In order to proceed along an action sequence, an autonomous agent has to recognize that the intended final condition of the previous action has been achieved. In previous work, we have shown how a sequence of actions can be generated by an embodied agent using a neural-dynamic architecture for behavioral organization, in which each action has an intention and condition of satisfaction. These components are represented by dynamic neural fields, and are coupled to motors and sensors of the robotic agent.Here,we demonstratehowthemappings between intended actions and their resulting conditions may be learned, rather than pre-wired.We use reward-gated associative learning, in which, over many instances of externally validated goal achievement, t...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
In this paper we present results of our ongoing research on non-verbal human-robot interaction that ...
Abstract—Robotic researchers face fundamental challenges when designing autonomous humanoid robots, ...
In order to proceed along an action sequence, an autonomous agent has to recognize that the intended...
Abstract—A core requirement for autonomous robotic agents is that they be able to initiate actions t...
To exhibit intelligent behavior, cognitive robots must have some knowledge about the consequences of...
To exhibit intelligent behavior, cognitive robots must have some knowledge about the consequences o...
This tutorial presents an architecture for autonomous robots to generate behavior in joint action ta...
This tutorial presents an architecture for autonomous robots to generate behavior in joint action ta...
AbstractDistal reward refers to a class of problems where reward is temporally distal from actions t...
Abstract — Our everyday, common sense ability to discern the intentions of others ’ from their motio...
Abstract—How sequences of actions are learned, remembered, and generated is a core problem of cognit...
The modelling of cognition is playing a major role in robotics. Indeed, robots need to learn, adapt ...
Abstract. We present here a simulated model of a mobile Kuka Youbot which makes use of Dynamic Field...
Building robots that are able to efficiently operate in the real world is a formidable challenge. Fu...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
In this paper we present results of our ongoing research on non-verbal human-robot interaction that ...
Abstract—Robotic researchers face fundamental challenges when designing autonomous humanoid robots, ...
In order to proceed along an action sequence, an autonomous agent has to recognize that the intended...
Abstract—A core requirement for autonomous robotic agents is that they be able to initiate actions t...
To exhibit intelligent behavior, cognitive robots must have some knowledge about the consequences of...
To exhibit intelligent behavior, cognitive robots must have some knowledge about the consequences o...
This tutorial presents an architecture for autonomous robots to generate behavior in joint action ta...
This tutorial presents an architecture for autonomous robots to generate behavior in joint action ta...
AbstractDistal reward refers to a class of problems where reward is temporally distal from actions t...
Abstract — Our everyday, common sense ability to discern the intentions of others ’ from their motio...
Abstract—How sequences of actions are learned, remembered, and generated is a core problem of cognit...
The modelling of cognition is playing a major role in robotics. Indeed, robots need to learn, adapt ...
Abstract. We present here a simulated model of a mobile Kuka Youbot which makes use of Dynamic Field...
Building robots that are able to efficiently operate in the real world is a formidable challenge. Fu...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
In this paper we present results of our ongoing research on non-verbal human-robot interaction that ...
Abstract—Robotic researchers face fundamental challenges when designing autonomous humanoid robots, ...