Vanishing point detection in urban scenes using point alignments

Lezama, José - Randall, Gregory - Grompone von Gioi, Rafael

Resumen:

We present a method for the automatic detection of vanishing points in urban scenes based on nding point alignments in a dual space, where converging lines in the image are mapped to aligned points. To compute this mapping the recently introduced PClines transformation is used. A robust point alignment detector is run to detect clusters of aligned points in the dual space. Finally, a post-processing step discriminates relevant from spurious vanishing point detections with two options: using a simple hypothesis of three orthogonal vanishing points (Manhattan-world) or the hypothesis that one vertical and multiple horizontal vanishing points exist. Qualitative and quantitative experimental results are shown. On two public standard datasets, the method achieves state-of-the-art performances. Finally, an optional procedure for accelerating the method is presented.


Detalles Bibliográficos
2017
Vanishing points
Manhattan world
PClines
A contrario
Point alignments
Procesamiento de Señales
Inglés
Universidad de la República
COLIBRI
https://hdl.handle.net/20.500.12008/43515
https://doi.org/10.5201/ipol.2017.148
Acceso abierto
Licencia Creative Commons Atribución – Compartir Igual (CC - By-SA)
Resumen:
Sumario:We present a method for the automatic detection of vanishing points in urban scenes based on nding point alignments in a dual space, where converging lines in the image are mapped to aligned points. To compute this mapping the recently introduced PClines transformation is used. A robust point alignment detector is run to detect clusters of aligned points in the dual space. Finally, a post-processing step discriminates relevant from spurious vanishing point detections with two options: using a simple hypothesis of three orthogonal vanishing points (Manhattan-world) or the hypothesis that one vertical and multiple horizontal vanishing points exist. Qualitative and quantitative experimental results are shown. On two public standard datasets, the method achieves state-of-the-art performances. Finally, an optional procedure for accelerating the method is presented.