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SuperNCN: Neighbourhood consensus network for robust outdoor scenes matching

Authors :
Kurzejamski, Grzegorz
Komorowski, Jacek
Dabala, Lukasz
Czarnota, Konrad
Lynen, Simon
Trzcinski, Tomasz
Publication Year :
2019

Abstract

In this paper, we present a framework for computing dense keypoint correspondences between images under strong scene appearance changes. Traditional methods, based on nearest neighbour search in the feature descriptor space, perform poorly when environmental conditions vary, e.g. when images are taken at different times of the day or seasons. Our method improves finding keypoint correspondences in such difficult conditions. First, we use Neighbourhood Consensus Networks to build spatially consistent matching grid between two images at a coarse scale. Then, we apply Superpoint-like corner detector to achieve pixel-level accuracy. Both parts use features learned with domain adaptation to increase robustness against strong scene appearance variations. The framework has been tested on a RobotCar Seasons dataset, proving large improvement on pose estimation task under challenging environmental conditions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1912.04627
Document Type :
Working Paper