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Dive into the research topics where Aura Hernández-Sabaté is active.

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Featured researches published by Aura Hernández-Sabaté.


IEEE Transactions on Medical Imaging | 2010

A Normalized Framework for the Design of Feature Spaces Assessing the Left Ventricular Function

Jaume Garcia-Barnes; Debora Gil; L. Badiella; Aura Hernández-Sabaté; Francesc Carreras; S. Pujades; Enric Martí

A through description of the left ventricle functionality requires combining complementary regional scores. A main limitation is the lack of multiparametric normality models oriented to the assessment of regional wall motion abnormalities (RWMA). This paper covers two main topics involved in RWMA assessment. We propose a general framework allowing the fusion and comparison across subjects of different regional scores. Our framework is used to explore which combination of regional scores (including 2-D motion and strains) is better suited for RWMA detection. Our statistical analysis indicates that for a proper (within interobserver variability) identification of RWMA, models should consider motion and extreme strains.


IEEE Transactions on Ultrasonics Ferroelectrics and Frequency Control | 2011

Image-based cardiac phase retrieval in intravascular ultrasound sequences

Aura Hernández-Sabaté; Debora Gil; Jaume Garcia-Barnes; Enric Martí

Longitudinal motion during in vivo pullbacks acquisition of intravascular ultrasound (IVUS) sequences is a major artifact for 3-D exploring of coronary arteries. Most current techniques are based on the electrocardiogram (ECG) signal to obtain a gated pullback without longitudinal motion by using specific hardware or the ECG signal itself. We present an image-based approach for cardiac phase retrieval from coronary IVUS sequences without an ECG signal. A signal reflecting cardiac motion is computed by exploring the image intensity local mean evolution. The signal is filtered by a band-pass filter centered at the main cardiac frequency. Phase is retrieved by computing signal extrema. The average frame processing time using our setup is 36 ms. Comparison to manually sampled sequences encourages a deeper study comparing them to ECG signals.


IEEE Transactions on Medical Imaging | 2009

Approaching Artery Rigid Dynamics in IVUS

Aura Hernández-Sabaté; Debora Gil; Eduard Fernandez-Nofrerias; Petia Radeva; Enric Martí

Tissue biomechanical properties (like strain and stress) are playing an increasing role in diagnosis and long-term treatment of intravascular coronary diseases. Their assessment strongly relies on estimation of vessel wall deformation. Since intravascular ultrasound (IVUS) sequences allow visualizing vessel morphology and reflect its dynamics, this technique represents a useful tool for evaluation of tissue mechanical properties. Image misalignment introduced by vessel-catheter motion is a major artifact for a proper tracking of tissue deformation. In this work, we focus on compensating and assessing IVUS rigid in-plane motion due to heart beating. Motion parameters are computed by considering both the vessel geometry and its appearance in the image. Continuum mechanics laws serve to introduce a novel score measuring motion reduction in in vivo sequences. Synthetic experiments validate the proposed score as measure of motion parameters accuracy; whereas results in in vivo pullbacks show the reliability of the presented methodologies in clinical cases.


Proceedings of SPIE | 2010

Manifold parametrization of the left ventricle for a statistical modelling of its complete anatomy

Debora Gil; Jaume Garcia-Barnes; Aura Hernández-Sabaté; Enric Martí

Distortion of Left Ventricle (LV) external anatomy is related to some dysfunctions, such as hypertrophy. The architecture of myocardial fibers determines LV electromechanical activation patterns as well as mechanics. Thus, their joined modelling would allow the design of specific interventions (such as peacemaker implantation and LV remodelling) and therapies (such as resynchronization). On one hand, accurate modelling of external anatomy requires either a dense sampling or a continuous infinite dimensional approach, which requires non-Euclidean statistics. On the other hand, computation of fiber models requires statistics on Riemannian spaces. Most approaches compute separate statistical models for external anatomy and fibers architecture. In this work we propose a general mathematical framework based on differential geometry concepts for computing a statistical model including, both, external and fiber anatomy. Our framework provides a continuous approach to external anatomy supporting standard statistics. We also provide a straightforward formula for the computation of the Riemannian fiber statistics. We have applied our methodology to the computation of complete anatomical atlas of canine hearts from diffusion tensor studies. The orientation of fibers over the average external geometry agrees with the segmental description of orientations reported in the literature.


international conference on computer vision | 2012

A complete confidence framework for optical flow

Patricia Márquez-Valle; Debora Gil; Aura Hernández-Sabaté

Assessing the performance of optical flow in the absence of ground truth is of prime importance for a correct interpretation and application. Thus, in recent years, the interest in developing confidence measures has increased. However, by its complexity, assessing the capability of such measures for detecting areas of poor performance of optical flow is still unsolved. We define a confidence measure in the context of numerical stability of the optical flow scheme and also a protocol for assessing its capability to discard areas of non-reliable flows. Results on the Middlebury database validate our framework and show that, unlike existing measures, our measure is not biased towards any particular image feature.


