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Single View Metrology in the Wild

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arxiv 2007.09529 v3 pith:7SLOFJYM submitted 2020-07-18 cs.CV

Single View Metrology in the Wild

classification cs.CV
keywords camerascaleviewestimationheightsmetrologyobjectobjects
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Most 3D reconstruction methods may only recover scene properties up to a global scale ambiguity. We present a novel approach to single view metrology that can recover the absolute scale of a scene represented by 3D heights of objects or camera height above the ground as well as camera parameters of orientation and field of view, using just a monocular image acquired in unconstrained condition. Our method relies on data-driven priors learned by a deep network specifically designed to imbibe weakly supervised constraints from the interplay of the unknown camera with 3D entities such as object heights, through estimation of bounding box projections. We leverage categorical priors for objects such as humans or cars that commonly occur in natural images, as references for scale estimation. We demonstrate state-of-the-art qualitative and quantitative results on several datasets as well as applications including virtual object insertion. Furthermore, the perceptual quality of our outputs is validated by a user study.

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