The optimal distance measure for a given discrimination task under the nearest neighbor framework has been shown to be the likelihood that a pair of measurements have different class labels [S. Mahamud et al., (2002)]. For implementation and efficiency considerations, the optimal distance measure was approximated by combining more elementary distance measures defined on simple feature spaces. We address two important issues that arise in practice for such an approach: (a) What form should the elementary distance measure in each feature space take? We motivate the need to use the optimal distance measure in simple feature spaces as the elementary distance measures; such distance measures have the desirable property that they are invariant to...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Similarity measurements between 3D objects and 2D images are useful for the tasks of object recognit...
State-of-the-art speech recognition relies on a state-dependent distance measure. In HMM systems, th...
Recently, the optimal distance measure for a given object discrimination task under the nearest neig...
A major face recognition paradigm involves recognizing a person from a set of images instead of from...
As pattern recognition methods, subspace methods have attracted much attention in the fields of face...
Tech ReportThe Bhattacharyya, I-divergence, Vasershtein, variational and Levy distances are evaluate...
Abstract. In this paper, we propose a unified scheme of subspace and distance metric learning under ...
In this paper, we present a general guideline to find a better distance measure for similarity estim...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
When working with high dimensional data, it is often essential to calculate the difference or "dista...
Based on the analysis of conditions for a good distance function we found four rules that should be ...
The basic concepts of distance based classification are introduced in terms of clear-cut example sys...
A definition of distance measure between structural descriptions, which is based on a probabilistic ...
Two different aspects of the problem of selecting measurements for statistical pattern recognition a...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Similarity measurements between 3D objects and 2D images are useful for the tasks of object recognit...
State-of-the-art speech recognition relies on a state-dependent distance measure. In HMM systems, th...
Recently, the optimal distance measure for a given object discrimination task under the nearest neig...
A major face recognition paradigm involves recognizing a person from a set of images instead of from...
As pattern recognition methods, subspace methods have attracted much attention in the fields of face...
Tech ReportThe Bhattacharyya, I-divergence, Vasershtein, variational and Levy distances are evaluate...
Abstract. In this paper, we propose a unified scheme of subspace and distance metric learning under ...
In this paper, we present a general guideline to find a better distance measure for similarity estim...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
When working with high dimensional data, it is often essential to calculate the difference or "dista...
Based on the analysis of conditions for a good distance function we found four rules that should be ...
The basic concepts of distance based classification are introduced in terms of clear-cut example sys...
A definition of distance measure between structural descriptions, which is based on a probabilistic ...
Two different aspects of the problem of selecting measurements for statistical pattern recognition a...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Similarity measurements between 3D objects and 2D images are useful for the tasks of object recognit...
State-of-the-art speech recognition relies on a state-dependent distance measure. In HMM systems, th...