computer analysis of images and patterns | 2009

Structure-Preserving Smoothing of Biomedical Images

Debora Gil; Aura Hernández-Sabaté; Mireia Burnat; Steven Jansen; Jordi Martínez-Villalta

Smoothing of biomedical images should preserve gray-level transitions between adjacent tissues, while restoring contours consistent with anatomical structures. Anisotropic diffusion operators are based on image appearance discontinuities (either local or contextual) and might fail at weak inter-tissue transitions. Meanwhile, the output of block-wise and morphological operations is prone to present a block structure due to the shape and size of the considered pixel neighborhood. In this contribution, we use differential geometry concepts to define a diffusion operator that restricts to image consistent level-sets. In this manner, the final state is a non-uniform intensity image presenting homogeneous inter-tissue transitions along anatomical structures, while smoothing intra-structure texture. Experiments on different types of medical images (magnetic resonance, computerized tomography) illustrate its benefit on a further process (such as segmentation) of images.


Knowledge Based Systems | 2017

Decremental Generalized Discriminative Common Vectors applied to images classification

Katerine Diaz-Chito; Jesus Martinez del Rincon; Aura Hernández-Sabaté

Abstract In this paper, a novel decremental subspace-based learning method called Decremental Generalized Discriminative Common Vectors method (DGDCV) is presented. The method makes use of the concept of decremental learning, which we introduce in the field of supervised feature extraction and classification. By efficiently removing unnecessary data and/or classes for a knowledge base, our methodology is able to update the model without recalculating the full projection or accessing to the previously processed training data, while retaining the previously acquired knowledge. The proposed method has been validated in 6 standard face recognition datasets, showing a considerable computational gain without compromising the accuracy of the model.


international conference on computer vision | 2013

Evaluation of the Capabilities of Confidence Measures for Assessing Optical Flow Quality

Patricia Márquez-Valle; Debora Gil; Aura Hernández-Sabaté

Assessing Optical Flow (OF) quality is essential for its further use in reliable decision support systems. The absence of ground truth in such situations leads to the computation of OF Confidence Measures (CM) obtained from either input or output data. A fair comparison across the capabilities of the different CM for bounding OF error is required in order to choose the best OF-CM pair for discarding points where OF computation is not reliable. This paper presents a statistical probabilistic framework for assessing the quality of a given CM. Our quality measure is given in terms of the percentage of pixels whose OF error bound can not be determined by CM values. We also provide statistical tools for the computation of CM values that ensures a given accuracy of the flow field.


computer analysis of images and patterns | 2011

Inferring the performance of medical imaging algorithms

Aura Hernández-Sabaté; Debora Gil; David Roche; Monica Mitiko Soares Matsumoto; Sergio Shiguemi Furuie

Evaluation of the performance and limitations of medical imaging algorithms is essential to estimate their impact in social, economic or clinical aspects. However, validation of medical imaging techniques is a challenging task due to the variety of imaging and clinical problems involved, as well as, the difficulties for systematically extracting a reliable solely ground truth. Although specific validation protocols are reported in any medical imaging paper, there are still two major concerns: definition of standardized methodologies transversal to all problems and generalization of conclusions to the whole clinical data set. We claim that both issues would be fully solved if we had a statistical model relating ground truth and the output of computational imaging techniques. Such a statistical model could conclude to what extent the algorithm behaves like the ground truth from the analysis of a sampling of the validation data set. We present a statistical inference framework reporting the agreement and describing the relationship of two quantities. We show its transversality by applying it to validation of two different tasks: contour segmentation and landmark correspondence.


5th International Workshop on Statistical Atlases and Computational Models of the Heart (STACOM 2014), September 18, 2014, Boston, MA, USA | 2014

Factors Affecting Optical Flow Performance in Tagging Magnetic Resonance Imaging

Patricia Márquez-Valle; Hb Hanne Kause; Andrea Fuster; Aura Hernández-Sabaté; Lmj Luc Florack; Debora Gil; Hc Hans van Assen

Changes in cardiac deformation patterns are correlated with cardiac pathologies. Deformation can be extracted from tagging Magnetic Resonance Imaging (tMRI) using Optical Flow (OF) techniques. For applications of OF in a clinical setting it is important to assess to what extent the performance of a particular OF method is stable across different clinical acquisition artifacts. This paper presents a statistical validation framework, based on ANOVA, to assess the motion and appearance factors that have the largest influence on OF accuracy drop. In order to validate this framework, we created a database of simulated tMRI data including the most common artifacts of MRI and test three different OF methods, including HARP.

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Dive into the Aura Hernández-Sabaté's collaboration.

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Debora Gil

Autonomous University of Barcelona

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Patricia Márquez-Valle

Autonomous University of Barcelona

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Enric Martí

Autonomous University of Barcelona

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Katerine Diaz-Chito

Autonomous University of Barcelona

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Lluís Albarracín

Autonomous University of Barcelona

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Núria Gorgorió

Autonomous University of Barcelona

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Jaume Garcia-Barnes

Autonomous University of Barcelona

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Jaume Rocarias

Autonomous University of Barcelona

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