1 research outputs found
DynaMoN: Motion-Aware Fast And Robust Camera Localization for Dynamic NeRF
Dynamic reconstruction with neural radiance fields (NeRF) requires accurate
camera poses. These are often hard to retrieve with existing
structure-from-motion (SfM) pipelines as both camera and scene content can
change. We propose DynaMoN that leverages simultaneous localization and mapping
(SLAM) jointly with motion masking to handle dynamic scene content. Our robust
SLAM-based tracking module significantly accelerates the training process of
the dynamic NeRF while improving the quality of synthesized views at the same
time. Extensive experimental validation on TUM RGB-D, BONN RGB-D Dynamic and
the DyCheck's iPhone dataset, three real-world datasets, shows the advantages
of DynaMoN both for camera pose estimation and novel view synthesis.Comment: 6 pages, 4 figure