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📄 Abstract
Abstract: Rendering novel, relit views of a human head, given a monocular portrait
image as input, is an inherently underconstrained problem. The traditional
graphics solution is to explicitly decompose the input image into geometry,
material and lighting via differentiable rendering; but this is constrained by
the multiple assumptions and approximations of the underlying models and
parameterizations of these scene components. We propose 3DPR, an image-based
relighting model that leverages generative priors learnt from multi-view
One-Light-at-A-Time (OLAT) images captured in a light stage. We introduce a new
diverse and large-scale multi-view 4K OLAT dataset of 139 subjects to learn a
high-quality prior over the distribution of high-frequency face reflectance. We
leverage the latent space of a pre-trained generative head model that provides
a rich prior over face geometry learnt from in-the-wild image datasets. The
input portrait is first embedded in the latent manifold of such a model through
an encoder-based inversion process. Then a novel triplane-based reflectance
network trained on our lightstage data is used to synthesize high-fidelity OLAT
images to enable image-based relighting. Our reflectance network operates in
the latent space of the generative head model, crucially enabling a relatively
small number of lightstage images to train the reflectance model. Combining the
generated OLATs according to a given HDRI environment maps yields physically
accurate environmental relighting results. Through quantitative and qualitative
evaluations, we demonstrate that 3DPR outperforms previous methods,
particularly in preserving identity and in capturing lighting effects such as
specularities, self-shadows, and subsurface scattering. Project Page:
https://vcai.mpi-inf.mpg.de/projects/3dpr/
Authors (14)
Pramod Rao
Abhimitra Meka
Xilong Zhou
Gereon Fox
Mallikarjun B R
Fangneng Zhan
+8 more
Submitted
October 17, 2025
Key Contributions
3DPR is an image-based relighting model for single monocular portraits that leverages generative priors learned from multi-view OLAT images to accurately model face reflectance and geometry. It utilizes a new large-scale OLAT dataset and embeds the input portrait into the latent space of a pre-trained generative head model, overcoming limitations of traditional differentiable rendering approaches.
Business Value
Enables realistic relighting of portraits from single images, opening up possibilities for advanced photo editing, virtual try-on applications, and creating personalized avatars with dynamic lighting.