Single-View Reconstruction of a Manhattan World from Line Segments
Single-View Reconstruction of a Manhattan World from Line Segments
Citations

WEB OF SCIENCE

0
Citations

SCOPUS

0

초록

Single-view reconstruction (SVR) is a fundamental method in computer vision. Often used for reconstructing human-made environments, the Manhattan world assumption presumes that planes in the real world exist in mutually orthogonal directions. Accordingly, this paper addresses an automatic SVR algorithm for Manhattan worlds. A method for estimating the directions of planes using graph-cut optimization is proposed. After segmenting an image from extracted line segments, the data cost function and smoothness cost function for graph-cut optimization are defined by considering the directions of the line segments and neighborhood segments. Furthermore, segments with the same depths are grouped during a depth-estimation step using a minimum spanning tree algorithm with the proposed weights. Experimental results demonstrate that, unlike previous methods, the proposed method can identify complex Manhattan structures of indoor and outdoor scenes and provide the exact boundaries and intersections of planes.

키워드

single-view reconstruction3D reconstructionManhattan worldline segment detection
제목
Single-View Reconstruction of a Manhattan World from Line Segments
제목 (타언어)
Single-View Reconstruction of a Manhattan World from Line Segments
저자
이수원서용호
DOI
10.7236/IJASC.2022.11.1.1
발행일
2022-03
저널명
The International Journal of Advanced Smart Convergence
11
1
페이지
1 ~ 10