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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.
1

The identification of sub-pixel components from remotely sensed data : an evaluation of an artificial neural network approach

Bernard, Alice Clara January 1998 (has links)
Until recently, methodologies to extract sub-pixel information from remotely sensed data have focused on linear un-mixing models and so called fuzzy classifiers. Recent research has suggested that neural networks have the potential for providing sub- pixel information. Neural networks offer an attractive alternative as they are non- parametric, they are not restricted to any number of classes, they do not assume that the spectral signatures of pixel components mix linearly and they do not necessarily have to be trained with pure pixels. The thesis tests the validity of neural networks for extracting sub-pixel information using a combination of qualitative and quantitative analysis tools. Previously published experiments use data sets that are often limited in terms of numbers of pixels and numbers of classes. The data sets used in the thesis reflect the complexity of the landscape. Preparation for the experiments is canied out by analysing the data sets and establishing that the network is not sensitive to particular choices of parameters. Classification results using a conventional type of target with which to train the network show that the response of the network to mixed pixels is different from the response of the network to pure pixels. Different target types are then tested. Although targets which provide detailed compositional information produce higher accuracies of classification for subsidiary classes, there is a trade off between the added information and added complexity which can decrease classification accuracy. Overall, the results show that the network seems to be able to identify the classes that are present within pixels but not their proportions. Experiments with a very accurate data set show that the network behaves like a pattern matching algorithm and requires examples of mixed pixels in the training data set in order to estimate pixel compositions for unseen pixels. The network does not function like an unmixing model and cannot interpolate between pure classes.
2

Multispectral Detection of European Frog-bit in the South Nation River using Quickbird Imagery

Proctor, Cameron 19 December 2011 (has links)
This thesis investigated multispectral detection of the invasive floating macrophyte, European Frog-bit, using Quickbird imagery and fuzzy image classification. To determine if the spectral signature of European Frog-bit were separable from other wetland vegetation, a species level land cover classification was conducted on a 6km section of the South Nation River in Ontario, Canada. Supervised and unsupervised imagery classification approaches were evaluated using the fuzzy classifiers, Fuzzy Segmentation for Object Based Image Classification (FS) and Fuzzy C-Means (FCM). Both approaches were sufficiently robust to detect European Frog-bit. User’s and producer’s accuracies for the European Frog-bit class were 81.0% and 77.9% for the FS classifier and 63.5% and 73.0% for the FCM classifier. These accuracies indicated that the spectral signature of EFB was sufficiently different to permit detection and separation from other wetland vegetation and fuzzy image classifiers were capable of detecting EFB in Quickbird imagery.
3

Multispectral Detection of European Frog-bit in the South Nation River using Quickbird Imagery

Proctor, Cameron 19 December 2011 (has links)
This thesis investigated multispectral detection of the invasive floating macrophyte, European Frog-bit, using Quickbird imagery and fuzzy image classification. To determine if the spectral signature of European Frog-bit were separable from other wetland vegetation, a species level land cover classification was conducted on a 6km section of the South Nation River in Ontario, Canada. Supervised and unsupervised imagery classification approaches were evaluated using the fuzzy classifiers, Fuzzy Segmentation for Object Based Image Classification (FS) and Fuzzy C-Means (FCM). Both approaches were sufficiently robust to detect European Frog-bit. User’s and producer’s accuracies for the European Frog-bit class were 81.0% and 77.9% for the FS classifier and 63.5% and 73.0% for the FCM classifier. These accuracies indicated that the spectral signature of EFB was sufficiently different to permit detection and separation from other wetland vegetation and fuzzy image classifiers were capable of detecting EFB in Quickbird imagery.
4

Object-based Classification Of Landforms Based On Their Local Geometry And Geomorphometric Context

