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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
91

Nonparametric Markov Random Field Models for Natural Texture Images

Paget, Rupert Unknown Date (has links)
The underlying aim of this research is to investigate the mathematical descriptions of homogeneous textures in digital images for the purpose of segmentation and recognition. The research covers the problem of testing these mathematical descriptions by using them to generate synthetic realisations of the homogeneous texture for subjective and analytical comparisons with the source texture from which they were derived. The application of this research is in analysing satellite or airborne images of the Earth's surface. In particular, Synthetic Aperture Radar (SAR) images often exhibit regions of homogeneous texture, which if segmented, could facilitate terrain classification. In this thesis we present noncausal, nonparametric, multiscale, Markov random field (MRF) models for recognising and synthesising texture. The models have the ability to capture the characteristics of, and to synthesise, a wide variety of textures, varying from the highly structured to the stochastic. For texture synthesis, we introduce our own novel multiscale approach incorporating a new concept of local annealing. This allows us to use large neighbourhood systems to model complex natural textures with high order statistical characteristics. The new multiscale texture synthesis algorithm also produces synthetic textures with few, if any, phase discontinuities. The power of our modelling technique is evident in that only a small source image is required to synthesise representative examples of the source texture, even when the texture contains long-range characteristics. We also show how the high-dimensional model of the texture may be modelled with lower dimensional statistics without compromising the integrity of the representation. We then show how these models -- which are able to capture most of the unique characteristics of a texture -- can be for the ``open-ended'' problem of recognising textures embedded in a scene containing previously unseen textures. Whilst this technique was developed for the practical application of recognising different terrain types from Synthetic Aperture Radar (SAR) images, it has applications in other image processing tasks requiring texture recognition.
92

Exploiting non-redundant local patterns and probabilistic models for analyzing structured and semi-structured data

Wang, Chao, January 2008 (has links)
Thesis (Ph. D.)--Ohio State University, 2008. / Title from first page of PDF file. Includes bibliographical references (p. 140-150).
93

Efficient image restoration algorithms for near-circulant systems

Pan, Ruimin, Reeves, Stanley J. January 2007 (has links) (PDF)
Dissertation (Ph.D.)--Auburn University, 2007. / Abstract. Vita. Includes bibliographic references (p.111-117).
94

Issues in Bayesian Gaussian Markov random field models with application to intersensor calibration

Liang, Dong. Cowles, Mary Kathryn. January 2009 (has links)
Thesis advisor: Cowles, Mary K. Includes bibliographic references (p. 167-172).
95

Combining and updating of local estimates and regional maps along sets of one-dimensional tracks

January 1979 (has links)
Alan S. Willsky ... [et al.]. / Microfiche copy available in Barker Engineering Library. / Also available on microfiche. "AD-A080034." / Bibliography: leaves 56-57. / Interim report. / Air Force Office of Scientific Research Grant AFOSR-77-3281B Office of Naval Research Contract ONR/N00014-76-C-0346 Task 61102F 2304/A1
96

