The problem this thesis is addressing is to improve an existing classification in 10 categories of the images captured by SEM microscopes. In particular, the challenge faced is to classify those images according to a hierarchical tree structure of sub-categories without requiring any further human labelling effort. In order to uncover intrinsic structures among the images, a procedure involving supervised and unsupervised feature learning, as well as cluster analysis is defined. Moreover, to reduce the bias introduced in the supervised phase, various strategies focusing on features of different nature and level of abstraction are analyzed
This thesis presents methods that address three fundamental tasks in the field of microscopy image a...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
189 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1997.This dissertation addresses t...
The problem this thesis is addressing is to improve an existing classification in 10 categories of t...
In this paper, we report upon our recent work aimed at improving and adapting machine learning algor...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
Cluster analysis methods are used to classify R unlabeled objects in a P-dimensional space into grou...
This manuscript was presented at the MLMI workshop, MICCAI2015 in Munich, GermanyPurpose: Completely...
Abstract This paper investigates the problem of semi-supe-rvised image classification and image clus...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
Clustering is the unsupervised classification of patterns (observations, data items, or feature vect...
The classification image into one of several categories is a problem arisen naturally under a wide r...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
In machine learning, classification is defined as the task of taking an instance of the dataset and ...
Clustering is a process that groups data with respect to data similarity so that similar data take p...
This thesis presents methods that address three fundamental tasks in the field of microscopy image a...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
189 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1997.This dissertation addresses t...
The problem this thesis is addressing is to improve an existing classification in 10 categories of t...
In this paper, we report upon our recent work aimed at improving and adapting machine learning algor...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
Cluster analysis methods are used to classify R unlabeled objects in a P-dimensional space into grou...
This manuscript was presented at the MLMI workshop, MICCAI2015 in Munich, GermanyPurpose: Completely...
Abstract This paper investigates the problem of semi-supe-rvised image classification and image clus...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
Clustering is the unsupervised classification of patterns (observations, data items, or feature vect...
The classification image into one of several categories is a problem arisen naturally under a wide r...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
In machine learning, classification is defined as the task of taking an instance of the dataset and ...
Clustering is a process that groups data with respect to data similarity so that similar data take p...
This thesis presents methods that address three fundamental tasks in the field of microscopy image a...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
189 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1997.This dissertation addresses t...