Gercek, Deniz 01 April 2010 (has links) (PDF)
Terrain as a continuum can be categorized into landform units that exhibit common physiological and morphological characteristics which might serve as a boundary condition for a wide range of application domains. However, heterogeneous views, definitions and applications on landforms yield inconsistent and incompatible nomenclature that lack interoperability. Yet, there is still room for developing methods for establishing a formal background for general type of classification models to provide different disciplines with a basis of landscape description that is also commonsense to human insight. This study proposes a method of landform classification that reveals general geomorphometry of the landscape. Landform classes that are commonsense to human insight and relevant to various disciplines is adopted to generate landforms at the landscape scale. Proposed method integrates local geometry of the surface with geomorphometric context. A set of DTMs at relevant scale are utilized where local geometry is represented with morphometric DTMs, and geomorphometric context is incorporated through relative terrain position and terrain network. &ldquo / Object-based image analysis (OBIA)&rdquo / tools that have the ability to segment DTMs into more representative terrain objects and connect those objects in a multi-level hierarchy is adopted. A fuzzy classification approach is utilized via semantic descriptions to represent ambiguities both in attribute and geographical space. Method is applied at different case areas to evaluate the efficiency and stability of the classification. Outcomes portray reasonable amount of consistency where the results can be utilized as general or multi-purpose regarding some ambiguity that is inherent in landforms as well.
5

Identification d'indicateurs de risque des populations victimes de conflits par imagerie satellitaire études de cas : le nord de l'Irak

Mubareka, Sarah Betoul January 2008 (has links)
Remote sensing and security, terms which are not usually associated, have found a common platform this decade with the conjuring of the GMOSS network (Global Monitoring for Security and Stability ), whose mandate is to discover new applications for satellite-derived imagery to security issues. This study focuses on human security, concentrating on the characterisation of vulnerable areas to conflict. A time-series of satellite imagery taken from Landsat sensors from 1987 to 2001 and the SRTM mission imagery are used for this purpose over a site in northern Iraq. Human security issues include the exposure to any type of hazard. The region of study is first characterised in order to understand which hazards are and were present in the past for the region of study. The principal hazard for the region of study is armed conflict and the relative field data was analysed to determine the links between geographical indicators and vulnerable areas. This is done through historical research and the study of open-sourced information about disease outbreaks; the movements of refugees and the internally displaced; and humanitarian aid and security issues. These open sources offer information which are not always consistent, objective, or normalized and are therefore difficult to quantify. A method for the rapid mapping and graphing and subsequent analysis of the situation in a region where limited information is available is developed. This information is coupled with population numbers to create a"risk map": A disaggregated matrix of areas most at risk during conflict situations. The results show that describing the risk factor for a population to the hazard conflict depends on three complex indicators: Population density, remoteness and economic diversity. Each of these complex indicators is then derived from Landsat and SRTM imagery and a satellite-driven model is formulated. This model based on satellite imagery is applied to the study site for a temporal study. The output are three 90 m × 90 m resolution grids which describe, at a pixel level, the risk level within the region for each of the dates studies, and the changes which occur in northern Iraq as the result of the Anfal Campaigns. Results show that satellite imagery, with a minimum of processing, can yield indicators for characterising risk in a region. Although by no means a replacement for field data, this technological source, in the absence of local knowledge, can provide users with a starting point in understanding which areas are most at risk within a region. If this data is coupled with open sourced information such as political and cultural discrimination, economy and agricultural practices, a fairly accurate risk map can be generated in the absence of field data.
6

Classificação do risco de infestação de regiões por plantas daninhas utilizando lógica Fuzzy e redes Bayesianas / Classification of the risk of infestation per regions of a crop by weeds using Fuzzy and Bayesian networks

