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arxiv 2211.12368 v1 pith:7353FRLU submitted 2022-11-22 cs.CV

Real-time Neural Radiance Talking Portrait Synthesis via Audio-spatial Decomposition

classification cs.CV
keywords talkinggridportraitaudio-spatialdynamicefficientmodulenerf
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While dynamic Neural Radiance Fields (NeRF) have shown success in high-fidelity 3D modeling of talking portraits, the slow training and inference speed severely obstruct their potential usage. In this paper, we propose an efficient NeRF-based framework that enables real-time synthesizing of talking portraits and faster convergence by leveraging the recent success of grid-based NeRF. Our key insight is to decompose the inherently high-dimensional talking portrait representation into three low-dimensional feature grids. Specifically, a Decomposed Audio-spatial Encoding Module models the dynamic head with a 3D spatial grid and a 2D audio grid. The torso is handled with another 2D grid in a lightweight Pseudo-3D Deformable Module. Both modules focus on efficiency under the premise of good rendering quality. Extensive experiments demonstrate that our method can generate realistic and audio-lips synchronized talking portrait videos, while also being highly efficient compared to previous methods.

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