DocumentCode
1766428
Title
Associative Hierarchical Random Fields
Author
Ladicky, Lubor ; Russell, Craig ; Kohli, Pushmeet ; Torr, Philip H. S.
Author_Institution
Comput. Vision & Geometry Lab., ETH Zurich, Zürich, Switzerland
Volume
36
Issue
6
fYear
2014
fDate
41791
Firstpage
1056
Lastpage
1077
Abstract
This paper makes two contributions: the first is the proposal of a new model-The associative hierarchical random field (AHRF), and a novel algorithm for its optimization; the second is the application of this model to the problem of semantic segmentation. Most methods for semantic segmentation are formulated as a labeling problem for variables that might correspond to either pixels or segments such as super-pixels. It is well known that the generation of super pixel segmentations is not unique. This has motivated many researchers to use multiple super pixel segmentations for problems such as semantic segmentation or single view reconstruction. These super-pixels have not yet been combined in a principled manner, this is a difficult problem, as they may overlap, or be nested in such a way that the segmentations form a segmentation tree. Our new hierarchical random field model allows information from all of the multiple segmentations to contribute to a global energy. MAP inference in this model can be performed efficiently using powerful graph cut based move making algorithms. Our framework generalizes much of the previous work based on pixels or segments, and the resulting labelings can be viewed both as a detailed segmentation at the pixel level, or at the other extreme, as a segment selector that pieces together a solution like a jigsaw, selecting the best segments from different segmentations as pieces. We evaluate its performance on some of the most challenging data sets for object class segmentation, and show that this ability to perform inference using multiple overlapping segmentations leads to state-of-the-art results.
Keywords
image segmentation; optimisation; AHRF; MAP inference; associative hierarchical random fields; object class segmentation; optimization; segment selector; semantic segmentation; single view reconstruction; super pixel segmentations; Computational modeling; Computer vision; Context; Context modeling; Image segmentation; Labeling; Semantics; Conditional Random Fields; Conditional random fields; Discrete Energy Minimisation; Object Recognition; Segmentation; discrete energy minimisation; object recognition and segmentation;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2013.165
Filename
6587713
Link To Document