Bressan, Glaucia Maria 16 July 2007 (has links)
O presente trabalho tem como objetivo principal a classificação do risco de infestação por regiões de culturas vegetais por plantas daninhas. Os riscos por regiões são obtidos por um sistema de classificação fuzzy, usando métodos de Krigagem e análise de imagens. A infestação é descrita por atributos da cobertura foliar, densidade de sementes, extensão dos agrupamentos de sementes e competitividade, obtidos a partir das amostras de densidades de sementes e de plantas daninhas, da cobertura foliar e da biomassa de plantas daninhas. O atributo da cobertura foliar indica a porcentagem de ocupação das plantas emergentes e é obtido a partir de um mapa de cobertura foliar, construído usando Krigagem. O atributo da densidade de sementes caracteriza a localização das sementes que podem germinar e é obtido a partir de um mapa da distribuição da produção de sementes das plantas daninhas, também construído usando Krigagem. O atributo da extensão dos agrupamentos de sementes reflete a influência das sementes vizinhas em uma certa localização e também é obtido a partir do mapa de distribuição da produção de sementes. O atributo da competitividade entre plantas daninhas e cultura é obtido a partir de um sistema neurofuzzy, utilizando amostras de densidade e de biomassa das plantas daninhas. Para reunir os riscos de infestação semelhantes, os valores de risco inferidos por região pelo sistema fuzzy são agrupados considerando valores e localizações próximas utilizando o método k-médias com coeficiente de variação. Uma abordagem probabilística com redes de classificação Bayesianas é também empregada para a obtenção de um conjunto de regras linguísticas para classificar a competitividade e o risco de infestação, por motivo de comparação. Resultados para o risco de infestação são obtidos para uma área experimental em uma cultura de milho indicando a existência de riscos diferenciados que são explicados pela perda de rendimento da cultura. / The goal of this work is the classification of the risk of infestation per regions of a crop by weeds. The risks per regions are obtained by a fuzzy classification system, using kriging and image analysis. The infestation is described by attributes of the weed coverage, weed seed density, weed seed patches and competitiveness, obtained from weed seeds and weed densities, weed coverage and biomass. The attribute of the weed coverage indicates the percentage of infested surface of the emergent weeds which is obtained from a weed coverage map built with kriging. The attribute of the weed seed density is obtained from a weed seed production map also built with kriging which characterizes the locations of seeds which can germinate. The attribute of the weed seed patches is also obtained by the weed seed production map which reflects how the seeds contribute to weed proliferation in the surroundings. The attribute of the competitiveness among weeds and crop is obtained from a neurofuzzy system, using the weeds density and biomass of the plants. In order to aggregate the similar risks of infestation, the values of risks per region inferred by the fuzzy system are clustered according to similar values and locations using the k-means method with a variation coefficient. A probabilistic approach with Bayesian networks classifiers is also considered to obtain a set of linguistic rules to classify the competitiveness and the risk of infestation, for comparison purposes. Results for the risk of infestation are obtained for an experimental area in a corn crop which indicate the existence of different risks, explained by the yield loss of the crop.
7

[en] INTELLIGENT SYSTEMS APPLIED TO FRAUD ANALYSIS IN THE ELECTRICAL POWER INDUSTRIES / [pt] SISTEMAS INTELIGENTES NO ESTUDO DE PERDAS COMERCIAIS DO SETOR DE ENERGIA ELÉTRICA

