This paper presents a method for observational learning in autonomous agents. A formalism based on deep learning implementations of variational methods and Bayesian filtering theory is presented. It is explained how the proposed method is capable of modeling the environment to mimic behaviors in an observed interaction by building internal representations and discovering temporal and causal relations. The method is evaluated in a typical surveillance scenario, i.e., perimeter monitoring. It is shown that the vehicle learns how to drive itself by simultaneously observing its surroundings and the actions taken by a human driver for a given task. That is achieved by embedding knowledge regarding perception-action couplings in dynamic represent...
In this work, we present a method for building grounded representations by structuring the sensorimo...
In this work, we present a method for building grounded representations by structuring the sensorimo...
In this work, we present a method for building grounded representations by structuring the sensorimo...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
\u3cp\u3eThis paper presents a method for observational learning in autonomous agents. A formalism b...
Current deep learning based autonomous driving approaches yield impressive results also leading to i...
This paper presents a novel approach for learning self-awareness models for autonomous vehicles. Pro...
Current deep learning based autonomous driving approaches yield impressive results also leading to i...
In this work, we present a method for building grounded representations by structuring the sensorimo...
Autonomous driving vehicles (ADVs) are sleeping giant intelligent machines that perceive their envir...
Abstract—Models of the human driving behavior are essential for the rapid prototyping of assistance ...
In this work, we present a method for building grounded representations by structuring the sensorimo...
In this work, we present a method for building grounded representations by structuring the sensorimo...
In this work, we present a method for building grounded representations by structuring the sensorimo...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
This paper presents a method for observational learning in autonomous agents. A formalism based on d...
\u3cp\u3eThis paper presents a method for observational learning in autonomous agents. A formalism b...
Current deep learning based autonomous driving approaches yield impressive results also leading to i...
This paper presents a novel approach for learning self-awareness models for autonomous vehicles. Pro...
Current deep learning based autonomous driving approaches yield impressive results also leading to i...
In this work, we present a method for building grounded representations by structuring the sensorimo...
Autonomous driving vehicles (ADVs) are sleeping giant intelligent machines that perceive their envir...
Abstract—Models of the human driving behavior are essential for the rapid prototyping of assistance ...
In this work, we present a method for building grounded representations by structuring the sensorimo...
In this work, we present a method for building grounded representations by structuring the sensorimo...
In this work, we present a method for building grounded representations by structuring the sensorimo...