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On the Existence of Two View Chiral Reconstructions

2020-11-14 02:27:20
Andrew Pryhuber, Rainer Sinn, Rekha R. Thomas

Abstract

A fundamental question in computer vision is whether a set of point pairs is the image of a scene that lies in front of two cameras. Such a scene and the cameras together are known as a chiral reconstruction of the point pairs. In this paper we provide a complete classification of k point pairs for which a chiral reconstruction exists. The existence of chiral reconstructions is equivalent to the non-emptiness of certain semialgebraic sets. For up to three point pairs, we prove that a chiral reconstruction always exists while the set of five or more point pairs that do not have a chiral reconstruction is Zariski-dense. We show that for five generic point pairs, the chiral region is bounded by line segments in a Schläfli double six on a cubic surface with 27 real lines. Four point pairs have a chiral reconstruction unless they belong to two non-generic combinatorial types, in which case they may or may not.

Abstract (translated)

URL

https://arxiv.org/abs/2011.07197

PDF

https://arxiv.org/pdf/2011.07197.pdf


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