91 research outputs found

    Proceedings of the second "international Traveling Workshop on Interactions between Sparse models and Technology" (iTWIST'14)

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    The implicit objective of the biennial "international - Traveling Workshop on Interactions between Sparse models and Technology" (iTWIST) is to foster collaboration between international scientific teams by disseminating ideas through both specific oral/poster presentations and free discussions. For its second edition, the iTWIST workshop took place in the medieval and picturesque town of Namur in Belgium, from Wednesday August 27th till Friday August 29th, 2014. The workshop was conveniently located in "The Arsenal" building within walking distance of both hotels and town center. iTWIST'14 has gathered about 70 international participants and has featured 9 invited talks, 10 oral presentations, and 14 posters on the following themes, all related to the theory, application and generalization of the "sparsity paradigm": Sparsity-driven data sensing and processing; Union of low dimensional subspaces; Beyond linear and convex inverse problem; Matrix/manifold/graph sensing/processing; Blind inverse problems and dictionary learning; Sparsity and computational neuroscience; Information theory, geometry and randomness; Complexity/accuracy tradeoffs in numerical methods; Sparsity? What's next?; Sparse machine learning and inference.Comment: 69 pages, 24 extended abstracts, iTWIST'14 website: http://sites.google.com/site/itwist1

    Adaptive sparse coding and dictionary selection

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    Grant no. D000246/1.The sparse coding is approximation/representation of signals with the minimum number of coefficients using an overcomplete set of elementary functions. This kind of approximations/ representations has found numerous applications in source separation, denoising, coding and compressed sensing. The adaptation of the sparse approximation framework to the coding problem of signals is investigated in this thesis. Open problems are the selection of appropriate models and their orders, coefficient quantization and sparse approximation method. Some of these questions are addressed in this thesis and novel methods developed. Because almost all recent communication and storage systems are digital, an easy method to compute quantized sparse approximations is introduced in the first part. The model selection problem is investigated next. The linear model can be adapted to better fit a given signal class. It can also be designed based on some a priori information about the model. Two novel dictionary selection methods are separately presented in the second part of the thesis. The proposed model adaption algorithm, called Dictionary Learning with the Majorization Method (DLMM), is much more general than current methods. This generality allowes it to be used with different constraints on the model. Particularly, two important cases have been considered in this thesis for the first time, Parsimonious Dictionary Learning (PDL) and Compressible Dictionary Learning (CDL). When the generative model order is not given, PDL not only adapts the dictionary to the given class of signals, but also reduces the model order redundancies. When a fast dictionary is needed, the CDL framework helps us to find a dictionary which is adapted to the given signal class without increasing the computation cost so much. Sometimes a priori information about the linear generative model is given in format of a parametric function. Parametric Dictionary Design (PDD) generates a suitable dictionary for sparse coding using the parametric function. Basically PDD finds a parametric dictionary with a minimal dictionary coherence, which has been shown to be suitable for sparse approximation and exact sparse recovery. Theoretical analyzes are accompanied by experiments to validate the analyzes. This research was primarily used for audio applications, as audio can be shown to have sparse structures. Therefore, most of the experiments are done using audio signals

