Casual Indoor HDR Radiance Capture from Omnidirectional Images
We present PanoHDR-NeRF, a neural representation of the full HDR radiance field of an indoor scene, and a pipeline to capture it casually, without elaborate setups or complex capture protocols. First, a user captures a low dynamic range (LDR) omnidirectional video of the scene by freely waving an of...
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Main Authors | , , , , |
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Format | Journal Article |
Language | English |
Published |
16.08.2022
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Subjects | |
Online Access | Get full text |
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Summary: | We present PanoHDR-NeRF, a neural representation of the full HDR radiance
field of an indoor scene, and a pipeline to capture it casually, without
elaborate setups or complex capture protocols. First, a user captures a low
dynamic range (LDR) omnidirectional video of the scene by freely waving an
off-the-shelf camera around the scene. Then, an LDR2HDR network uplifts the
captured LDR frames to HDR, which are used to train a tailored NeRF++ model.
The resulting PanoHDR-NeRF can render full HDR images from any location of the
scene. Through experiments on a novel test dataset of real scenes with the
ground truth HDR radiance captured at locations not seen during training, we
show that PanoHDR-NeRF predicts plausible HDR radiance from any scene point. We
also show that the predicted radiance can synthesize correct lighting effects,
enabling the augmentation of indoor scenes with synthetic objects that are lit
correctly. Datasets and code are available at
https://lvsn.github.io/PanoHDR-NeRF/. |
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DOI: | 10.48550/arxiv.2208.07903 |