CONSAC: Robust Multi-Model Fitting by Conditional Sample Consensus
About
We present a robust estimator for fitting multiple parametric models of the same form to noisy measurements. Applications include finding multiple vanishing points in man-made scenes, fitting planes to architectural imagery, or estimating multiple rigid motions within the same sequence. In contrast to previous works, which resorted to hand-crafted search strategies for multiple model detection, we learn the search strategy from data. A neural network conditioned on previously detected models guides a RANSAC estimator to different subsets of all measurements, thereby finding model instances one after another. We train our method supervised as well as self-supervised. For supervised training of the search strategy, we contribute a new dataset for vanishing point estimation. Leveraging this dataset, the proposed algorithm is superior with respect to other robust estimators as well as to designated vanishing point estimation algorithms. For self-supervised learning of the search, we evaluate the proposed algorithm on multi-homography estimation and demonstrate an accuracy that is superior to state-of-the-art methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Vanishing Point Detection | ScanNet (test) | AA@10°36 | 13 | |
| Vanishing Point Detection | NYU Depth (test) | AUC @10°69.89 | 11 | |
| Homography fitting | AdelaideRMF Homographies 19 scenes | Avg Misclassification Error5.2 | 10 | |
| Vanishing Point Detection | YUD 14 (test) | AA (3° Threshold)61.7 | 8 | |
| Vanishing Point Detection | SU3 70 (test) | Angle Accuracy (3°)0.863 | 8 | |
| Multi-instance 3D registration | Scan2CAD (test) | MHR2.66 | 8 | |
| Multi-instance 3D registration | Synthetic Data | MHR0.13 | 8 | |
| Vanishing Point Detection | YUD (test) | AA @ 10°84.4 | 5 | |
| Multi-instance Point Cloud Registration | ModelNet40 Synthetic (90%~99% Outlier Ratio) | MHR0.51 | 4 | |
| Multi-instance Point Cloud Registration | Synthetic ModelNet40 10%~50% Outlier Ratio | MHR (%)0.47 | 4 |