Fear conditioning is a behavioral paradigm of learning to predict aversive events. It is a form of associative learning that memorizes an undesirable stimulus (e.g., an electrical shock) and a neutral stimulus (e.g., a tone), resulting in a fear response (such as running away) to the originally neutral stimulus. The association of concurrent events is implemented by strengthening the synaptic connection between the neurons. In this paper, with an analogous methodology, we reproduce the classic fear conditioning experiment of rats using mobile robots and a neuromorphic system. In our design, the acceleration from a vibration platform substitutes the undesirable stimulus in rats. Meanwhile, the brightness of light (dark vs. light) is used for...
Learning the relationships between aversive events and the environmental stimuli that predict such e...
A central question in the study of LTP has been to determine what role it plays in memory formation ...
© 2016, Springer Science+Business Media New York.In this paper, we present the next step in our appr...
Fear conditioning is a behavioral paradigm of learning to predict aversive events. It is a form of a...
This work proposes a theoretical architectural model based on the brain's fear learning system with ...
In this work, we present a neurocomputational model for auditory-cue fear acquisition. Computational...
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 propose an unsupervised neural network allowing a robot to learn sensory-motor ass...
Image motion due to self motion is an important cue biological systems use for gathering information...
© 2017 by SCITEPRESS - Science and Technology Publications, Lda. All Rights Reserved. In this paper ...
Neuromorphic computing aims to mimic the computational principles of the brain in silico and has mot...
In this paper, we optimize the predictive performance of a Situation-Aware FEar Learning model (SAFE...
To enable robots to cope with unforeseen situations, as well as the noise and variation inherent in ...
My dissertation focuses on three research problems to investigate how the robot's behavior leads to ...
Learning the relationships between aversive events and the environmental stimuli that predict such e...
A central question in the study of LTP has been to determine what role it plays in memory formation ...
© 2016, Springer Science+Business Media New York.In this paper, we present the next step in our appr...
Fear conditioning is a behavioral paradigm of learning to predict aversive events. It is a form of a...
This work proposes a theoretical architectural model based on the brain's fear learning system with ...
In this work, we present a neurocomputational model for auditory-cue fear acquisition. Computational...
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 propose an unsupervised neural network allowing a robot to learn sensory-motor ass...
Image motion due to self motion is an important cue biological systems use for gathering information...
© 2017 by SCITEPRESS - Science and Technology Publications, Lda. All Rights Reserved. In this paper ...
Neuromorphic computing aims to mimic the computational principles of the brain in silico and has mot...
In this paper, we optimize the predictive performance of a Situation-Aware FEar Learning model (SAFE...
To enable robots to cope with unforeseen situations, as well as the noise and variation inherent in ...
My dissertation focuses on three research problems to investigate how the robot's behavior leads to ...
Learning the relationships between aversive events and the environmental stimuli that predict such e...
A central question in the study of LTP has been to determine what role it plays in memory formation ...
© 2016, Springer Science+Business Media New York.In this paper, we present the next step in our appr...