Data-Driven Network Analysis and Applications

Tao, Narisu 14 September 2015 (has links)
No description available.
97

Conditional random fields for noisy text normalisation

Coetsee, Dirko 12 1900 (has links)
Thesis (MScEng) -- Stellenbosch University, 2014. / ENGLISH ABSTRACT: The increasing popularity of microblogging services such as Twitter means that more and more unstructured data is available for analysis. The informal language usage in these media presents a problem for traditional text mining and natural language processing tools. We develop a pre-processor to normalise this noisy text so that useful information can be extracted with standard tools. A system consisting of a tokeniser, out-of-vocabulary token identifier, correct candidate generator, and N-gram language model is proposed. We compare the performance of generative and discriminative probabilistic models for these different modules. The effect of normalising the training and testing data on the performance of a tweet sentiment classifier is investigated. A linear-chain conditional random field, which is a discriminative model, is found to work better than its generative counterpart for the tokenisation module, achieving a 0.76% character error rate compared to 1.41% for the finite state automaton. For the candidate generation module, however, the generative weighted finite state transducer works better, getting the correct clean version of a word right 36% of the time on the first guess, while the discriminatively trained hidden alignment conditional random field only achieves 6%. The use of a normaliser as a pre-processing step does not significantly affect the performance of the sentiment classifier. / AFRIKAANSE OPSOMMING: Mikro-webjoernale soos Twitter word al hoe meer gewild, en die hoeveelheid ongestruktureerde data wat beskikbaar is vir analise groei daarom soos nooit tevore nie. Die informele taalgebruik in hierdie media maak dit egter moeilik om tradisionele tegnieke en bestaande dataverwerkingsgereedskap toe te pas. ’n Stelsel wat hierdie ruiserige teks normaliseer word ontwikkel sodat bestaande pakkette gebruik kan word om die teks verder te verwerk. Die stelsel bestaan uit ’n module wat die teks in woordeenhede opdeel, ’n module wat woorde identifiseer wat gekorrigeer moet word, ’n module wat dan kandidaat korreksies voorstel, en ’n module wat ’n taalmodel toepas om die mees waarskynlike skoon teks te vind. Die verrigting van diskriminatiewe en generatiewe modelle vir ’n paar van hierdie modules word vergelyk en die invloed wat so ’n normaliseerder op die akkuraatheid van ’n sentimentklassifiseerder het word ondersoek. Ons bevind dat ’n lineêre-ketting voorwaardelike toevalsveld—’n diskriminatiewe model — beter werk as sy generatiewe eweknie vir tekssegmentering. Die voorwaardelike toevalsveld-model behaal ’n karakterfoutkoers van 0.76%, terwyl die toestandsmasjien-model 1.41% behaal. Die toestantsmasjien-model werk weer beter om kandidaat woorde te genereer as die verskuilde belyningsmodel wat ons geïmplementeer het. Die toestandsmasjien kry 36% van die tyd die regte weergawe van ’n woord met die eerste raaiskoot, terwyl die diskriminatiewe model dit slegs 6% van die tyd kan doen. Laastens het ons bevind dat die vooraf normalisering van Twitter boodskappe nie ’n beduidende effek op die akkuraatheid van ’n sentiment klassifiseerder het nie.
98

Segmentation of magnetic resonance images for assessing neonatal brain maturation

Wang, Siying January 2016 (has links)
In this thesis, we aim to investigate the correlation between myelination and the gestational age for preterm infants, with the former being an important developmental process during human brain maturation. Quantification of myelin requires dedicated imaging, but the conventional magnetic resonance images routinely acquired during clinical imaging of neonates carry signatures that are thought to be associated with myelination. This thesis thus focuses on structural segmentation and spatio-temporal modelling of the so-called myelin-like signals on T2-weighted scans for early prognostic evaluation of the preterm brain. The segmentation part poses the major challenges of this task: insufficient spatial prior information of myelination and the presence of substantial partial volume voxels in clinical data. Specific spatial priors for the developing brain are obtained from either probabilistic atlases or manually annotated training images, but none of them currently include myelin as an individual tissue type. This causes further difficulties in partial volume estimation which depends on the probabilistic atlases of the composing pure tissues. Our key contribution is the development of an expectation-maximisation framework that incorporates an explicit partial volume class whose locations are configured in relation to the composing pure tissues in a predefined region of interest via second-order Markov random fields. This approach resolves the above challenges without requiring any probabilistic atlas of myelin. We also investigate atlas-based whole brain segmentation that generates the binary mask for the region of interest. We then construct a spatio-temporal growth model for myelin-like signals using logistic regression based on the automatic segmentations of 114 preterm infants aged between 29 and 44 gestational weeks. Lastly, we demonstrate the ability of age estimation using the normal growth model in a leave-one-out procedure.
99

