A common problem in image analysis is the transformation-invariant estimation of the similarity between a query image and a set of reference images representing different classes. This typically requires the comparison of the distance between the query image and the transformation manifolds of the reference images. The tangent distance algorithm is a popular method that estimates the manifold distance by employing a linear approximation of the transformation manifolds. In this paper, we present a performance analysis of the tangent distance method in image classification applications for general transformation models. In particular, we characterize the misclassification error in terms of the geometric properties of the individual manifolds ...
When working with high dimensional data, it is often essential to calculate the difference or "dista...
Similarity measurements between 3D objects and 2D images are useful for the tasks of object recognit...
peer-reviewedIn recent years the tangent distance approach of Simard et al (1993) to pattern recogn...
The computation of the geometric transformation between a reference and a target image, known as ima...
The ability to rely on similarity metrics invariant to image transformations is an important issue f...
The ability to rely on similarity metrics invariant to image transforma-tions is an important issue ...
In this paper we present a new probabilistic interpretation of tangent distance, which proved to be ...
Accounting for spatial image transformations is a requirement for multimedia problems such as video ...
http://research.microsoft.com/~patrice/PDF/tricks.pdfIn pattern recognition, statistical modeling, o...
Image tangent space is actually high-level semantic space learned from low-level feature space by mo...
In this paper we present a new approach to variance modelling in automatic speech recognition (ASR) ...
Many natural image sets are samples of a low-dimensional manifold in the space of all possible image...
Abstract—Transformation-invariant analysis of signals often requires the computation of the distance...
Tangent Distance (TD) is one classical method for invariant pattern classification. However, convent...
Transformation manifolds are quite attractive for image analysis applications that require transform...
When working with high dimensional data, it is often essential to calculate the difference or "dista...
Similarity measurements between 3D objects and 2D images are useful for the tasks of object recognit...
peer-reviewedIn recent years the tangent distance approach of Simard et al (1993) to pattern recogn...
The computation of the geometric transformation between a reference and a target image, known as ima...
The ability to rely on similarity metrics invariant to image transformations is an important issue f...
The ability to rely on similarity metrics invariant to image transforma-tions is an important issue ...
In this paper we present a new probabilistic interpretation of tangent distance, which proved to be ...
Accounting for spatial image transformations is a requirement for multimedia problems such as video ...
http://research.microsoft.com/~patrice/PDF/tricks.pdfIn pattern recognition, statistical modeling, o...
Image tangent space is actually high-level semantic space learned from low-level feature space by mo...
In this paper we present a new approach to variance modelling in automatic speech recognition (ASR) ...
Many natural image sets are samples of a low-dimensional manifold in the space of all possible image...
Abstract—Transformation-invariant analysis of signals often requires the computation of the distance...
Tangent Distance (TD) is one classical method for invariant pattern classification. However, convent...
Transformation manifolds are quite attractive for image analysis applications that require transform...
When working with high dimensional data, it is often essential to calculate the difference or "dista...
Similarity measurements between 3D objects and 2D images are useful for the tasks of object recognit...
peer-reviewedIn recent years the tangent distance approach of Simard et al (1993) to pattern recogn...