Dynamic EventNeRF: Reconstructing General Dynamic Scenes from Multi-view Event Cameras
- URL: http://arxiv.org/abs/2412.06770v1
- Date: Mon, 09 Dec 2024 18:56:18 GMT
- Title: Dynamic EventNeRF: Reconstructing General Dynamic Scenes from Multi-view Event Cameras
- Authors: Viktor Rudnev, Gereon Fox, Mohamed Elgharib, Christian Theobalt, Vladislav Golyanik,
- Abstract summary: Volumetric reconstruction of dynamic scenes is an important problem in computer vision.
It is especially challenging in poor lighting and with fast motion.
We propose the first method totemporally reconstruct a scene from sparse multi-view event streams and sparse RGB frames.
- Score: 69.65147723239153
- License:
- Abstract: Volumetric reconstruction of dynamic scenes is an important problem in computer vision. It is especially challenging in poor lighting and with fast motion. It is partly due to the limitations of RGB cameras: To capture fast motion without much blur, the framerate must be increased, which in turn requires more lighting. In contrast, event cameras, which record changes in pixel brightness asynchronously, are much less dependent on lighting, making them more suitable for recording fast motion. We hence propose the first method to spatiotemporally reconstruct a scene from sparse multi-view event streams and sparse RGB frames. We train a sequence of cross-faded time-conditioned NeRF models, one per short recording segment. The individual segments are supervised with a set of event- and RGB-based losses and sparse-view regularisation. We assemble a real-world multi-view camera rig with six static event cameras around the object and record a benchmark multi-view event stream dataset of challenging motions. Our work outperforms RGB-based baselines, producing state-of-the-art results, and opens up the topic of multi-view event-based reconstruction as a new path for fast scene capture beyond RGB cameras. The code and the data will be released soon at https://4dqv.mpi-inf.mpg.de/DynEventNeRF/
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