Extração de informações de conferências em páginas web

Garcia, Cássio Alan January 2017 (has links)
A escolha da conferência adequada para o envio de um artigo é uma tarefa que depende de diversos fatores: (i) o tema do trabalho deve estar entre os temas de interesse do evento; (ii) o prazo de submissão do evento deve ser compatível com tempo necessário para a escrita do artigo; (iii) localização da conferência e valores de inscrição são levados em consideração; e (iv) a qualidade da conferência (Qualis) avaliada pela CAPES. Esses fatores aliados à existência de milhares de conferências tornam a busca pelo evento adequado bastante demorada, em especial quando se está pesquisando em uma área nova. A fim de auxiliar os pesquisadores na busca de conferências, o trabalho aqui desenvolvido apresenta um método para a coleta e extração de dados de sites de conferências. Essa é uma tarefa desafiadora, principalmente porque cada conferência possui seu próprio site, com diferentes layouts. O presente trabalho apresenta um método chamado CONFTRACKER que combina a identificação de URLs de conferências da Tabela Qualis à identificação de deadlines a partir de seus sites. A extração das informações é realizada independente da conferência, do layout do site e da forma como são apresentadas as datas (formatação e rótulos). Para avaliar o método proposto, foram realizados experimentos com dados reais de conferências da Ciência da Computação. Os resultados mostraram que CONFTRACKER obteve resultados significativamente melhores em relação a um baseline baseado na posição entre rótulos e datas. Por fim, o processo de extração é executado para todas as conferências da Tabela Qualis e os dados coletados populam uma base de dados que pode ser consultada através de uma interface online. / Choosing the most suitable conference to submit a paper is a task that depends on various factors: (i) the topic of the paper needs to be among the topics of interest of the conference; (ii) submission deadlines need to be compatible with the necessary time for paper writing; (iii) conference location and registration costs; and (iv) the quality or impact of the conference. These factors allied to the existence of thousands of conferences, make the search of the right event very time consuming, especially when researching in a new area. Intending to help researchers finding conferences, this work presents a method developed to retrieve and extract data from conference web sites. Our method combines the identification of conference URL and deadline extraction. This is a challenging task as each web site has its own layout. Here, we propose CONFTRACKER, which combines the identification of the URLs of conferences listed in the Qualis Table and the extraction of their deadlines. Information extraction is carried out independent from the page’s layout and how the dates are presented. To evaluate our proposed method, we carried out experiments with real web data from Computer Science conferences. The results show that CONFTRACKER outperformed a baseline method based on the position of labels and dates. Finaly, the extracted data is stored in a database to be searched with an online tool.
100

Extração de informações de conferências em páginas web

Garcia, Cássio Alan January 2017 (has links)
A escolha da conferência adequada para o envio de um artigo é uma tarefa que depende de diversos fatores: (i) o tema do trabalho deve estar entre os temas de interesse do evento; (ii) o prazo de submissão do evento deve ser compatível com tempo necessário para a escrita do artigo; (iii) localização da conferência e valores de inscrição são levados em consideração; e (iv) a qualidade da conferência (Qualis) avaliada pela CAPES. Esses fatores aliados à existência de milhares de conferências tornam a busca pelo evento adequado bastante demorada, em especial quando se está pesquisando em uma área nova. A fim de auxiliar os pesquisadores na busca de conferências, o trabalho aqui desenvolvido apresenta um método para a coleta e extração de dados de sites de conferências. Essa é uma tarefa desafiadora, principalmente porque cada conferência possui seu próprio site, com diferentes layouts. O presente trabalho apresenta um método chamado CONFTRACKER que combina a identificação de URLs de conferências da Tabela Qualis à identificação de deadlines a partir de seus sites. A extração das informações é realizada independente da conferência, do layout do site e da forma como são apresentadas as datas (formatação e rótulos). Para avaliar o método proposto, foram realizados experimentos com dados reais de conferências da Ciência da Computação. Os resultados mostraram que CONFTRACKER obteve resultados significativamente melhores em relação a um baseline baseado na posição entre rótulos e datas. Por fim, o processo de extração é executado para todas as conferências da Tabela Qualis e os dados coletados populam uma base de dados que pode ser consultada através de uma interface online. / Choosing the most suitable conference to submit a paper is a task that depends on various factors: (i) the topic of the paper needs to be among the topics of interest of the conference; (ii) submission deadlines need to be compatible with the necessary time for paper writing; (iii) conference location and registration costs; and (iv) the quality or impact of the conference. These factors allied to the existence of thousands of conferences, make the search of the right event very time consuming, especially when researching in a new area. Intending to help researchers finding conferences, this work presents a method developed to retrieve and extract data from conference web sites. Our method combines the identification of conference URL and deadline extraction. This is a challenging task as each web site has its own layout. Here, we propose CONFTRACKER, which combines the identification of the URLs of conferences listed in the Qualis Table and the extraction of their deadlines. Information extraction is carried out independent from the page’s layout and how the dates are presented. To evaluate our proposed method, we carried out experiments with real web data from Computer Science conferences. The results show that CONFTRACKER outperformed a baseline method based on the position of labels and dates. Finaly, the extracted data is stored in a database to be searched with an online tool.

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