Title
A census-based stereo vision algorithm using modified Semi-Global Matching and plane fitting to improve matching quality
Abstract
This paper introduces a new segmentation-based approach for disparity optimization in stereo vision. The main contribution is a significant enhancement of the matching quality at occlusions and textureless areas by segmenting either the left color image or the calculated texture image. The local cost calculation is done with a Census-based correlation method and is compared with standard sum of absolute differences. The confidence of a match is measured and only non-confident or non-textured pixels are estimated by calculating a disparity plane for the corresponding segment. The quality of the local optimized matches is increased by a modified Semi-Global Matching (SGM) step with subpixel accuracy. In contrast to standard SGM, not the whole image is used for disparity optimization but horizontal stripes of the image. It is shown that this modification significantly reduces the memory consumption by nearly constant matching quality and thus enables embedded realization. Using the Middlebury ranking as evaluation criterion, it is shown that the proposed algorithm performs well in comparison to the pure Census correlation. It reaches a top ten rank if subpixel accuracy is supposed. Furthermore, the matching quality of the algorithm, especially of the texture-based plane fitting, is shown on two real-world scenes where a significant enhancement could be achieved.
Year
DOI
Venue
2010
10.1109/CVPRW.2010.5543769
CVPR Workshops
Field
DocType
Volume
Template matching,Computer science,Stereopsis,Image segmentation,Artificial intelligence,Subpixel rendering,Color image,Computer vision,Pattern recognition,Image texture,Algorithm,Pixel,Sum of absolute differences
Conference
2010
Issue
ISSN
Citations 
1
2160-7508
27
PageRank 
References 
Authors
1.01
14
3
Name
Order
Citations
PageRank
Martin Humenberger121715.74
T. Engelke2271.01
Wilfried Kubinger326319.55