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Robust and Unbounded Length Generalization in Autoregressive Transformer-Based Text-to-Speech

Enhancements to AR Transformer-based encoder-decoder TTS systems improve generalization to longer sequences by using an alignment mechanism with learned relative location information, addressing issues like dropped or repeated words.

Year
2024
Venue
arXiv 2024
Authors
7
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arxiv.org/abs/2410.22179v2ARXIV-DEFAULT
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Abstract

Autoregressive (AR) Transformer-based sequence models are known to have difficulty generalizing to sequences longer than those seen during training. When applied to text-to-speech (TTS), these models tend to drop or repeat words or produce erratic output, especially for longer utterances. In this paper, we introduce enhancements aimed at AR Transformer-based encoder-decoder TTS systems that address these robustness and length generalization issues. Our approach uses an alignment mechanism to provide cross-attention operations with relative location information. The associated alignment position is learned as a latent property of the model via backpropagation and requires no external alignment information during training. While the approach is tailored to the monotonic nature of TTS input-output alignment, it is still able to benefit from the flexible modeling power of interleaved multi-head self- and cross-attention operations. A system incorporating these improvements, which we call Very Attentive Tacotron, matches the naturalness and expressiveness of a baseline T5-based TTS system, while eliminating problems with repeated or dropped words and enabling generalization to any practical utterance length.

Authors

7