AbstractThis work proposes a novel Situation-Aware FEar Learning (SAFEL) model for robots. SAFEL combines concepts of situation-aware expert systems with well-known neuroscientific findings on the brain fear-learning mechanism to allow companion robots to predict undesirable or threatening situations based on past experiences. One of the main objectives is to allow robots to learn complex temporal patterns of sensed environmental stimuli and create a representation of these patterns. This memory can be later associated with a negative or positive “emotion”, analogous to fear and confidence. Experiments with a real robot demonstrated SAFEL's success in generating contextual fear conditioning behavior with predictive capabilities based on sit...
The experience of fear is closely linked to the survival of species. Fear can be conceptualized as a...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
peer reviewedFuture autonomous service robots are intended to operate in open and complex environme...
AbstractThis work proposes a novel Situation-Aware FEar Learning (SAFEL) model for robots. SAFEL com...
This work proposes a novel Situation-Aware FEar Learning (SAFEL) model for robots. SAFEL combines co...
In this paper, we optimize the predictive performance of a Situation-Aware FEar Learning model (SAFE...
This thesis proposes a novel and robust online adaptation mechanism for threat prediction and preven...
This work proposes a theoretical architectural model based on the brain's fear learning system with ...
Currently artificial emotions are being extensively used in robots. Most of these implementations ar...
In this work, we present a neurocomputational model for auditory-cue fear acquisition. Computational...
In this paper, we address the stagnation of RoboCup com- petitions in the fields of contextual perce...
Fear conditioning is a behavioral paradigm of learning to predict aversive events. It is a form of a...
<p>An inescapable component to survival in a dynamic environment is detecting and reacting to signal...
Contextual fear conditioning is thought to involve the synaptic plasticity-dependent establishment i...
As the capabilities of robotic systems increase, we move closer to the vision of ubiquitous robotic ...
The experience of fear is closely linked to the survival of species. Fear can be conceptualized as a...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
peer reviewedFuture autonomous service robots are intended to operate in open and complex environme...
AbstractThis work proposes a novel Situation-Aware FEar Learning (SAFEL) model for robots. SAFEL com...
This work proposes a novel Situation-Aware FEar Learning (SAFEL) model for robots. SAFEL combines co...
In this paper, we optimize the predictive performance of a Situation-Aware FEar Learning model (SAFE...
This thesis proposes a novel and robust online adaptation mechanism for threat prediction and preven...
This work proposes a theoretical architectural model based on the brain's fear learning system with ...
Currently artificial emotions are being extensively used in robots. Most of these implementations ar...
In this work, we present a neurocomputational model for auditory-cue fear acquisition. Computational...
In this paper, we address the stagnation of RoboCup com- petitions in the fields of contextual perce...
Fear conditioning is a behavioral paradigm of learning to predict aversive events. It is a form of a...
<p>An inescapable component to survival in a dynamic environment is detecting and reacting to signal...
Contextual fear conditioning is thought to involve the synaptic plasticity-dependent establishment i...
As the capabilities of robotic systems increase, we move closer to the vision of ubiquitous robotic ...
The experience of fear is closely linked to the survival of species. Fear can be conceptualized as a...
Robots are increasingly expected to go beyond controlled environments in laboratories and factories,...
peer reviewedFuture autonomous service robots are intended to operate in open and complex environme...