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Progressive-X: Efficient, Anytime, Multi-Model Fitting Algorithm

About

The Progressive-X algorithm, Prog-X in short, is proposed for geometric multi-model fitting. The method interleaves sampling and consolidation of the current data interpretation via repetitive hypothesis proposal, fast rejection, and integration of the new hypothesis into the kept instance set by labeling energy minimization. Due to exploring the data progressively, the method has several beneficial properties compared with the state-of-the-art. First, a clear criterion, adopted from RANSAC, controls the termination and stops the algorithm when the probability of finding a new model with a reasonable number of inliers falls below a threshold. Second, Prog-X is an any-time algorithm. Thus, whenever is interrupted, e.g. due to a time limit, the returned instances cover real and, likely, the most dominant ones. The method is superior to the state-of-the-art in terms of accuracy in both synthetic experiments and on publicly available real-world datasets for homography, two-view motion, and motion segmentation.

Daniel Barath, Jiri Matas• 2019

Related benchmarks

TaskDatasetResultRank
Homography fittingAdelaideRMF Homographies 19 scenes
Avg Misclassification Error6.6
10
Two-view motion fittingAdelaideRMF Two-view motions 19 scenes
Avg. Misclassification Error10.7
9
Multi-instance 3D registrationScan2CAD (test)
MHR11.58
8
Trajectory Estimation via Line Segment DetectionTbD-3D Challenging 50
Avg Error (px)3.74
8
Motion SegmentationHopkins Motions 155 scenes
Avg Misclassification Error8.4
8
Multi-instance 3D registrationSynthetic Data
MHR15.9
8
Trajectory Estimation via Line Segment DetectionTbD Easy 30
Average Error (px)1.87
8
Multi-instance Point Cloud RegistrationSynthetic ModelNet40 10%~50% Outlier Ratio
MHR (%)27.91
4
Multi-instance Point Cloud RegistrationSynthetic ModelNet40 50%~70% Outlier Ratio
MHR20.6
4
Multi-instance Point Cloud RegistrationSynthetic ModelNet40 (70%~90% Outlier Ratio)
MHR0.1288
4
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