AlignSTS: Speech-to-Singing Conversion via Cross-Modal Alignment
Abstract
The speech-to-singing (STS) voice conversion task aims to generate singing samples corresponding to speech recordings while facing a major challenge: the alignment between the target (singing) pitch contour and the source (speech) content is difficult to learn in a text-free situation. This paper proposes AlignSTS, an STS model based on explicit cross-modal alignment, which views speech variance such as pitch and content as different modalities. Inspired by the mechanism of how humans will sing the lyrics to the melody, AlignSTS: 1) adopts a novel rhythm adaptor to predict the target rhythm representation to bridge the modality gap between content and pitch, where the rhythm representation is computed in a simple yet effective way and is quantized into a discrete space; and 2) uses the predicted rhythm representation to re-align the content based on cross-attention and conducts a cross-modal fusion for re-synthesize. Extensive experiments show that AlignSTS achieves superior performance in terms of both objective and subjective metrics. Audio samples are available at https://alignsts.github.io.
Cite
@article{arxiv.2305.04476,
title = {AlignSTS: Speech-to-Singing Conversion via Cross-Modal Alignment},
author = {Ruiqi Li and Rongjie Huang and Lichao Zhang and Jinglin Liu and Zhou Zhao},
journal= {arXiv preprint arXiv:2305.04476},
year = {2023}
}
Comments
Findings of ACL 2023