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Fast and Accurate Camera Covariance Computation for Large 3D Reconstruction

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Estimating uncertainty of camera parameters computed in Structure from Motion (SfM) is an important tool for evaluating the quality of the reconstruction and guiding the reconstruction process. Yet, the quality of the estimated parameters of large reconstructions has been rarely evaluated due to the computational challenges. We present a new algorithm which employs the sparsity of the uncertainty propagation and speeds the computation up about ten times \wrt previous approaches. Our computation is accurate and does not use any approximations. We can compute uncertainties of thousands of cameras in tens of seconds on a standard PC. We also demonstrate that our approach can be effectively used for reconstructions of any size by applying it to smaller sub-reconstructions.

Michal Polic, Wolfgang F\"orstner, Tomas Pajdla• 2018

Related benchmarks

TaskDatasetResultRank
Uncertainty Estimation of 3D Point CloudsVaihingen
Pearson Coefficient0.206
6
Uncertainty Estimation of 3D Point CloudsUseGeo
Pearson Correlation Coefficient0.174
6
Uncertainty Estimation of 3D Point CloudsDortmund
Pearson Correlation Coefficient0.133
2
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