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CVPR
2007
IEEE

Compositional Boosting for Computing Hierarchical Image Structures

14 years 6 months ago
Compositional Boosting for Computing Hierarchical Image Structures
In this paper, we present a compositional boosting algorithm for detecting and recognizing 17 common image structures in low-middle level vision tasks. These structures, called "graphlets", are the most frequently occurring primitives, junctions and composite junctions in natural images, and are arranged in a 3-layer And-Or graph representation. In this hierarchic model, larger graphlets are decomposed (in And-nodes) into smaller graphlets in multiple alternative ways (at Or-nodes), and parts are shared and re-used between graphlets. Then we present a compositional boosting algorithm for computing the 17 graphlets categories collectively in the Bayesian framework. The algorithm runs recursively for each node A in the And-Or graph and iterates between two steps ? bottom-up proposal and top-down validation. The bottom-up step includes two types of boosting methods. (i) Detecting instances of A (often in low resolutions) using Adaboost method through a sequence of tests (weak c...
Tianfu Wu, Gui-Song Xia, Song Chun Zhu
Added 12 Oct 2009
Updated 12 Oct 2009
Type Conference
Year 2007
Where CVPR
Authors Tianfu Wu, Gui-Song Xia, Song Chun Zhu
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