JOSE EDUARDO NUNES DA ROCHA 25 March 2004 (has links)
[pt] Esta dissertação investiga uma nova metodologia, baseada em técnicas inteligentes, para a redução das perdas comerciais relativas ao fornecimento de energia elétrica. O objetivo deste trabalho é apresentar um modelo de inteligência computacional capaz de identificar irregularidades na medição de demanda e consumo de energia elétrica, considerando as características sazonais não lineares das curvas de carga das unidades consumidoras, características essas que são difíceis de se representar em modelos matemáticos. A metodologia é baseada em três etapas: categorização, para agrupar unidades consumidoras em classes similares; classificação para descobrir relacionamentos que expliquem o perfil da irregularidade no fornecimento de energia elétrica e que permitam prever a classe de um padrão desconhecido; e extração de conhecimento sob a forma de regras fuzzy interpretáveis. O modelo resultante foi denominado Sistema de Classificação de Unidades Consumidoras de Energia Elétrica. O trabalho consistiu em três partes: um estudo sobre os principais métodos de categorização e classificação de padrões; definição e implementação do Sistema de Classificação de Unidades Consumidoras de Energia Elétrica; e o estudo de casos. No estudo sobre os métodos de categorização foi feito um levantamento bibliográfico da área, resultando em um resumo das principais técnicas utilizadas para esta tarefa, as quais podem ser divididas em algoritmos de categorização hierárquicos e não hierárquicos. No estudo sobre os métodos de classificação foram feitos levantamentos bibliográficos dos sistemas Neuro-Fuzzy que resultaram em um resumo sobre as arquiteturas, algoritmos de aprendizado e extração de regras fuzzy de cada modelo analisado. Os modelos Neuro-Fuzzy foram escolhidos devido a sua capacidade de geração de regras lingüísticas. O Sistema de Classificação de Unidades Consumidoras de Energia Elétrica foi definido e implementado da seguinte forma: módulo de categorização, baseado no algoritmo Fuzzy C-Means (FCM); e módulo de classificação baseado nos Sistemas Neuro-Fuzzy NEFCLASS e NFHB-Invertido. No primeiro módulo, foram utilizadas algumas medidas de desempenho como o FPI (Fuzziness Performance Index), que estima o grau de nebulosidade (fuziness) gerado por um número específico de clusters, e a MPE (Modified Partition Entropy), que estima o grau de desordem gerado por um número específico de clusters. Para validação do número ótimo de clusters, aplicou-se o critério de dominância segundo o método de Pareto. No módulo de classificação de unidades consumidoras levou-se em consideração a peculiaridade de cada sistema neuro-fuzzy, além da análise de desempenho comparativa (benchmarking) entre os modelos. Além do objetivo de classificação de padrões, os Sistemas Neuro-Fuzzy são capazes de extrair conhecimento em forma de regras fuzzy interpretáveis expressas como: SE x é A e y é B então padrão pertence à classe Z. Realizou-se um amplo estudo de casos, abrangendo unidades consumidoras de atividades comerciais e industriais supridas em baixa e média tensão. Os resultados encontrados na etapa de categorização foram satisfatórios, uma vez que as unidades consumidoras foram agrupadas de forma natural pelas suas características de demanda máxima e consumo de energia elétrica. Conforme o objetivo proposto, esta categorização gerou um número reduzido de agrupamentos (clusters) no espaço de busca, permitindo que o treinamento dos sistemas Neuro-Fuzzy fosse direcionado para o menor número possível de grupos, mas com elevada representatividade sobre os dados. Os resultados encontrados com os modelos NFHB-Invertido e NEFCLASS mostraram-se, na maioria dos casos, superiores aos melhores resultados encontrados pelos modelos matemáticos comumente utilizados. O desempenho dos modelos NFHB-Invertido e NEFCLASS, em relação ao te / [en] This dissertation investigates a new methodology based on intelligent techniques for commercial losses reduction in electrical energy supply. The objective of this work is to present a model of computational intelligence able to identify irregularities in consumption and demand electrical measurements, regarding the non-linearity of the consumers seasonal load curve which is hard to represent by mathematical models. The methodology is based on three stages: clustering, to group consumers of electric energy into similar classes; patterns classification, to discover relationships that explain the irregularities profile and that determine the class for an unknown pattern; and knowledge extraction in form of interpretable fuzzy rules. The resulting model was entitled Electric Energy Consumers Classification System. The work consisted of three parts: a bibliographic research about main methods for clustering and patterns classification; definition and implementation of the Electric Energy Consumers Classification System; and case studies. The bibliographic research of clustering methods resulted in a survey of the main techniques used for this task, which can be divided into hierarchical and non-hierarchical clustering algorithms. The bibliographic research of classification methods provided a survey of the architectures, learning algorithms and rules extraction of the neuro-fuzzy systems. Neuro-fuzzy models were chosen due to their capacity of generating linguistics rules. The Electric Energy Consumers Classification System was defined and implemented in the following way: a clustering module, based on the Fuzzy CMeans (FCM) algorithm; and classification module, based on NEFCLASS and Inverted-NFHB neuro-fuzzy sytems. In the first module, some performance metrics have been used such as the FPI (Fuzziness Performance Index), which estimates the fuzzy level generated by a specific number of clusters; and the MPE (Modified Partition Entropy) that estimates disorder level generated by a specific number of clusters. The dominance criterion of Pareto method was used to validate optimal number of clusters. In the classification module, the peculiarities of each neuro-fuzzy system as well as performance comparison of each model were taken into account. Besides the patterns classification objective, the neuro-Fuzzy systems were able to extract knowledge in form of interpretable fuzzy rules. These rules are expressed by: IF x is A and y is B then the pattern belongs to Z class. The cases studies have considered industrial and commercial consumers of electric energy in low and medium tension. The results obtained in the clustering step were satisfactory, since consumers have been clustered in a natural way by their electrical consumption and demand characteristics. As the proposed objective, the system has generated an optimal low number of clusters in the search space, thus directing the learning step of the neuro-fuzzy systems to a low number of groups with high representation over data. The results obtained with Inverted-NFHB and NEFCLASS models, in the majority of cases, showed to be superior to the best results found by the mathematical methods commonly used. The performance of the Inverted-NFHB and NEFCLASS models concerning to processing time was also very good. The models converged to an optimal classification solution in a processing time inferior to a minute. The main objective of this work, that is the non- technical power losses reduction, was achieved by the assertiveness increases in the identification of the cases with measuring irregularities. This fact made possible some reduction in wasting with workers and effectively improved the billing.
8

