Learning a Depth Covariance Function
About
We propose learning a depth covariance function with applications to geometric vision tasks. Given RGB images as input, the covariance function can be flexibly used to define priors over depth functions, predictive distributions given observations, and methods for active point selection. We leverage these techniques for a selection of downstream tasks: depth completion, bundle adjustment, and monocular dense visual odometry.
Eric Dexheimer, Andrew J. Davison• 2023
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Depth Completion | NYU-depth-v2 official (test) | RMSE0.193 | 187 | |
| Depth Completion | NYU v2 (val) | RMSE0.157 | 41 | |
| Camera pose estimation | TUM freiburg1 | Rotation Error0.052 | 34 | |
| Visual Odometry | TUM-RGBD | freiburg1/xyz Error5.6 | 34 |
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