Structural Similarity: Applications to Object Recognition and Clustering

Please use this identifier to cite or link to this item: http://hdl.handle.net/10045/98110
Información del item - Informació de l'item - Item information
Title: Structural Similarity: Applications to Object Recognition and Clustering
Authors: Curado, Manuel
Research Director: Escolano, Francisco | Sáez Martínez, Juan Manuel
Center, Department or Service: Universidad de Alicante. Departamento de Ciencia de la Computación e Inteligencia Artificial
Keywords: Graph densification | Cut similarity | Spectral clustering | Dirichlet problems | Random walkers | Commute Times | Graph algorithms | Regular Partition | Szemeredi | Alzheimer's disease | Graphs | Return Random Walk | Net4lap | Directed graphs | Spectral graph theory | Graph entropy | Mutual information | Manifold alignment | m-Best Graph Matching | Binary-Tree Partitions | QAP | Graph sparsification | Shape simplification | Alpha shapes
Knowledge Area: Ciencia de la Computación e Inteligencia Artificial
Date Created: 2018
Issue Date: 2018
Date of defense: 3-Sep-2018
Publisher: Universidad de Alicante
Abstract: In this thesis, we propose many developments in the context of Structural Similarity. We address both node (local) similarity and graph (global) similarity. Concerning node similarity, we focus on improving the diffusive process leading to compute this similarity (e.g. Commute Times) by means of modifying or rewiring the structure of the graph (Graph Densification), although some advances in Laplacian-based ranking are also included in this document. Graph Densification is a particular case of what we call graph rewiring, i.e. a novel field (similar to image processing) where input graphs are rewired to be better conditioned for the subsequent pattern recognition tasks (e.g. clustering). In the thesis, we contribute with an scalable an effective method driven by Dirichlet processes. We propose both a completely unsupervised and a semi-supervised approach for Dirichlet densification. We also contribute with new random walkers (Return Random Walks) that are useful structural filters as well as asymmetry detectors in directed brain networks used to make early predictions of Alzheimer's disease (AD). Graph similarity is addressed by means of designing structural information channels as a means of measuring the Mutual Information between graphs. To this end, we first embed the graphs by means of Commute Times. Commute times embeddings have good properties for Delaunay triangulations (the typical representation for Graph Matching in computer vision). This means that these embeddings can act as encoders in the channel as well as decoders (since they are invertible). Consequently, structural noise can be modelled by the deformation introduced in one of the manifolds to fit the other one. This methodology leads to a very high discriminative similarity measure, since the Mutual Information is measured on the manifolds (vectorial domain) through copulas and bypass entropy estimators. This is consistent with the methodology of decoupling the measurement of graph similarity in two steps: a) linearizing the Quadratic Assignment Problem (QAP) by means of the embedding trick, and b) measuring similarity in vector spaces. The QAP problem is also investigated in this thesis. More precisely, we analyze the behaviour of $m$-best Graph Matching methods. These methods usually start by a couple of best solutions and then expand locally the search space by excluding previous clamped variables. The next variable to clamp is usually selected randomly, but we show that this reduces the performance when structural noise arises (outliers). Alternatively, we propose several heuristics for spanning the search space and evaluate all of them, showing that they are usually better than random selection. These heuristics are particularly interesting because they exploit the structure of the affinity matrix. Efficiency is improved as well. Concerning the application domains explored in this thesis we focus on object recognition (graph similarity), clustering (rewiring), compression/decompression of graphs (links with Extremal Graph Theory), 3D shape simplification (sparsification) and early prediction of AD.
Sponsor: Ministerio de Economía, Industria y Competitividad (Referencia TIN2012-32839 BES-2013-064482)
URI: http://hdl.handle.net/10045/98110
Language: eng
Type: info:eu-repo/semantics/doctoralThesis
Rights: Licencia Creative Commons Reconocimiento-NoComercial-SinObraDerivada 4.0
Appears in Collections: Doctoral theses

Files in This Item:
Files in This Item:
File Description SizeFormat 
Thumbnailtesis_manuel_curado_navarro.pdf24,71 MBAdobe PDFOpen Preview


This item is licensed under a Creative Commons License Creative Commons