We present an efficient spectral method for finding consistent correspondences between two sets of features. We build the adjacency matrix M of a graph whose nodes represent the potential correspondences and the weights on the links represent pairwise agreements between potential correspondences. Correct assignments are likely to establish links among each other and thus form a strongly connected cluster. Incorrect correspondences establish links with the other correspondences only accidentally, so they are unlikely to belong to strongly connected clusters. We recover the correct assignments based on how strongly they belong to the main cluster of M, by using the principal eigenvector ofM and imposing the mapping constraints required by the...
We propose a novel framework for constrained spectral clustering with pairwise constraints which spe...
Abstract—Existing methods for surface matching are limited by the trade-off between precision and co...
With the rise and advent of graph learning techniques, graph data has become ubiquitous. However, wh...
We present an efficient spectral method for finding consistent correspondences between two sets of f...
This project presents an innovative way of solving the inexact graph matching problem of weighted gr...
This paper describes a hierarchical spectral method for the correspondence matching of point-sets. C...
The modal correspondence method of Shapiro and Brady aims to match point-sets by comparing the eigen...
Correspondence problems are of great importance in computer vision. They appear as subtasks in many ...
In this paper we propose a novel solution to the multi-view matching problem that, given a set of no...
In this paper, we consider the weighted graph matching problem. Recently, approaches to this problem...
AbstractThe problem of finding correspondences is considered in the article. The main objective of t...
This paper presents a spectral correspondence method for fingerprint matching. Minutia matching is f...
Spectral matching (SM) is an efficient and effective greedy algorithm for solving the graph matching...
This paper addresses the problem of establishing point correspondences between two object instances ...
Network alignment refers to the problem of finding a bijective mapping across vertices of two or mor...
We propose a novel framework for constrained spectral clustering with pairwise constraints which spe...
Abstract—Existing methods for surface matching are limited by the trade-off between precision and co...
With the rise and advent of graph learning techniques, graph data has become ubiquitous. However, wh...
We present an efficient spectral method for finding consistent correspondences between two sets of f...
This project presents an innovative way of solving the inexact graph matching problem of weighted gr...
This paper describes a hierarchical spectral method for the correspondence matching of point-sets. C...
The modal correspondence method of Shapiro and Brady aims to match point-sets by comparing the eigen...
Correspondence problems are of great importance in computer vision. They appear as subtasks in many ...
In this paper we propose a novel solution to the multi-view matching problem that, given a set of no...
In this paper, we consider the weighted graph matching problem. Recently, approaches to this problem...
AbstractThe problem of finding correspondences is considered in the article. The main objective of t...
This paper presents a spectral correspondence method for fingerprint matching. Minutia matching is f...
Spectral matching (SM) is an efficient and effective greedy algorithm for solving the graph matching...
This paper addresses the problem of establishing point correspondences between two object instances ...
Network alignment refers to the problem of finding a bijective mapping across vertices of two or mor...
We propose a novel framework for constrained spectral clustering with pairwise constraints which spe...
Abstract—Existing methods for surface matching are limited by the trade-off between precision and co...
With the rise and advent of graph learning techniques, graph data has become ubiquitous. However, wh...