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arxiv 2212.03239 v2 pith:MDFWPDS7 submitted 2022-12-06 cs.CV

Perspective Fields for Single Image Camera Calibration

classification cs.CV
keywords perspectivecamerafieldsimagecalibrationapplicationsrepresentationadvantages
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Geometric camera calibration is often required for applications that understand the perspective of the image. We propose perspective fields as a representation that models the local perspective properties of an image. Perspective Fields contain per-pixel information about the camera view, parameterized as an up vector and a latitude value. This representation has a number of advantages as it makes minimal assumptions about the camera model and is invariant or equivariant to common image editing operations like cropping, warping, and rotation. It is also more interpretable and aligned with human perception. We train a neural network to predict Perspective Fields and the predicted Perspective Fields can be converted to calibration parameters easily. We demonstrate the robustness of our approach under various scenarios compared with camera calibration-based methods and show example applications in image compositing.

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Cited by 1 Pith paper

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