DocumentCode
3696730
Title
Segmentation Based Features for Wide-Baseline Multi-view Reconstruction
Author
Armin Mustafa;Hansung Kim;Evren Imre;Adrian Hilton
Author_Institution
CVSSP, Univ. of Surrey, Guildford, UK
fYear
2015
Firstpage
282
Lastpage
290
Abstract
A common problem in wide-baseline stereo is the sparse and non-uniform distribution of correspondences when using conventional detectors such as SIFT, SURF, FAST and MSER. In this paper we introduce a novel segmentation based feature detector SFD that produces an increased number of ´good´ features for accurate wide-baseline reconstruction. Each image is segmented into regions by over-segmentation and feature points are detected at the intersection of the boundaries for three or more regions. Segmentation-based feature detection locates features at local maxima giving a relatively large number of feature points which are consistently detected across wide-baseline views and accurately localised. A comprehensive comparative performance evaluation with previous feature detection approaches demonstrates that: SFD produces a large number of features with increased scene coverage, detected features are consistent across wide-baseline views for images of a variety of indoor and outdoor scenes, and the number of wide-baseline matches is increased by an order of magnitude compared to alternative detector-descriptor combinations. Sparse scene reconstruction from multiple wide-baseline stereo views using the SFD feature detector demonstrates at least a factor six increase in the number of reconstructed points with reduced error distribution compared to SIFT when evaluated against ground-truth and similar computational cost to SURF/FAST.
Keywords
"Feature extraction","Image segmentation","Detectors","Image reconstruction","Three-dimensional displays","Cameras","Robustness"
Publisher
ieee
Conference_Titel
3D Vision (3DV), 2015 International Conference on
Type
conf
DOI
10.1109/3DV.2015.39
Filename
7335495
Link To Document