Feature extraction and matching (FEM) for 3D shapes finds numerous applications in computer graphics and vision for object modeling, retrieval, morphing, and recognition. However, unavoidable incorrect matches lead to inaccurate estimation of the transformation relating different datasets. Inspired by AdaBoost, this paper proposes a novel iterative re-weighting method to tackle the challenging problem of evaluating point matches established by typical FEM methods. Weights are used to indicate the degree of belief that each point match is correct. Our method has three key steps: (i) estimation of the underlying transformation using weighted least squares, (ii) penalty parameter estimation via minimization of the weighted variance of the matc...
egistration is the problem of bringing together two or more 3D shapes, either of the same object or ...
The iterative closest point algorithm is one of the most effi-cient algorithms for robust rigid regi...
We present an algorithm for shape matching and recognition based on a generative model for how one s...
Feature extraction and matching (FEM) for 3D shapes finds numerous applications in computer graphics...
Feature extraction and matching (FEM) for 3D shapes finds numerous applications in computer graphics...
Feature extraction and matching (FEM) has been widely used for the registration of partially overlap...
Feature extraction and matching provide the basis of many methods for object registration, modeling,...
Feature extraction and matching has been widely used for the registration of overlapping partial sha...
Recently, progress has been made in restoring the accurate 3D shapes of objects in the real world us...
We present an algorithm for the automatic alignment of two 3D shapes (data and model), without any a...
In this paper, we present an efficient and robust algorithm for shape matching, registration, and de...
Feature extraction and matching provide the basis of many methods for object registration, modeling,...
For accurate registration of overlapping free form shapes, different points in one shape must select...
We present a new point matching algorithm for robust nonrigid registration. The method iteratively r...
Full automation of the registration of 3D scan data is, in general, still an unsolved problem. If su...
egistration is the problem of bringing together two or more 3D shapes, either of the same object or ...
The iterative closest point algorithm is one of the most effi-cient algorithms for robust rigid regi...
We present an algorithm for shape matching and recognition based on a generative model for how one s...
Feature extraction and matching (FEM) for 3D shapes finds numerous applications in computer graphics...
Feature extraction and matching (FEM) for 3D shapes finds numerous applications in computer graphics...
Feature extraction and matching (FEM) has been widely used for the registration of partially overlap...
Feature extraction and matching provide the basis of many methods for object registration, modeling,...
Feature extraction and matching has been widely used for the registration of overlapping partial sha...
Recently, progress has been made in restoring the accurate 3D shapes of objects in the real world us...
We present an algorithm for the automatic alignment of two 3D shapes (data and model), without any a...
In this paper, we present an efficient and robust algorithm for shape matching, registration, and de...
Feature extraction and matching provide the basis of many methods for object registration, modeling,...
For accurate registration of overlapping free form shapes, different points in one shape must select...
We present a new point matching algorithm for robust nonrigid registration. The method iteratively r...
Full automation of the registration of 3D scan data is, in general, still an unsolved problem. If su...
egistration is the problem of bringing together two or more 3D shapes, either of the same object or ...
The iterative closest point algorithm is one of the most effi-cient algorithms for robust rigid regi...
We present an algorithm for shape matching and recognition based on a generative model for how one s...