Efficient Methods for Direct Volume Rendering of Large Data Sets

Ljung, Patric January 2006 (has links)
Direct Volume Rendering (DVR) is a technique for creating images directly from a representation of a function defined over a three-dimensional domain. The technique has many application fields, such as scientific visualization and medical imaging. A striking property of the data sets produced within these fields is their ever increasing size and complexity. Despite the advancements of computing resources these data sets seem to grow at even faster rates causing severe bottlenecks in terms of data transfer bandwidths, memory capacity and processing requirements in the rendering pipeline. This thesis focuses on efficient methods for DVR of large data sets. At the core of the work lies a level-of-detail scheme that reduces the amount of data to process and handle, while optimizing the level-of-detail selection so that high visual quality is maintained. A set of techniques for domain knowledge encoding which significantly improves assessment and prediction of visual significance for blocks in a volume are introduced. A complete pipeline for DVR is presented that uses the data reduction achieved by the level-of-detail selection to minimize the data requirements in all stages. This leads to reduction of disk I/O as well as host and graphics memory. The data reduction is also exploited to improve the rendering performance in graphics hardware, employing adaptive sampling both within the volume and within the rendered image. The developed techniques have been applied in particular to medical visualization of large data sets on commodity desktop computers using consumer graphics processors. The specific application of virtual autopsies has received much interest, and several developed data classification schemes and rendering techniques have been motivated by this application. The results are, however, general and applicable in many fields and significant performance and quality improvements over previous techniques are shown. / On the defence date the status of article IX was Accepted.
9

Soil Erosion Risk Mapping Using Geographic Information Systems: A Case Study On Kocadere Creek Watershed, Izmir

Okalp, Kivanc 01 December 2005 (has links) (PDF)
Soil erosion is a major global environmental problem that is increasing year by year in Turkey. Preventing soil erosion requires political, economic and technical actions / before these actions we must learn properties and behaviors of our soil resources. The aims of this study are to estimate annual soil loss rates of a watershed with integrated models within GIS framework and to map the soil erosion risk for a complex terrain. In this study, annual soil loss rates are estimated using the Universal Soil Loss Equation (USLE) that has been used for five decades all over the world. The main problem in estimating the soil loss rate is determining suitable slope length parameters of USLE for complex terrains in grid based approaches. Different algorithms are evaluated for calculating slope length parameters of the study area namely Kocadere Creek Watershed, which can be considered as a complex terrain. Hickey&amp / #8217 / s algorithm gives more reliable topographic factor values than Mitasova&amp / #8217 / s and Moore&amp / #8217 / s. Satellite image driven cover and management parameter (C) determination is performed by scaling NDVI values to approximate C values by using European Soil Bureau&amp / #8217 / s formula. After the estimation of annual soil loss rates, watershed is mapped into three different erosion risk classes (low, moderate, high) by using two different classification approaches: boolean and fuzzy classifications. Fuzzy classifications are based on (I) only topographic factor and, (II) both topographic and C factors of USLE. By comparing three different classified risk maps, it is found that! in the study area topography dominates erosion process on bare soils and areas having sparse vegetation.
10

