International audienceIn the present paper we describe a bio-inspired non von Neumann controller for a simple sensorimotor robotic system. This controller uses a bitwise version of the Gibbs sampling algorithm to select commands so the robot can adapt its course of action and avoid perceived obstacles in the environment. The VHDL specification of the circuit implementation of this controller is based on stochastic computation to perform Bayesian inference at a low energy cost. We show that the proposed unconventional architecture allows to successfully carry out the obstacle avoidance task and to address scalability issues observed in previous works
Dynamical systems theory and complexity science provide powerful tools for analysing artificial agen...
The goal of this paper is to solve the problem of dynamic obstacle avoidance for a mobile platform u...
Robotics has the potential to be one of the most revolutionary technologies in human history. The im...
International audienceThis paper presents a stochastic computing implementationof a Bayesian sensori...
International audienceBayesian models and stochastic computing form a promising paradigm for non-con...
voir basilic : http://emotion.inrialpes.fr/bibemotion/2004/BSBTCD04/ address: Dagstuhl (DE) editor: ...
We propose a new method to program robots based on Bayesian inference and learning. The capacities o...
International audienceAdvancements in autonomous robotic systems have been impeded by the lack of a ...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
Presented on February 24, 2016 at 12:00 p.m. in the TSRB Banquet Hall.Evangelos A. Theodorou is an a...
Unexpected events and not modeled properties of the robot environment are some of the challenges pre...
We propose an original method for programming robots based on Bayesian inference and learning. This ...
Manuscript initially submitted for publication to International Journal of Approximate reasoning, ac...
Evolve safely in an unchanged environment and possibly following an optimal trajectory is one big ch...
A wide variety of approaches exist for dealing with uncertainty in robotic reasoning, but relatively...
Dynamical systems theory and complexity science provide powerful tools for analysing artificial agen...
The goal of this paper is to solve the problem of dynamic obstacle avoidance for a mobile platform u...
Robotics has the potential to be one of the most revolutionary technologies in human history. The im...
International audienceThis paper presents a stochastic computing implementationof a Bayesian sensori...
International audienceBayesian models and stochastic computing form a promising paradigm for non-con...
voir basilic : http://emotion.inrialpes.fr/bibemotion/2004/BSBTCD04/ address: Dagstuhl (DE) editor: ...
We propose a new method to program robots based on Bayesian inference and learning. The capacities o...
International audienceAdvancements in autonomous robotic systems have been impeded by the lack of a ...
Directed acyclic graphs or Bayesian networks that are popular in many AI-related sectors for probabi...
Presented on February 24, 2016 at 12:00 p.m. in the TSRB Banquet Hall.Evangelos A. Theodorou is an a...
Unexpected events and not modeled properties of the robot environment are some of the challenges pre...
We propose an original method for programming robots based on Bayesian inference and learning. This ...
Manuscript initially submitted for publication to International Journal of Approximate reasoning, ac...
Evolve safely in an unchanged environment and possibly following an optimal trajectory is one big ch...
A wide variety of approaches exist for dealing with uncertainty in robotic reasoning, but relatively...
Dynamical systems theory and complexity science provide powerful tools for analysing artificial agen...
The goal of this paper is to solve the problem of dynamic obstacle avoidance for a mobile platform u...
Robotics has the potential to be one of the most revolutionary technologies in human history. The im...