282 resultados para WAVELETS
Resumo:
We study compressible magnetohydrodynamic turbulence, which holds the key to many astrophysical processes, including star formation and cosmic-ray propagation. To account for the variations of the magnetic field in the strongly turbulent fluid, we use wavelet decomposition of the turbulent velocity field into Alfven, slow, and fast modes, which presents an extension of the Cho & Lazarian decomposition approach based on Fourier transforms. The wavelets allow us to follow the variations of the local direction of the magnetic field and therefore improve the quality of the decomposition compared to the Fourier transforms, which are done in the mean field reference frame. For each resulting component, we calculate the spectra and two-point statistics such as longitudinal and transverse structure functions as well as higher order intermittency statistics. In addition, we perform a Helmholtz-Hodge decomposition of the velocity field into incompressible and compressible parts and analyze these components. We find that the turbulence intermittency is different for different components, and we show that the intermittency statistics depend on whether the phenomenon was studied in the global reference frame related to the mean magnetic field or in the frame defined by the local magnetic field. The dependencies of the measures we obtained are different for different components of the velocity; for instance, we show that while the Alfven mode intermittency changes marginally with the Mach number, the intermittency of the fast mode is substantially affected by the change.
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This paper presents the use of a multiprocessor architecture for the performance improvement of tomographic image reconstruction. Image reconstruction in computed tomography (CT) is an intensive task for single-processor systems. We investigate the filtered image reconstruction suitability based on DSPs organized for parallel processing and its comparison with the Message Passing Interface (MPI) library. The experimental results show that the speedups observed for both platforms were increased in the same direction of the image resolution. In addition, the execution time to communication time ratios (Rt/Rc) as a function of the sample size have shown a narrow variation for the DSP platform in comparison with the MPI platform, which indicates its better performance for parallel image reconstruction.
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This work presents a novel approach in order to increase the recognition power of Multiscale Fractal Dimension (MFD) techniques, when applied to image classification. The proposal uses Functional Data Analysis (FDA) with the aim of enhancing the MFD technique precision achieving a more representative descriptors vector, capable of recognizing and characterizing more precisely objects in an image. FDA is applied to signatures extracted by using the Bouligand-Minkowsky MFD technique in the generation of a descriptors vector from them. For the evaluation of the obtained improvement, an experiment using two datasets of objects was carried out. A dataset was used of characters shapes (26 characters of the Latin alphabet) carrying different levels of controlled noise and a dataset of fish images contours. A comparison with the use of the well-known methods of Fourier and wavelets descriptors was performed with the aim of verifying the performance of FDA method. The descriptor vectors were submitted to Linear Discriminant Analysis (LDA) classification method and we compared the correctness rate in the classification process among the descriptors methods. The results demonstrate that FDA overcomes the literature methods (Fourier and wavelets) in the processing of information extracted from the MFD signature. In this way, the proposed method can be considered as an interesting choice for pattern recognition and image classification using fractal analysis.
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This paper presents a study on wavelets and their characteristics for the specific purpose of serving as a feature extraction tool for speaker verification (SV), considering a Radial Basis Function (RBF) classifier, which is a particular type of Artificial Neural Network (ANN). Examining characteristics such as support-size, frequency and phase responses, amongst others, we show how Discrete Wavelet Transforms (DWTs), particularly the ones which derive from Finite Impulse Response (FIR) filters, can be used to extract important features from a speech signal which are useful for SV. Lastly, an SV algorithm based on the concepts presented is described.
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In this paper, a novel statistical test is introduced to compare two locally stationary time series. The proposed approach is a Wald test considering time-varying autoregressive modeling and function projections in adequate spaces. The covariance structure of the innovations may be also time- varying. In order to obtain function estimators for the time- varying autoregressive parameters, we consider function expansions in splines and wavelet bases. Simulation studies provide evidence that the proposed test has a good performance. We also assess its usefulness when applied to a financial time series.