Detecção de mudanças a partir de imagens de fração

Bittencourt, Helio Radke January 2011 (has links)
A detecção de mudanças na superfície terrestre é o principal objetivo em aplicações de sensoriamento remoto multitemporal. Sabe-se que imagens adquiridas em datas distintas tendem a ser altamente influenciadas por problemas radiométricos e de registro. Utilizando imagens de fração, obtidas a partir do modelo linear de mistura espectral (MLME), problemas radiométricos podem ser minimizados e a interpretação dos tipos de mudança na superfície terrestre é facilitada, pois as frações têm um significado físico direto. Além disso, interpretações ao nível de subpixel são possíveis. Esta tese propõe três algoritmos – rígido, suave e fuzzy – para a detecção de mudanças entre um par de imagens de fração, gerando mapas de mudança como produtos finais. As propostas requerem a suposição de normalidade multivariada para as diferenças de fração e necessitam de pouca intervenção por parte do analista. A proposta rígida cria mapas de mudança binários seguindo a mesma metodologia de um teste de hipóteses, baseando-se no fato de que os contornos de densidade constante na distribuição normal multivariada são definidos por valores da distribuição qui-quadrado, de acordo com a escolha do nível de confiança. O classificador suave permite gerar estimativas da probabilidade do pixel pertencer à classe de mudança, a partir de um modelo de regressão logística. Essas probabilidades são usadas para criar um mapa de probabilidades de mudança. A abordagem fuzzy é aquela que melhor se adapta ao conceito de pixel mistura, visto que as mudanças no uso e cobertura do solo podem ocorrer em nível de subpixel. Com base nisso, mapas dos graus de pertinência à classe de mudança foram criados. Outras ferramentas matemáticas e estatísticas foram utilizadas, tais como operações morfológicas, curvas ROC e algoritmos de clustering. As três propostas foram testadas utilizando-se imagens sintéticas e reais (Landsat-TM) e avaliadas qualitativa e quantitativamente. Os resultados indicam a viabilidade da utilização de imagens de fração em estudos de detecção de mudanças por meio dos algoritmos propostos. / Land cover change detection is a major goal in multitemporal remote sensing applications. It is well known that images acquired on different dates tend to be highly influenced by radiometric differences and registration problems. Using fraction images, obtained from the linear model of spectral mixing (LMSM), radiometric problems can be minimized and the interpretation of changes in land cover is facilitated because the fractions have a physical meaning. Furthermore, interpretations at the subpixel level are possible. This thesis presents three algorithms – hard, soft and fuzzy – for detecting changes between a pair of fraction images. The algorithms require multivariate normality for the differences among fractions and very little intervention by the analyst. The hard algorithm creates binary change maps following the same methodology of hypothesis testing, based on the fact that the contours of constant density are defined by chi-square values, according to the choice of the probability level. The soft one allows for the generation of estimates of the probability of each pixel belonging to the change class by using a logistic regression model. These probabilities are used to create a map of change probabilities. The fuzzy approach is the one that best fits the concept behind the fraction images because the changes in land cover can occurr at a subpixel level. Based on these algorithms, maps of membership degrees were created. Other mathematical and statistical techniques were also used, such as morphological operations, ROC curves and a clustering algorithm. The algorithms were tested using synthetic and real images (Landsat-TM) and the results were analyzed qualitatively and quantitatively. The results indicate that fraction images can be used in change detection studies by using the proposed algorithms.

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