Several approaches have been developed to estimate probability density functions (pdfs). The pdf has two important properties: the integration of pdf over whole sampling space is equal to 1 and the value of pdf in the sampling space is greater than or equal to zero. The first constraint can be easily achieved by the normalisation. On the other hand, it is hard to impose the non-negativeness in the sampling space. In a pdf estimation, some areas in the sampling space might have negative pdf values. It produces unreasonable moment values such as negative probability or variance. A transformation to guarantee the negative-free pdf over a chosen sampling space is presented and it is applied to the nonlinear projection filter. The filter approxi...
The conditional probability density function (pdf) is the most complete statistical representation o...
In this thesis we construct novel functional representations for the Probability Density Functions (...
International audienceThe aim of this paper is twofold: In the first part, we leverage recent result...
The conditional probability density function of the state of a stochastic dynamic system represents ...
Recently Kadir et al. have proposed a method for estimating probability density functions (PDF) for ...
International audienceIn statistics, it is usually difficult to estimate the probability density fun...
The purpose of this dissertation is to develop nonlinear filters and demonstrate their applications....
summary:A method for estimation of probability distribution of transformed random variables is prese...
summary:The problem of estimation of distribution functions or fractiles of non- negative random var...
A new sparse kernel probability density function (pdf) estimator based on zero-norm constraint is co...
The inherent nonlinear aspect of many practical systems and observation models is explicitly suggest...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
This paper deals with a new and systematic method of approximating exact nonlinear filters with fini...
This paper presents the theoretical development of a nonlinear adaptive filter based on a concept of...
A method to design random variable (RV) generators with the same probability density function (PDF) ...
The conditional probability density function (pdf) is the most complete statistical representation o...
In this thesis we construct novel functional representations for the Probability Density Functions (...
International audienceThe aim of this paper is twofold: In the first part, we leverage recent result...
The conditional probability density function of the state of a stochastic dynamic system represents ...
Recently Kadir et al. have proposed a method for estimating probability density functions (PDF) for ...
International audienceIn statistics, it is usually difficult to estimate the probability density fun...
The purpose of this dissertation is to develop nonlinear filters and demonstrate their applications....
summary:A method for estimation of probability distribution of transformed random variables is prese...
summary:The problem of estimation of distribution functions or fractiles of non- negative random var...
A new sparse kernel probability density function (pdf) estimator based on zero-norm constraint is co...
The inherent nonlinear aspect of many practical systems and observation models is explicitly suggest...
: We present a new and systematic method of approximating exact nonlinear filters with finite dimens...
This paper deals with a new and systematic method of approximating exact nonlinear filters with fini...
This paper presents the theoretical development of a nonlinear adaptive filter based on a concept of...
A method to design random variable (RV) generators with the same probability density function (PDF) ...
The conditional probability density function (pdf) is the most complete statistical representation o...
In this thesis we construct novel functional representations for the Probability Density Functions (...
International audienceThe aim of this paper is twofold: In the first part, we leverage recent result...