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arxiv 2210.01548 v1 pith:H3LQ6SNV submitted 2022-10-02 cs.CV

Neural Implicit Surface Reconstruction from Noisy Camera Observations

classification cs.CV
keywords cameranoisyparameterssurfacelearningneuralobjectsobservations
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Representing 3D objects and scenes with neural radiance fields has become very popular over the last years. Recently, surface-based representations have been proposed, that allow to reconstruct 3D objects from simple photographs. However, most current techniques require an accurate camera calibration, i.e. camera parameters corresponding to each image, which is often a difficult task to do in real-life situations. To this end, we propose a method for learning 3D surfaces from noisy camera parameters. We show that we can learn camera parameters together with learning the surface representation, and demonstrate good quality 3D surface reconstruction even with noisy camera observations.

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