DocumentCode
112943
Title
PM-PM: PatchMatch With Potts Model for Object Segmentation and Stereo Matching
Author
Shibiao Xu ; Feihu Zhang ; Xiaofei He ; Xukun Shen ; Xiaopeng Zhang
Author_Institution
State Key Lab. of Virtual Reality Technol. & Syst., Beihang Univ., Beijing, China
Volume
24
Issue
7
fYear
2015
fDate
Jul-15
Firstpage
2182
Lastpage
2196
Abstract
This paper presents a unified variational formulation for joint object segmentation and stereo matching, which takes both accuracy and efficiency into account. In our approach, depth-map consists of compact objects, each object is represented through three different aspects: the perimeter in image space; the slanted object depth plane; and the planar bias, which is to add an additional level of detail on top of each object plane in order to model depth variations within an object. Compared with traditional high quality solving methods in low level, we use a convex formulation of the multilabel Potts Model with PatchMatch stereo techniques to generate depth-map at each image in object level and show that accurate multiple view reconstruction can be achieved with our formulation by means of induced homography without discretization or staircasing artifacts. Our model is formulated as an energy minimization that is optimized via a fast primal-dual algorithm, which can handle several hundred object depth segments efficiently. Performance evaluations in the Middlebury benchmark data sets show that our method outperforms the traditional integer-valued disparity strategy as well as the original PatchMatch algorithm and its variants in subpixel accurate disparity estimation. The proposed algorithm is also evaluated and shown to produce consistently good results for various real-world data sets (KITTI benchmark data sets and multiview benchmark data sets).
Keywords
Potts model; convex programming; image matching; image reconstruction; image segmentation; integer programming; stereo image processing; KITTI benchmark data set; Middlebury benchmark data set; PM-PM; PatchMatch stereo technique; convex formulation; depth-map generation; energy minimization; high quality solving method; induced homography; integer-valued disparity strategy; multilabel Potts Model; multiple view reconstruction; multiview benchmark data set; object segmentation; primal-dual algorithm; stereo matching; subpixel accurate disparity estimation; unified variational formulation; Accuracy; Computational modeling; Estimation; Image reconstruction; Image segmentation; Object segmentation; Stereo vision; Object segmentation; PatchMatch; Potts model; multiple view reconstruction; object segmentation; patchmatch; potts model; stereo matching;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2015.2416654
Filename
7067378
Link To Document