In the presence of false matches and moving objects, image registration is challenging, as outlier rejection, matching and registration become interdependent. In this paper, we present an efficient and robust method, 4D tensor voting, to estimate epipolar geometries for non-static scenes, and identify matching points due to salient and independent motions. Unlike other optimization techniques, data communication in 4D tensor voting does not involve any iterative search. Thus, initialization, local optimum, convergence, and dimensionality of parameter space are not problematic. Like the 8D counterpart, the only assumption we make is the pinhole camera model. Two advancements are made in this work. First, we reduce the dimensionality, and the...
The theme of this thesis is to complete the 3D tensor voting theory for computer vision and graphics...
A novel approach is presented in order to reject correspondence outliers between frames using the pa...
Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2006...
We address the problem of epipolar geometry estimation efficiently and effectively, by formulating i...
AbstractThis paper proposes a robust approach to image matching by exploiting the only available geo...
Recently, a computational framework for feature extraction and segmentation, Tensor Voting, has bee...
In this paper, we analyze the computation of epipolar geometry in some special cases where multiple ...
Abstract. Outlier-free inter-frame feature matches are important to accurate epipolar geometry estim...
Although curvature estimation from a given mesh or regularly sampled point set is a well-studied pro...
Abstract. We present a method for recovering the epipolar geometry from im-ages of smooth surfaces. ...
We improve the basic tensor voting formalism to infer the sign and direction of principal curvatures...
This work considers the problem of estimating the epipo-lar geometry between two cameras without nee...
In the process of digitizing the geometry and appearance of 3D objects, texture registration is a ne...
In this paper, a robust technique based on a genetic algorithm is proposed for estimating two-view e...
In this paper we deal with the problem of matching moving objects between multiple views using geome...
The theme of this thesis is to complete the 3D tensor voting theory for computer vision and graphics...
A novel approach is presented in order to reject correspondence outliers between frames using the pa...
Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2006...
We address the problem of epipolar geometry estimation efficiently and effectively, by formulating i...
AbstractThis paper proposes a robust approach to image matching by exploiting the only available geo...
Recently, a computational framework for feature extraction and segmentation, Tensor Voting, has bee...
In this paper, we analyze the computation of epipolar geometry in some special cases where multiple ...
Abstract. Outlier-free inter-frame feature matches are important to accurate epipolar geometry estim...
Although curvature estimation from a given mesh or regularly sampled point set is a well-studied pro...
Abstract. We present a method for recovering the epipolar geometry from im-ages of smooth surfaces. ...
We improve the basic tensor voting formalism to infer the sign and direction of principal curvatures...
This work considers the problem of estimating the epipo-lar geometry between two cameras without nee...
In the process of digitizing the geometry and appearance of 3D objects, texture registration is a ne...
In this paper, a robust technique based on a genetic algorithm is proposed for estimating two-view e...
In this paper we deal with the problem of matching moving objects between multiple views using geome...
The theme of this thesis is to complete the 3D tensor voting theory for computer vision and graphics...
A novel approach is presented in order to reject correspondence outliers between frames using the pa...
Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2006...