This paper proposes a rigid point set matching algorithm in arbitrary dimensions based on the idea of symmetric covariant function. A group of functions of the points in the set are formulated using rigid invariants. Each of these functions computes a pair of correspondence from the given point set. Then the computed correspondences are used to recover the unknown rigid transform parameters. Each computed point can be geometrically interpreted as the weighted mean center of the point set. The algorithm is compact, fast, and dimension free without any optimization process. It either computes the desired transform for noiseless data in linear time, or fails quickly in exceptional cases. Experimental results for synthetic data and 2D/3D real d...
In this paper we consider representation issues of rigid body transformations based on geometric pro...
Feature-based methods for non-rigid registration frequently encounter the correspondence problem. Re...
Two sets of points in d-dimensional space are given: a data set D consisting of N points, and a patt...
This paper describes a novel solution to the rigid point pattern matching problem in Euclidean space...
This paper describes a novel solution to the rigid point pattern matching problem in Euclidean space...
A fundamental problem that comes up in computer vision, image processing, manifold learning, and sen...
Non-rigid point set registration is a key component in many computer vision and pattern recognition ...
This paper presents a fast algorithm for robust registration of shapes implicitly represented by sig...
We present a Mean shift (MS) algorithm for solving the rigid point set transformation estimation [1...
• Point set registration –Goal: determining the correct correspondence and find the underlying spati...
This document explores the problem of the estimation of the rigid body transformation that minimizes...
This paper introduces two new methods of registering 2D point sets over rigid transformations when t...
AbstractMatching geometric objects with respect to their Hausdorff distance is a well investigated p...
As a fundamental problem in computer vision community, non-rigid point set registration is a challen...
This paper introduces a new method of registering point sets. The registration error is directly min...
In this paper we consider representation issues of rigid body transformations based on geometric pro...
Feature-based methods for non-rigid registration frequently encounter the correspondence problem. Re...
Two sets of points in d-dimensional space are given: a data set D consisting of N points, and a patt...
This paper describes a novel solution to the rigid point pattern matching problem in Euclidean space...
This paper describes a novel solution to the rigid point pattern matching problem in Euclidean space...
A fundamental problem that comes up in computer vision, image processing, manifold learning, and sen...
Non-rigid point set registration is a key component in many computer vision and pattern recognition ...
This paper presents a fast algorithm for robust registration of shapes implicitly represented by sig...
We present a Mean shift (MS) algorithm for solving the rigid point set transformation estimation [1...
• Point set registration –Goal: determining the correct correspondence and find the underlying spati...
This document explores the problem of the estimation of the rigid body transformation that minimizes...
This paper introduces two new methods of registering 2D point sets over rigid transformations when t...
AbstractMatching geometric objects with respect to their Hausdorff distance is a well investigated p...
As a fundamental problem in computer vision community, non-rigid point set registration is a challen...
This paper introduces a new method of registering point sets. The registration error is directly min...
In this paper we consider representation issues of rigid body transformations based on geometric pro...
Feature-based methods for non-rigid registration frequently encounter the correspondence problem. Re...
Two sets of points in d-dimensional space are given: a data set D consisting of N points, and a patt...