    Reconstruction of enhanced ultrasound images from compressed measurements

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    L'intĂ©rĂȘt de l'Ă©chantillonnage compressĂ© dans l'imagerie ultrasonore a Ă©tĂ© rĂ©cemment Ă©valuĂ© largement par plusieurs Ă©quipes de recherche. Suite aux diffĂ©rentes configurations d'application, il a Ă©tĂ© dĂ©montrĂ© que les donnĂ©es RF peuvent ĂȘtre reconstituĂ©es Ă  partir d'un faible nombre de mesures et / ou en utilisant un nombre rĂ©duit d'Ă©mission d'impulsions ultrasonores. Selon le modĂšle de l'Ă©chantillonnage compressĂ©, la rĂ©solution des images ultrasonores reconstruites Ă  partir des mesures compressĂ©es dĂ©pend principalement de trois aspects: la configuration d'acquisition, c.Ă .d. l'incohĂ©rence de la matrice d'Ă©chantillonnage, la rĂ©gularisation de l'image, c.Ă .d. l'a priori de parcimonie et la technique d'optimisation. Nous nous sommes concentrĂ©s principalement sur les deux derniers aspects dans cette thĂšse. NĂ©anmoins, la rĂ©solution spatiale d'image RF, le contraste et le rapport signal sur bruit dĂ©pendent de la bande passante limitĂ©e du transducteur d'imagerie et du phĂ©nomĂšne physique liĂ© Ă  la propagation des ondes ultrasonores. Pour surmonter ces limitations, plusieurs techniques de traitement d'image en fonction de dĂ©convolution ont Ă©tĂ© proposĂ©es pour amĂ©liorer les images ultrasonores. Dans cette thĂšse, nous proposons d'abord un nouveau cadre de travail pour l'imagerie ultrasonore, nommĂ© dĂ©convolution compressĂ©e, pour combiner l'Ă©chantillonnage compressĂ© et la dĂ©convolution. Exploitant une formulation unifiĂ©e du modĂšle d'acquisition directe, combinant des projections alĂ©atoires et une convolution 2D avec une rĂ©ponse impulsionnelle spatialement invariante, l'avantage de ce cadre de travail est la rĂ©duction du volume de donnĂ©es et l'amĂ©lioration de la qualitĂ© de l'image. Une mĂ©thode d'optimisation basĂ©e sur l'algorithme des directions alternĂ©es est ensuite proposĂ©e pour inverser le modĂšle linĂ©aire, en incluant deux termes de rĂ©gularisation exprimant la parcimonie des images RF dans une base donnĂ©e et l'hypothĂšse statistique gaussienne gĂ©nĂ©ralisĂ©e sur les fonctions de rĂ©flectivitĂ© des tissus. Nous amĂ©liorons les rĂ©sultats ensuite par la mĂ©thode basĂ©e sur l'algorithme des directions simultanĂ©es. Les deux algorithmes sont Ă©valuĂ©s sur des donnĂ©es simulĂ©es et des donnĂ©es in vivo. Avec les techniques de rĂ©gularisation, une nouvelle approche basĂ©e sur la minimisation alternĂ©e est finalement dĂ©veloppĂ©e pour estimer conjointement les fonctions de rĂ©flectivitĂ© des tissus et la rĂ©ponse impulsionnelle. Une investigation prĂ©liminaire est effectuĂ©e sur des donnĂ©es simulĂ©es.The interest of compressive sampling in ultrasound imaging has been recently extensively evaluated by several research teams. Following the different application setups, it has been shown that the RF data may be reconstructed from a small number of measurements and/or using a reduced number of ultrasound pulse emissions. According to the model of compressive sampling, the resolution of reconstructed ultrasound images from compressed measurements mainly depends on three aspects: the acquisition setup, i.e. the incoherence of the sampling matrix, the image regularization, i.e. the sparsity prior, and the optimization technique. We mainly focused on the last two aspects in this thesis. Nevertheless, RF image spatial resolution, contrast and signal to noise ratio are affected by the limited bandwidth of the imaging transducer and the physical phenomenon related to Ultrasound wave propagation. To overcome these limitations, several deconvolution-based image processing techniques have been proposed to enhance the ultrasound images. In this thesis, we first propose a novel framework for Ultrasound imaging, named compressive deconvolution, to combine the compressive sampling and deconvolution. Exploiting an unified formulation of the direct acquisition model, combining random projections and 2D convolution with a spatially invariant point spread function, the benefit of this framework is the joint data volume reduction and image quality improvement. An optimization method based on the Alternating Direction Method of Multipliers is then proposed to invert the linear model, including two regularization terms expressing the sparsity of the RF images in a given basis and the generalized Gaussian statistical assumption on tissue reflectivity functions. It is improved afterwards by the method based on the Simultaneous Direction Method of Multipliers. Both algorithms are evaluated on simulated and in vivo data. With regularization techniques, a novel approach based on Alternating Minimization is finally developed to jointly estimate the tissue reflectivity function and the point spread function. A preliminary investigation is made on simulated data

    Sparsity Methods for Systems and Control

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    The method of sparsity has been attracting a lot of attention in the fields related not only to signal processing, machine learning, and statistics, but also systems and control. The method is known as compressed sensing, compressive sampling, sparse representation, or sparse modeling. More recently, the sparsity method has been applied to systems and control to design resource-aware control systems. This book gives a comprehensive guide to sparsity methods for systems and control, from standard sparsity methods in finite-dimensional vector spaces (Part I) to optimal control methods in infinite-dimensional function spaces (Part II). The primary objective of this book is to show how to use sparsity methods for several engineering problems. For this, the author provides MATLAB programs by which the reader can try sparsity methods for themselves. Readers will obtain a deep understanding of sparsity methods by running these MATLAB programs. Sparsity Methods for Systems and Control is suitable for graduate level university courses, though it should also be comprehendible to undergraduate students who have a basic knowledge of linear algebra and elementary calculus. Also, especially part II of the book should appeal to professional researchers and engineers who are interested in applying sparsity methods to systems and control

    Towards Fast and High-quality Biomedical Image Reconstruction

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    Department of Computer Science and EngineeringReconstruction is an important module in the image analysis pipeline with purposes of isolating the majority of meaningful information that hidden inside the acquired data. The term ???reconstruction??? can be understood and subdivided in several specific tasks in different modalities. For example, in biomedical imaging, such as Computed Tomography (CT), Magnetic Resonance Image (MRI), that term stands for the transformation from the, possibly fully or under-sampled, spectral domains (sinogram for CT and k-space for MRI) to the visible image domains. Or, in connectomics, people usually refer it to segmentation (reconstructing the semantic contact between neuronal connections) or denoising (reconstructing the clean image). In this dissertation research, I will describe a set of my contributed algorithms from conventional to state-of-the-art deep learning methods, with a transition at the data-driven dictionary learning approaches that tackle the reconstruction problems in various image analysis tasks.clos

    Advances in Image Processing, Analysis and Recognition Technology

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    For many decades, researchers have been trying to make computers’ analysis of images as effective as the system of human vision is. For this purpose, many algorithms and systems have previously been created. The whole process covers various stages, including image processing, representation and recognition. The results of this work can be applied to many computer-assisted areas of everyday life. They improve particular activities and provide handy tools, which are sometimes only for entertainment, but quite often, they significantly increase our safety. In fact, the practical implementation of image processing algorithms is particularly wide. Moreover, the rapid growth of computational complexity and computer efficiency has allowed for the development of more sophisticated and effective algorithms and tools. Although significant progress has been made so far, many issues still remain, resulting in the need for the development of novel approaches
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