Title of article
Object Recognition as Many-to-Many Feature Matching
Author/Authors
M. FATIH DEMIRCI AND ALI SHOKOUFANDEH، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2006
Pages
20
From page
203
To page
222
Abstract
Object recognition can be formulated as matching image features to model features. When recognition is
exemplar-based, feature correspondence is one-to-one. However, segmentation errors, articulation, scale difference,
and within-class deformation can yield image and model features which don’t match one-to-one but rather many-tomany.
Adopting a graph-based representation of a set of features, we present a matching algorithm that establishes
many-to-many correspondences between the nodes of two noisy, vertex-labeled weighted graphs. Our approach
reduces the problem of many-to-many matching of weighted graphs to that of many-to-many matching of weighted
point sets in a normed vector space. This is accomplished by embedding the initial weighted graphs into a normed
vector space with lowdistortion using a novel embedding technique based on a spherical encoding of graph structure.
Many-to-many vector correspondences established by the Earth Mover’s Distance framework are mapped back into
many-to-many correspondences between graph nodes. Empirical evaluation of the algorithm on an extensive set of
recognition trials, including a comparison with two competing graph matching approaches, demonstrates both the
robustness and efficacy of the overall approach
Keywords
Object recognition , Earth Mover’s Distance (EMD) , graph embedding , Graph matching
Journal title
INTERNATIONAL JOURNAL OF COMPUTER VISION
Serial Year
2006
Journal title
INTERNATIONAL JOURNAL OF COMPUTER VISION
Record number
828213
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