We introduce a very large family of binary features for two-dimensional shapes. The salient ones for separating particular shapes are determined by inductive learning during the construction of classication trees. There is a feature for every possible geometric arrangement of local topographic codes. The arrangements express coarse constraints on relative angles and distances among the code locations and are nearly invariant to substantial ane and non-linear deformations. They are also partially ordered, which makes it possible to narrow the search for informative ones at each node of the tree. Dierent trees correspond to dierent aspects of shape. They are statistically weakly dependent due to randomization and are aggregated in a simple wa...
Statistical methods are well suited to the large amounts of data typically involved in digital shape...
Two methods of topographic object classification through shape are described. Unsupervised classific...
This paper presents a multiresolution approach that uses a diffusion process to describe the shape o...
We introduce a very large family of binary features for two-dimensional shapes. The salient ones for...
We explore a new approach to shape recognition based on a virtually infi-nite family of binary featu...
In this thesis we aim to develop a framework for clustering trees and rep- resenting and learning a ...
We describe an approach to shape recognition based on asking relational questions about the arrangem...
We describe an approach to shape recognition based on asking relational questions about the arrangem...
ABSTRACT. We introduce a method called multi-scale local shape analysis for extracting features that...
This paper investigates whether meaningful shape categories can be identified in an unsupervised way...
Automatic structuring (feature coding and object recognition) of topographic data, such as that deri...
In this paper, we describe a classification framework for binary shapes that have scale, rotation an...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
We propose a novel sparse dictionary learning method for planar shapes in the sense of Kendall, name...
A new fully automated shape learning method is presented. It is based on clustering a set of trainin...
Statistical methods are well suited to the large amounts of data typically involved in digital shape...
Two methods of topographic object classification through shape are described. Unsupervised classific...
This paper presents a multiresolution approach that uses a diffusion process to describe the shape o...
We introduce a very large family of binary features for two-dimensional shapes. The salient ones for...
We explore a new approach to shape recognition based on a virtually infi-nite family of binary featu...
In this thesis we aim to develop a framework for clustering trees and rep- resenting and learning a ...
We describe an approach to shape recognition based on asking relational questions about the arrangem...
We describe an approach to shape recognition based on asking relational questions about the arrangem...
ABSTRACT. We introduce a method called multi-scale local shape analysis for extracting features that...
This paper investigates whether meaningful shape categories can be identified in an unsupervised way...
Automatic structuring (feature coding and object recognition) of topographic data, such as that deri...
In this paper, we describe a classification framework for binary shapes that have scale, rotation an...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
We propose a novel sparse dictionary learning method for planar shapes in the sense of Kendall, name...
A new fully automated shape learning method is presented. It is based on clustering a set of trainin...
Statistical methods are well suited to the large amounts of data typically involved in digital shape...
Two methods of topographic object classification through shape are described. Unsupervised classific...
This paper presents a multiresolution approach that uses a diffusion process to describe the shape o...