Relative pose of three calibrated and partially calibrated cameras from four points using virtual correspondences
- URL: http://arxiv.org/abs/2303.16078v3
- Date: Tue, 08 Oct 2024 13:16:55 GMT
- Title: Relative pose of three calibrated and partially calibrated cameras from four points using virtual correspondences
- Authors: Charalambos Tzamos, Viktor Kocur, Daniel Barath, Zuzana Berger Haladova, Torsten Sattler, Zuzana Kukelova,
- Abstract summary: We study challenging problems of estimating the relative pose of three cameras.
Our solutions are based on the simple idea of generating one or two additional virtual point correspondences in two views.
- Score: 56.44647186049448
- License:
- Abstract: We study challenging problems of estimating the relative pose of three cameras and propose novel efficient solutions to the configurations (1) of four points in three calibrated cameras (the 4p3v problem), and (2) of four points in three cameras with unknown shared focal length (the 4p3vf problem). Our solutions are based on the simple idea of generating one or two additional virtual point correspondences in two views by using the information from the locations of the input correspondences. We generate such correspondences using a very simple and efficient strategy, where the new points are the mean points of three corresponding input points. The new solvers are efficient and easy to implement, since they are based on existing efficient minimal solvers, i.e., the well-known 5-point and 6-point relative pose solvers and the P3P solver. Extensive experiments on real data show that our solvers achieve state-of-the-art results. We also present a simple network that can improve the precision of the mean-point correspondences, showing the potential to learn better virtual point correspondences.
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