Finding correspondences between two related feature point sets is a basic task in computer vision and pattern recognition. In this paper, we present a novel method for point pattern matching via spectral graph analysis. In particular, we aim to render the spectral matching algorithm more robust for positional jitter and outlier. A local structural descriptor, namely the spectral context, is proposed to describe the attribute domain of point sets, which is fundamentally different from the previous methods. Furthermore, the approximate distance order is defined and employed as the metric for geometric consistency of neighboring points in this work. By combining these two novel ingredients, we formulate feature point set matching as an optimiz...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
In this paper, we consider the weighted graph matching problem. Recently, approaches to this problem...
Matching feature points from image pairs with significant visual changes and repetitive patterns rem...
Spectral methods have been extensively studied for point pattern matching. In this work, we aim to r...
Spectral methods have been extensively studied for point pattern matching. In this work, we aim to r...
This paper investigates graph spectral approaches to the problem of point pattern matching. Specific...
This paper investigates graph spectral approaches to the problem of point pattern matching. Specific...
We present a unified framework for modeling and solving invariant point pattern matching problems. I...
Spectral matching (SM) is an efficient and effective greedy algorithm for solving the graph matching...
AbstractIn order to obtain a large number of correct matches with high accuracy, this article propos...
This paper describes a hierarchical spectral method for the correspondence matching of point-sets. C...
Abstract—Feature detection and matching are essential parts in most computer vision applications. Ma...
Feature point matching aims to automatically establish point-to-point correspondences between two im...
Brief project description. One of the most difficult problems in computer vision is the problem of m...
Reliably matching feature points is an important part of many computer vision applications. This tas...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
In this paper, we consider the weighted graph matching problem. Recently, approaches to this problem...
Matching feature points from image pairs with significant visual changes and repetitive patterns rem...
Spectral methods have been extensively studied for point pattern matching. In this work, we aim to r...
Spectral methods have been extensively studied for point pattern matching. In this work, we aim to r...
This paper investigates graph spectral approaches to the problem of point pattern matching. Specific...
This paper investigates graph spectral approaches to the problem of point pattern matching. Specific...
We present a unified framework for modeling and solving invariant point pattern matching problems. I...
Spectral matching (SM) is an efficient and effective greedy algorithm for solving the graph matching...
AbstractIn order to obtain a large number of correct matches with high accuracy, this article propos...
This paper describes a hierarchical spectral method for the correspondence matching of point-sets. C...
Abstract—Feature detection and matching are essential parts in most computer vision applications. Ma...
Feature point matching aims to automatically establish point-to-point correspondences between two im...
Brief project description. One of the most difficult problems in computer vision is the problem of m...
Reliably matching feature points is an important part of many computer vision applications. This tas...
International audienceWe tackle the problem of finding accurate and robust keypoint correspondences ...
In this paper, we consider the weighted graph matching problem. Recently, approaches to this problem...
Matching feature points from image pairs with significant visual changes and repetitive patterns rem...