Publication | Open Access
Semi-supervised Deep Large-Baseline Homography Estimation with Progressive Equivalence Constraint
16
Citations
28
References
2023
Year
Scene AnalysisMachine VisionImage AnalysisMachine LearningData SciencePattern RecognitionProgressive Equivalence ConstraintHomography EstimationLow Image OverlayEngineeringScene UnderstandingScene InterpretationComputational ImagingHuman Image SynthesisInitial HomographyDeep LearningScene ModelingComputer Vision
Homography estimation is erroneous in the case of large-baseline due to the low image overlay and limited receptive field. To address it, we propose a progressive estimation strategy by converting large-baseline homography into multiple intermediate ones, cumulatively multiplying these intermediate items can reconstruct the initial homography. Meanwhile, a semi-supervised homography identity loss, which consists of two components: a supervised objective and an unsupervised objective, is introduced. The first supervised loss is acting to optimize intermediate homographies, while the second unsupervised one helps to estimate a large-baseline homography without photometric losses. To validate our method, we propose a large-scale dataset that covers regular and challenging scenes. Experiments show that our method achieves state-of-the-art performance in large-baseline scenes while keeping competitive performance in small-baseline scenes. Code and dataset are available at https://github.com/megvii-research/LBHomo.
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