We introduce a probabilistic language and a fast inference algorithm for state estimation in hybrid dynamic relational domains with an unknown number of objects. More specifically, we apply Particle Filters to distributional clauses. The particles represent (partial) interpretations of possible worlds (with discrete and/or continuous variables) and the filter recursively updates its beliefs about the current state. We use backward reasoning to determine which facts should be included in the partial interpretations. Experiments show that our framework can outperform the classical particle filter and is promising for robotics applications.status: publishe
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Particle Filter is a significant member of the group of methods aiming to provide reasonable solutio...
© Copyright 2014 Association for the Advancement of Artificial Intelligence. All rights reserved. Ov...
We propose a probabilistic logic programming framework for the state estimation problem in dynamic r...
We introduce a probabilistic language and an efficient inference algorithm based on distributional c...
We review the Distributional Clauses Particle Filter (DCPF), a statistical relational framework for ...
We introduce a probabilistic logic programming framework to handle continuous distributions as well ...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
In this paper, we consider the problem of filtering in relational hidden Markov models. We present a...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
In recent years there has been a growing interest on particle filters for solving tracking problems,...
Artificial intelligence aims at developing agents that learn and act in complex environments. Reali...
Stochastic processes that involve the creation of objects and relations over time are widespread, bu...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Abstract. Artificial intelligence aims at developing agents that learn and act in complex environmen...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Particle Filter is a significant member of the group of methods aiming to provide reasonable solutio...
© Copyright 2014 Association for the Advancement of Artificial Intelligence. All rights reserved. Ov...
We propose a probabilistic logic programming framework for the state estimation problem in dynamic r...
We introduce a probabilistic language and an efficient inference algorithm based on distributional c...
We review the Distributional Clauses Particle Filter (DCPF), a statistical relational framework for ...
We introduce a probabilistic logic programming framework to handle continuous distributions as well ...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
In this paper, we consider the problem of filtering in relational hidden Markov models. We present a...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
In recent years there has been a growing interest on particle filters for solving tracking problems,...
Artificial intelligence aims at developing agents that learn and act in complex environments. Reali...
Stochastic processes that involve the creation of objects and relations over time are widespread, bu...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Abstract. Artificial intelligence aims at developing agents that learn and act in complex environmen...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Particle Filter is a significant member of the group of methods aiming to provide reasonable solutio...
© Copyright 2014 Association for the Advancement of Artificial Intelligence. All rights reserved. Ov...