11469

REMODE: Probabilistic, Monocular Dense Reconstruction in Real Time

Matia Pizzoli, Christian Forster, Davide Scaramuzza
Robotics and Perception Group, University of Zurich, Switzerland
IEEE International Conference on Robotics and Automation (ICRA), 2014

@article{pizzoli2014remode,

   title={REMODE: Probabilistic, Monocular Dense Reconstruction in Real Time},

   author={Pizzoli, Matia and Forster, Christian and Scaramuzza, Davide},

   year={2014}

}

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In this paper, we solve the problem of estimating dense and accurate depth maps from a single moving camera. A probabilistic depth measurement is carried out in real time on a per-pixel basis and the computed uncertainty is used to reject erroneous estimations and provide live feedback on the reconstruction progress. Our contribution is a novel approach to depth map computation that combines Bayesian estimation and recent development on convex optimization for image processing. We demonstrate that our method outperforms state-of-the-art techniques in terms of accuracy, while exhibiting high efficiency in memory usage and computing power. We call our approach REMODE (REgularized MOnocular Depth Estimation). Our CUDA-based implementation runs at 30Hz on a laptop computer and is released as open-source software.
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