CVAIDec 15, 2022

Relightable Neural Human Assets from Multi-view Gradient Illuminations

U of Toronto
arXiv:2212.07648v322 citationsh-index: 57
Originality Synthesis-oriented
AI Analysis

This dataset addresses a gap for researchers in computer vision and graphics by providing resources for both human modeling and relighting, though it is incremental as it builds on existing neural representation methods.

The authors tackled the lack of datasets for human modeling and relighting by introducing UltraStage, a dataset of over 2,000 human assets captured under multi-view and multi-illumination settings, which enables high-quality neural representations for novel view synthesis and improves single image relighting tasks with realistic rendering gains.

Human modeling and relighting are two fundamental problems in computer vision and graphics, where high-quality datasets can largely facilitate related research. However, most existing human datasets only provide multi-view human images captured under the same illumination. Although valuable for modeling tasks, they are not readily used in relighting problems. To promote research in both fields, in this paper, we present UltraStage, a new 3D human dataset that contains more than 2,000 high-quality human assets captured under both multi-view and multi-illumination settings. Specifically, for each example, we provide 32 surrounding views illuminated with one white light and two gradient illuminations. In addition to regular multi-view images, gradient illuminations help recover detailed surface normal and spatially-varying material maps, enabling various relighting applications. Inspired by recent advances in neural representation, we further interpret each example into a neural human asset which allows novel view synthesis under arbitrary lighting conditions. We show our neural human assets can achieve extremely high capture performance and are capable of representing fine details such as facial wrinkles and cloth folds. We also validate UltraStage in single image relighting tasks, training neural networks with virtual relighted data from neural assets and demonstrating realistic rendering improvements over prior arts. UltraStage will be publicly available to the community to stimulate significant future developments in various human modeling and rendering tasks. The dataset is available at https://miaoing.github.io/RNHA.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes