS: Joint transformer-diffusion model with representation alignment for speech synthesis
Abstract
This work introduces MELA-TTS, a novel joint transformer-diffusion framework for end-to-end text-to-speech synthesis. By autoregressively generating continuous mel-spectrogram frames from linguistic and speaker conditions, our architecture eliminates the need for speech tokenization and multi-stage processing pipelines. To address the inherent difficulties of modeling continuous features, we propose a representation alignment module that aligns output representations of the transformer decoder with semantic embeddings from a pretrained ASR encoder during training. This mechanism not only speeds up training convergence, but also enhances cross-modal coherence between the textual and acoustic domains. Comprehensive experiments demonstrate that MELA-TTS achieves state-of-the-art performance across multiple evaluation metrics while maintaining robust zero-shot voice cloning capabilities, in both offline and streaming synthesis modes. Our results establish a new benchmark for continuous feature generation approaches in TTS, offering a compelling alternative to discrete-token-based paradigms.
Cite
@article{arxiv.2509.14784,
title = {MELA-TTS: Joint transformer-diffusion model with representation alignment for speech synthesis},
author = {Keyu An and Zhiyu Zhang and Changfeng Gao and Yabin Li and Zhendong Peng and Haoxu Wang and Zhihao Du and Han Zhao and Zhifu Gao and Xiangang Li},
journal= {arXiv preprint arXiv:2509.14784},
year = {2026}
}
Comments
accepted by ICASSP 2026