TL;DR
This paper introduces HiCoDiT, a hierarchical diffusion transformer for video-to-speech synthesis that leverages the hierarchical structure of speech tokens for improved audio-visual alignment.
Contribution
It proposes a novel hierarchical codec diffusion model that exploits the hierarchy of discrete speech tokens for better VTS performance.
Findings
Outperforms baselines in speech fidelity and expressiveness.
Effectively captures speaker-aware semantics and prosody.
Demonstrates the benefits of hierarchical discrete speech modelling.
Abstract
Video-to-Speech (VTS) generation aims to synthesize speech from a silent video without auditory signals. However, existing VTS methods disregard the hierarchical nature of speech, which spans coarse speaker-aware semantics to fine-grained prosodic details. This oversight hinders direct alignment between visual and speech features at specific hierarchical levels during property matching. In this paper, leveraging the hierarchical structure of Residual Vector Quantization (RVQ)-based codec, we propose HiCoDiT, a novel Hierarchical Codec Diffusion Transformer that exploits the inherent hierarchy of discrete speech tokens to achieve strong audio-visual alignment. Specifically, since lower-level tokens encode coarse speaker-aware semantics and higher-level tokens capture fine-grained prosody, HiCoDiT employs low-level and high-level blocks to generate tokens at different levels. The…
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