PersonaTalk: Bring Attention to Your Persona in Visual Dubbing

SIGGRAPH Asia 2024 (Conference Track)

Bytedance
*Equal Contribution Corresponding Author

PersonaTalk creates lip-sync visual dubbing while preserving indivisuals' talking style and facial details.

Abstract

For audio-driven visual dubbing, it remains a considerable challenge to uphold and highlight speaker’s "persona" while synthesizing accurate lip synchronization. Existing methods fall short of capturing speaker’s unique speakingstyle or preserving facial details.

In this paper, we present PersonaTalk, an attention-based two-stage framework, including geometry construction and face rendering, for high-fidelity and personalized visual dubbing. In the first stage, we propose a style-aware audio encoding module that injects speaking style into audio features through a cross-attention layer. The stylized audio features are then used to drive speaker’s template geometry to obtain lip-synced geometries. In the second stage, a dual-attention face renderer is introduced to render textures for the target geometries. It consists of two parallel cross-attention layers, namely Lip-Attention and Face-Attention, which respectively sample textures from different reference frames to render the entire face. With our innovative design, intricate facial details can be well preserved. Comprehensive experiments and user studies demonstrate our advantages over other state-of-the-art methods in terms of visual quality, lip-sync accuracy and persona preservation. Furthermore, as a person-generic framework, PersonaTalk can achieve competitive performance as state-of-the-art person-specific methods.

Interpolate start reference image.

Schematic Illustration. Our proposed method is an attention-based two-stage framework consisting of style-aware geometry construction and dual-attention face rendering.

Qualitative Comparison

Comparing with Person-Agnostic Methods

Comparing with Person-Specific Methods

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Animation