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In this work an efficient third order non-linear finite difference scheme for solving adaptively hyperbolic systems of one-dimensional conservation laws is developed. The method is based oil applying to the solution of the differential equation an interpolating wavelet transform at each time step, generating a multilevel representation for the solution, which is thresholded and a sparse point representation is generated. The numerical fluxes obtained by a Lax-Friedrichs flux splitting are evaluated oil the sparse grid by an essentially non-oscillatory (ENO) approximation, which chooses the locally smoothest stencil among all the possibilities for each point of the sparse grid. The time evolution of the differential operator is done on this sparse representation by a total variation diminishing (TVD) Runge-Kutta method. Four classical examples of initial value problems for the Euler equations of gas dynamics are accurately solved and their sparse solutions are analyzed with respect to the threshold parameters, confirming the efficiency of the wavelet transform as an adaptive grid generation technique. (C) 2008 IMACS. Published by Elsevier B.V. All rights reserved.
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This article is dedicated to harmonic wavelet Galerkin methods for the solution of partial differential equations. Several variants of the method are proposed and analyzed, using the Burgers equation as a test model. The computational complexity can be reduced when the localization properties of the wavelets and restricted interactions between different scales are exploited. The resulting variants of the method have computational complexities ranging from O(N(3)) to O(N) (N being the space dimension) per time step. A pseudo-spectral wavelet scheme is also described and compared to the methods based on connection coefficients. The harmonic wavelet Galerkin scheme is applied to a nonlinear model for the propagation of precipitation fronts, with the front locations being exposed in the sizes of the localized wavelet coefficients. (C) 2011 Elsevier Ltd. All rights reserved.
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Parkinson's disease (PD) is the second most common neurodegenerative disorder (after Alzheimer's disease) and directly affects upto 5 million people worldwide. The stages (Hoehn and Yaar) of disease has been predicted by many methods which will be helpful for the doctors to give the dosage according to it. So these methods were brought up based on the data set which includes about seventy patients at nine clinics in Sweden. The purpose of the work is to analyze unsupervised technique with supervised neural network techniques in order to make sure the collected data sets are reliable to make decisions. The data which is available was preprocessed before calculating the features of it. One of the complex and efficient feature called wavelets has been calculated to present the data set to the network. The dimension of the final feature set has been reduced using principle component analysis. For unsupervised learning k-means gives the closer result around 76% while comparing with supervised techniques. Back propagation and J4 has been used as supervised model to classify the stages of Parkinson's disease where back propagation gives the variance percentage of 76-82%. The results of both these models have been analyzed. This proves that the data which are collected are reliable to predict the disease stages in Parkinson's disease.
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A filtragem de imagens visando a redução do ruído é uma tarefa muito importante em processamento de imagens, e encontra diversas aplicações. Para que a filtração seja eficiente, ela deve atenuar apenas o ruído na imagem, sem afetar estruturas importantes, como as bordas. Há na literatura uma grande variedade de técnicas propostas para filçtragem de imagens com preservação de bordas, com as mais variadas abordagens, deentrte as quais podem ser citadas a convolução com máscaras, modelos probabilísticos, redes neurais, minimização de funcionais e equações diferenciais parciais. A transformada wavelet é uma ferramenta matemática que permite a decomposição de sinais e imagens em múltiplas resoluções. Essa decomposição é chamada de representação em wavelets, e pode ser calculada atrravés de um algorítmo piramidal baseado em convoluções com filtros passa-bandas e passa-baixas. Com essa transformada, as bordas podem ser calculadas em múltiplas resoluções. Além disso, como filtros passa-baixas são utilizados na decomposição, a atenuação do ruído é um processo intrínseco à transformada. Várias técnicas baseadas na transformada wavelet têm sido propostas nos últimos anos, com resultados promissores. Essas técnicas exploram várias características da transformada wavelet, tais como a magnitude de coeficientes e sua evolução ao longo das escalas. Neste trabalho, essas características da transformada wavelet são exploradas para a obtenção de novas técnicas de filtragem com preservação das bordas.
Resumo:
Neste trabalho analisamos processos estocásticos com decaimento polinomial (também chamado hiperbólico) da função de autocorrelação. Nosso estudo tem enfoque nas classes dos Processos ARFIMA e dos Processos obtidos à partir de iterações da transformação de Manneville-Pomeau. Os objetivos principais são comparar diversos métodos de estimação para o parâmetro fracionário do processo ARFIMA, nas situações de estacionariedade e não estacionariedade e, além disso, obter resultados similares para o parâmetro do processo de Manneville-Pomeau. Entre os diversos métodos de estimação para os parâmetros destes dois processos destacamos aquele baseado na teoria de wavelets por ser aquele que teve o melhor desempenho.
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O processamento de imagens tem sido amplamente utilizado para duas tarefas. Uma delas é o realce de imagens para a posterior visualização e a outra tarefa é a extração de informações para análise de imagens. Este trabalho apresenta um estudo sobre duas teorias multi-escalas chamadas de espaço de escala e transformada wavelet, que são utilizadas para a extração de informações de imagens. Um dos aspectos do espaço de escalas que tem sido amplamente discutido por diversos autores é a sua base (originalmente a gaussiana). Tem se buscado saber se a base gaussiana é a melhor, ou para quais casos ela é a melhor. Além disto, os autores têm procurado desenvolver novas bases, com características diferentes das pertencentes à gaussiana. De posse destas novas bases, pode-se compará-las com a base gaussiana e verificar onde cada base apresenta melhor desempenho. Neste trabalho, foi usada (i) a teoria do espaço de escalas, (ii) a teoria da transformada wavelet e (iii) as relações entre elas, a fim de gerar um método para criar novas bases para o espaço de escalas a partir de funções wavelets. O espaço de escala é um caso particular da transformada wavelet quando se usam as derivadas da gaussiana para gerar os operadores do espaço de escala. É com base nesta característica que se propôs o novo método apresentado. Além disto, o método proposto usa a resposta em freqüência das funções analisadas. As funções bases do espaço de escala possuem resposta em freqüência do tipo passa baixas. As funções wavelets, por sua vez, possuem resposta do tipo passa faixas Para obter as funções bases a partir das wavelets faz-se a integração numérica destas funções até que sua resposta em freqüência seja do tipo passa baixas. Algumas das funções wavelets estudadas não possuem definição para o caso bi-dimensional, por isso foram estudadas três formas de gerar funções bi-dimensionais a partir de funções unidimensionais. Com o uso deste método foi possível gerar dez novas bases para o espaço de escala. Algumas dessas novas bases apresentaram comportamento semelhante ao apresentado pela base gaussiana, outras não. Para as funções que não apresentaram o comportamento esperado, quando usadas com as definições originais dos operadores do espaço de escala, foram propostas novas definições para tais operadores (detectores de borda e bolha). Também foram geradas duas aplicações com o espaço de escala, sendo elas um algoritmo para a segmentação de cavidades cardíacas e um algoritmo para segmentação e contagem de células sanguíneas.
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Esta Tese apresenta a investigação de técnicas computacionais que permitam a simulação computacional da compreensão de frases faladas. Esta investigação é baseada em estudos neurocognitivos que descrevem o processamento do cérebro ao interpretar a audição de frases. A partir destes estudos, realiza-se a proposição do COMFALA, um modelo computacional para representação do processo de compreensão da fala. O COMFALA possui quatro módulos, correspondentes às fases do processamento cerebral: processamento do sinal de fala, análise sintática, análise semântica e avaliação das respostas das análises. Para validação do modelo são propostas implementações para cada módulo do COMFALA. A codificação do sinal se dá através das transformadas ondeletas (wavelets transforms), as quais permitem uma representação automática de padrões para sistemas conexionistas (redes neurais artificiais) responsáveis pela análise sintática e semântica da linguagem. Para a análise sintática foi adaptado um sistema conexionista de linguagem escrita. Por outro lado, o sistema conexionista de análise semântica realiza agrupamentos por características prosódicas e fonéticas do sinal. Ao final do processo, compara-se a saída sintática com a semântica, na busca de uma melhor interpretação da fala.
