61 research outputs found

    Making use of partial knowledge about hidden states in HMMs : an approach based on belief functions.

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    International audienceThis paper addresses the problem of parameter estimation and state prediction in Hidden Markov Models (HMMs) based on observed outputs and partial knowledge of hidden states expressed in the belief function framework. The usual HMM model is recovered when the belief functions are vacuous. Parameters are learnt using the Evidential Expectation- Maximization algorithm, a recently introduced variant of the Expectation-Maximization algorithm for maximum likelihood estimation based on uncertain data. The inference problem, i.e., finding the most probable sequence of states based on observed outputs and partial knowledge of states, is also addressed. Experimental results demonstrate that partial information about hidden states, when available, may substantially improve the estimation and prediction performances

    Simultaneous motion detection and background reconstruction with a conditional mixed-state markov random field

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    In this work we present a new way of simultaneously solving the problems of motion detection and background image reconstruction. An accurate estimation of the background is only possible if we locate the moving objects. Meanwhile, a correct motion detection is achieved if we have a good available background model. The key of our joint approach is to define a single random process that can take two types of values, instead of defining two different processes, one symbolic (motion detection) and one numeric (background intensity estimation). It thus allows to exploit the (spatio-temporal) interaction between a decision (motion detection) and an estimation (intensity reconstruction) problem. Consequently, the meaning of solving both tasks jointly, is to obtain a single optimal estimate of such a process. The intrinsic interaction and simultaneity between both problems is shown to be better modeled within the so-called mixed-state statistical framework, which is extended here to account for symbolic states and conditional random fields. Experiments on real sequences and comparisons with existing motion detection methods support our proposal. Further implications for video sequence inpainting will be also discussed. © 2011 Springer Science+Business Media, LLC.postprin

    Semi-Huber Half Quadratic Function and Comparative Study of Some MRFs for Bayesian Image Restoration

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    The present work introduces an alternative method to deal with digital image restoration into a Bayesian framework, particularly, the use of a new half-quadratic function is proposed which performance is satisfactory compared with respect to some other functions in existing literature. The bayesian methodology is based on the prior knowledge of some information that allows an efficient modelling of the image acquisition process. The edge preservation of objects into the image while smoothing noise is necessary in an adequate model. Thus, we use a convexity criteria given by a semi-Huber function to obtain adequate weighting of the cost functions (half-quadratic) to be minimized. The principal objective when using Bayesian methods based on the Markov Random Fields (MRF) in the context of image processing is to eliminate those effects caused by the excessive smoothness on the reconstruction process of image which are rich in contours or edges. A comparison between the new introduced scheme and other three existing schemes, for the cases of noise filtering and image deblurring, is presented. This collection of implemented methods is inspired of course on the use of MRFs such as the semi-Huber, the generalized Gaussian, the Welch, and Tukey potential functions with granularity control. The obtained results showed a satisfactory performance and the effectiveness of the proposed estimator with respect to other three estimators

    Markov models in image processing

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    The aim of this paper is to present some aspects of Markov model based statistical image processing. After a brief review of statistical processing in image segmentation, classical Markov models (fields, chains, and trees) used in image processing are developed. Bayesian methods of segmentation are then described and different general parameter estimation methods are presented. More recent models and processing techniques, such as Pairwise and Triplet Markov models, Dempster-Shafer fusion in a Markov context, and generalized mixture estimation, are then discussed. We conclude with a nonexhaustive desciption of candidate extensions to multidimensional, multisensor, and multiresolution imagery. Connections with general graphical models are also highlighted.L'objet de l'article est de présenter divers aspects des traitements statistiques des images utilisant des modèles de Markov. En choisissant pour cadre la segmentation statistique nous rappelons brièvement la nature et l'intérêt des traitements probabilistes et présentons les modèles de Markov cachés classiques : champs, chaînes, et arbres. Les méthodes bayésiennes de segmentation sont décrites, ainsi que les grandes familles des méthodes d'apprentissage. Quelques modèles ou méthodes de traitements plus récents comme les modèles de Markov Couple et Triplet, la fusion de Dempster-Shafer dans le contexte markovien, ou l'estimation des mélanges généralisés sont également présentés. Nous terminons par une liste non exhaustive des divers prolongements des méthodes et modèles vers l'imagerie multidimensionnelle, multisenseurs, multirésolution. Des liens avec les modèles graphiques généraux sont également brièvement décrits

    Estimating Latent Attentional States Based on Simultaneous Binary and Continuous Behavioral Measures

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    Cognition is a complex and dynamic process. It is an essential goal to estimate latent attentional states based on behavioral measures in many sequences of behavioral tasks. Here, we propose a probabilistic modeling and inference framework for estimating the attentional state using simultaneous binary and continuous behavioral measures. The proposed model extends the standard hidden Markov model (HMM) by explicitly modeling the state duration distribution, which yields a special example of the hidden semi-Markov model (HSMM). We validate our methods using computer simulations and experimental data. In computer simulations, we systematically investigate the impacts of model mismatch and the latency distribution. For the experimental data collected from a rodent visual detection task, we validate the results with predictive log-likelihood. Our work is useful for many behavioral neuroscience experiments, where the common goal is to infer the discrete (binary or multinomial) state sequences from multiple behavioral measures

    Semi-Huber quadratic function and comparative study of some MRFs for Bayesian image restoration

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    The present work introduces an alternative method to deal with digital image restoration into a Bayesian framework, particularly, the use of a new half-quadratic function is proposed which performance is satisfactory compared with respect to some other functions in existing literature. The bayesian methodology is based on the prior knowledge of some information that allows an efficient modelling of the image acquisition process. The edge preservation of objects into the image while smoothing noise is necessary in an adequate model. Thus, we use a convexity criteria given by a semi-Huber function to obtain adequate weighting of the cost functions (half-quadratic) to be minimized. The principal objective when using Bayesian methods based on the Markov Random Fields (MRF) in the context of image processing is to eliminate those effects caused by the excessive smoothness on the reconstruction process of image which are rich in contours or edges. A comparison between the new introduced scheme and other three existing schemes, for the cases of noise filtering and image deblurring, is presented. This collection of implemented methods is inspired of course on the use of MRFs such as the semi-Huber, the generalized Gaussian, the Welch, and Tukey potential functions with granularity control. The obtained results showed a satisfactory performance and the effectiveness of the proposed estimator with respect to other three estimators
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