Dynamic OLAT Dataset (ShanghaiTech MARS Dynamic OLAT Dataset)

Introduced by Zhang et al. in Neural Video Portrait Relighting in Real-time via Consistency Modeling

To provide ground truth supervision for video consistency modeling, we build up a high-quality dynamic OLAT dataset. Our capture system consists of a light stage setup with 114 LED light sources and Phantom Flex4K-GS camera (global shutter, stationary 4K ultra-high-speed camera at 1000 fps), resulting in dynamic OLAT imageset recording at 25 fps using the overlapping method. Our dynamic OLAT dataset provides sufficient semantic, temporal and lighting consistency supervision to train our neural video portrait relighting scheme, which can generalize to in-the-wild scenarios.


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