Cafca: High-quality Novel View Synthesis of Expressive Faces from Casual Few-shot Captures
Volumetric modeling and neural radiance field representations have revolutionized 3D face capture and photorealistic novel view synthesis. However, these methods often require hundreds of multi-view input images and are thus inapplicable to cases with less than a handful of inputs. We present a nove...
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Zusammenfassung: | Volumetric modeling and neural radiance field representations have
revolutionized 3D face capture and photorealistic novel view synthesis.
However, these methods often require hundreds of multi-view input images and
are thus inapplicable to cases with less than a handful of inputs. We present a
novel volumetric prior on human faces that allows for high-fidelity expressive
face modeling from as few as three input views captured in the wild. Our key
insight is that an implicit prior trained on synthetic data alone can
generalize to extremely challenging real-world identities and expressions and
render novel views with fine idiosyncratic details like wrinkles and eyelashes.
We leverage a 3D Morphable Face Model to synthesize a large training set,
rendering each identity with different expressions, hair, clothing, and other
assets. We then train a conditional Neural Radiance Field prior on this
synthetic dataset and, at inference time, fine-tune the model on a very sparse
set of real images of a single subject. On average, the fine-tuning requires
only three inputs to cross the synthetic-to-real domain gap. The resulting
personalized 3D model reconstructs strong idiosyncratic facial expressions and
outperforms the state-of-the-art in high-quality novel view synthesis of faces
from sparse inputs in terms of perceptual and photo-metric quality. |
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DOI: | 10.48550/arxiv.2410.00630 |