Fourier Synthesis in X-ray CT, nuclear magnetic resonance (NMR) imaging or ...... 26, no. 1. ·. , pp. 1 745- 1 754, 1 987. [2] A. Mohammad-Djafari and d .
the relationships between different classification formalisms based on ... SVM formalism is, based on the training set, to trace two surfaces that best ..... The work was performed within The CNES/DLR/ENST Competence Centre on Infor-.
with quadratic growth conditions since, in this case, the coefficients of the ... ensuring that a general equation like (1) satisfies the maximum principle and then, ...
The classical smoothness constraint on the solution [1, 8], does not allow recovery ... (MAP) criterion is then minimized thanks to an optimization algorithm called.
some inverse problems such as image restoration or blind sources separation. Key Words: Uncertainty, Probabilty distribution, Information and Entropy, Maxi-.
[1] BERTERO (M.), DE MOL (C.), and PIKE (E.R.) - Linear inverse problems with discrete data : II stability and regularization. Inverse Problems, (4), 1988, p.
class of generalized entropy is introduced by that of generator functions, ... The class of generator functions is defined by .... vector µ and matrix V of size pà p.
In this way we obtain the dual quadratic optimisation problem: max α ( n .... which best suits the observed data. The equation describing this level is given by the.
Abstract. A method, which we suggest to call the Empirical Maximum Entropy method, is implicitly present at Maximum Entropy Empirical Likelihood method [1], ...
Feature selection analyses from the perspective of classification performance con- ducts to the discussion of the relationships between SVM, Bayesian and ...
Among all the possible solutions choose the one with maximum entropy ..... E. T. Jaynes, âInformation theory and statistical mechanics I,â Physical review, vol. 106 .... of dielectric and conductive materials from experimental data,â accepted i
The future of the World Wide Web is often associated with the Semantic Web initia- ... tree annotation model and training the model parameters from a training set S ... between elements in the target schema, makes the manual writing of ..... The insi
experimental data and the model predictions. In spite of the existence .... can also easily account for prior knowledge on the material properties using the prior ...
Beam forming and Deconvolution based models. â· Regularization methods. â· Proposed Bayesian inference method. â· Results on simulated and real data.
strength, for example, is now used to define the A-basis or B-basis ..... The results of the two identification procedures are presented in. Table 2. We also provide ...
The future of the World Wide Web is often associated with the Semantic Web initia- .... between elements in the target schema, makes the manual writing of ..... The inside probability is calculated recursively, by taking the maximum over all pos-.
To get the best image quality from an optical system in terms of contrast, it is required to deconvolve the image from the point spread function (PSF). For this ...
In press, Current Directions in Psychological Science. ..... Cambridge: MIT Press. ... Feldman, J. (2000) Minimization of Boolean complexity in human concept ...
with a Google earth image of the suburbs it supplies (left). .... WARNING: The ACTEW Water network infrastructure shown on the maps may be inaccurate or ...
The second principle of thermodynamics gives us a stone-solid truth: the entropy will ever grow. But, as Loschmidt has noticed to. Boltzmann, only in the average ...
right-hand side, if (an) goes to zero with density one, (1/n)ân m=1 am is less than 2ε for n large enough. â¡. We define a notion of merging in terms of expected ...