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The transport of fluids through pipes is used in the oil industry, being the pipelines an important link in the logistics flow of fluids. However, the pipelines suffer deterioration in their walls caused by several factors which may cause loss of fluids to the environment, justifying the investment in techniques and methods of leak detection to minimize fluid loss and environmental damage. This work presents the development of a supervisory module in order to inform to the operator the leakage in the pipeline monitored in the shortest time possible, in order that the operator log procedure that entails the end of the leak. This module is a component of a system designed to detect leaks in oil pipelines using sonic technology, wavelets and neural networks. The plant used in the development and testing of the module presented here was the system of tanks of LAMP, and its LAN, as monitoring network. The proposal consists of, basically, two stages. Initially, assess the performance of the communication infrastructure of the supervisory module. Later, simulate leaks so that the DSP sends information to the supervisory performs the calculation of the location of leaks and indicate to which sensor the leak is closer, and using the system of tanks of LAMP, capture the pressure in the pipeline monitored by piezoresistive sensors, this information being processed by the DSP and sent to the supervisory to be presented to the user in real time
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In the Hydrocarbon exploration activities, the great enigma is the location of the deposits. Great efforts are undertaken in an attempt to better identify them, locate them and at the same time, enhance cost-effectiveness relationship of extraction of oil. Seismic methods are the most widely used because they are indirect, i.e., probing the subsurface layers without invading them. Seismogram is the representation of the Earth s interior and its structures through a conveniently disposed arrangement of the data obtained by seismic reflection. A major problem in this representation is the intensity and variety of present noise in the seismogram, as the surface bearing noise that contaminates the relevant signals, and may mask the desired information, brought by waves scattered in deeper regions of the geological layers. It was developed a tool to suppress these noises based on wavelet transform 1D and 2D. The Java language program makes the separation of seismic images considering the directions (horizontal, vertical, mixed or local) and bands of wavelengths that form these images, using the Daubechies Wavelets, Auto-resolution and Tensor Product of wavelet bases. Besides, it was developed the option in a single image, using the tensor product of two-dimensional wavelets or one-wavelet tensor product by identities. In the latter case, we have the wavelet decomposition in a two dimensional signal in a single direction. This decomposition has allowed to lengthen a certain direction the two-dimensional Wavelets, correcting the effects of scales by applying Auto-resolutions. In other words, it has been improved the treatment of a seismic image using 1D wavelet and 2D wavelet at different stages of Auto-resolution. It was also implemented improvements in the display of images associated with breakdowns in each Auto-resolution, facilitating the choices of images with the signals of interest for image reconstruction without noise. The program was tested with real data and the results were good
Resumo:
In last decades, neural networks have been established as a major tool for the identification of nonlinear systems. Among the various types of networks used in identification, one that can be highlighted is the wavelet neural network (WNN). This network combines the characteristics of wavelet multiresolution theory with learning ability and generalization of neural networks usually, providing more accurate models than those ones obtained by traditional networks. An extension of WNN networks is to combine the neuro-fuzzy ANFIS (Adaptive Network Based Fuzzy Inference System) structure with wavelets, leading to generate the Fuzzy Wavelet Neural Network - FWNN structure. This network is very similar to ANFIS networks, with the difference that traditional polynomials present in consequent of this network are replaced by WNN networks. This paper proposes the identification of nonlinear dynamical systems from a network FWNN modified. In the proposed structure, functions only wavelets are used in the consequent. Thus, it is possible to obtain a simplification of the structure, reducing the number of adjustable parameters of the network. To evaluate the performance of network FWNN with this modification, an analysis of network performance is made, verifying advantages, disadvantages and cost effectiveness when compared to other existing FWNN structures in literature. The evaluations are carried out via the identification of two simulated systems traditionally found in the literature and a real nonlinear system, consisting of a nonlinear multi section tank. Finally, the network is used to infer values of temperature and humidity inside of a neonatal incubator. The execution of such analyzes is based on various criteria, like: mean squared error, number of training epochs, number of adjustable parameters, the variation of the mean square error, among others. The results found show the generalization ability of the modified structure, despite the simplification performed