2020
DOI: 10.48550/arxiv.2008.06630
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Neural Ray Surfaces for Self-Supervised Learning of Depth and Ego-motion

Abstract: Self-supervised learning has emerged as a powerful tool for depth and ego-motion estimation, leading to state-ofthe-art results on benchmark datasets. However, one significant limitation shared by current methods is the assumption of a known parametric camera model -usually the standard pinhole geometry -leading to failure when applied to imaging systems that deviate significantly from this assumption (e.g., catadioptric cameras or underwater imaging). In this work, we show that self-supervision can be used to… Show more

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