In this paper we address the problem of building object class representations based on local features and fast matching in a large database. We propose an efficient algorithm for hierarchical agglomerative clustering. We examine different agglomerative and partitional clustering strategies and compare the quality of obtained clusters. Our combination of partitional-agglomerative clustering gives significant improvement in terms of efficiency while maintaining the same quality of clusters. We also propose a method for building data structures for fast matching in high dimensional feature spaces. These improvements allow to deal with large sets of training data typically used in recognition of multiple object classes
Clustering is an activity of finding abstractions from data and these abstractions can be used for d...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
In this paper we compare the performance of local de-tectors and descriptors in the context of objec...
In this paper we address the problem of building object class representations based on local featur...
Within this thesis an algorithm for object recognition called Cluster Matching has been developed, i...
In machine learning, classification is defined as the task of taking an instance of the dataset and ...
Within this thesis an algorithm for object recognition called Cluster Matching has been developed, i...
. We classify clustering algorithms into sequence-based techniques ---which transform the object net...
We present an efficient method for feature correspon-dence and object-based image matching, which ex...
Abstract- A Feature selection for the high dimensional data clustering is a difficult problem becaus...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
In recent years, the complexity of data objects in data mining applications has increased as well as...
Most research on 3-D object classification and recognition focuses on recognition of objects in 3-D ...
The topic of this article is multi-criterion, structure-based clustering in objectoriented databases...
Clustering is an activity of finding abstractions from data and these abstractions can be used for d...
Clustering is an activity of finding abstractions from data and these abstractions can be used for d...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
In this paper we compare the performance of local de-tectors and descriptors in the context of objec...
In this paper we address the problem of building object class representations based on local featur...
Within this thesis an algorithm for object recognition called Cluster Matching has been developed, i...
In machine learning, classification is defined as the task of taking an instance of the dataset and ...
Within this thesis an algorithm for object recognition called Cluster Matching has been developed, i...
. We classify clustering algorithms into sequence-based techniques ---which transform the object net...
We present an efficient method for feature correspon-dence and object-based image matching, which ex...
Abstract- A Feature selection for the high dimensional data clustering is a difficult problem becaus...
Data Clustering is defined as grouping together objects which share similar properties. These proper...
In recent years, the complexity of data objects in data mining applications has increased as well as...
Most research on 3-D object classification and recognition focuses on recognition of objects in 3-D ...
The topic of this article is multi-criterion, structure-based clustering in objectoriented databases...
Clustering is an activity of finding abstractions from data and these abstractions can be used for d...
Clustering is an activity of finding abstractions from data and these abstractions can be used for d...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
In this paper we compare the performance of local de-tectors and descriptors in the context of objec...