Multi-modal constraint propagation for heterogeneous image clustering
0202 electrical engineering, electronic engineering, information engineering
02 engineering and technology
DOI:
10.1145/2072298.2072318
Publication Date:
2011-12-05T12:50:15Z
AUTHORS (4)
ABSTRACT
This paper presents a multi-modal constraint propagation approach to exploiting pairwise constraints for constrained clustering tasks on multi-modal datasets. Pairwise constraint propagation methods have previously been designed primarily for single modality data and cannot be directly applied to multi-modal data or a dataset with multiple representations. In this paper, we provide an effective solution to the multi-modal constraint propagation problem by decomposing it into a set of independent multi-graph based two-class label propagation subproblems which are then merged into a unified problem and solved by quadratic optimization. We also show that such a formulation yields a closed-form solution. Our approach allows the initial pairwise constraints to be propagated throughout the entire multi-modal dataset. The propagated constraints are further used to refine the similarities between the objects for subsequent clustering tasks. The proposed method has been tested in constrained clustering tasks on two real-life multi-modal image datasets and shown to achieve significant improvements with respect to the single modality methods.
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