Colloque avec actes et comité de lecture. internationale.International audienceIn this paper, we propose a robust method based on Hidden Markov Models to interpret temporal sequences of sensor data from mobile robots to automatically detect features. Hidden Markov Models have been used for a long time in pattern recognition, especially in speech recognition. Their main advantages over other methods (such as neural networks) are their ability to model noisy temporal signals of variable length. We show in this paper that this approach is well suited for interpretation of temporal sequences of mobile-robot sensor data. We present two distinct experiments and results: the first one in an indoor environment where a mobile robot learns to detect ...
In this paper we propose a universal strategy for the automatic interpretation of sensor signals. We...
As mobile robots become better equipped to autonomously navigate in human-populated environments, th...
19 pages, 8 figures.-- This article belongs to the Special Issue "Sensor Algorithms".In this paper a...
Colloque avec actes et comité de lecture. internationale.International audienceIn this paper, we pro...
Abstract: In this paper, we propose a new method based on Hidden Markov Models to interpret temporal...
This paper introduces a hybrid system for modeling, learning and recognition of sequences of 'states...
In this paper we describe a machine learning approach for acquiring a model of a robot behaviour fro...
AbstractIn this paper we describe a machine learning approach for acquiring a model of a robot behav...
Whenever people move through their environments they do not move randomly. Instead, they usually fol...
This paper introduces a hybrid system for modeling, learning and recognition of sequences of “states...
For mobile robots to be successful, they have to navigate safely in populated and dynamic environmen...
Abstract—For an effective intelligent active mobility assis-tance robot, the walking pattern of a pa...
This paper describes a map representation and localization system for a mobile robot based on Hidden...
Whenever people move through their environments they do not move randomly. Instead, they usually fol...
Hidden Markov models (hmms) and partially observable Markov decision processes (pomdps) provide a us...
In this paper we propose a universal strategy for the automatic interpretation of sensor signals. We...
As mobile robots become better equipped to autonomously navigate in human-populated environments, th...
19 pages, 8 figures.-- This article belongs to the Special Issue "Sensor Algorithms".In this paper a...
Colloque avec actes et comité de lecture. internationale.International audienceIn this paper, we pro...
Abstract: In this paper, we propose a new method based on Hidden Markov Models to interpret temporal...
This paper introduces a hybrid system for modeling, learning and recognition of sequences of 'states...
In this paper we describe a machine learning approach for acquiring a model of a robot behaviour fro...
AbstractIn this paper we describe a machine learning approach for acquiring a model of a robot behav...
Whenever people move through their environments they do not move randomly. Instead, they usually fol...
This paper introduces a hybrid system for modeling, learning and recognition of sequences of “states...
For mobile robots to be successful, they have to navigate safely in populated and dynamic environmen...
Abstract—For an effective intelligent active mobility assis-tance robot, the walking pattern of a pa...
This paper describes a map representation and localization system for a mobile robot based on Hidden...
Whenever people move through their environments they do not move randomly. Instead, they usually fol...
Hidden Markov models (hmms) and partially observable Markov decision processes (pomdps) provide a us...
In this paper we propose a universal strategy for the automatic interpretation of sensor signals. We...
As mobile robots become better equipped to autonomously navigate in human-populated environments, th...
19 pages, 8 figures.-- This article belongs to the Special Issue "Sensor Algorithms".In this paper a...