In this paper, we show how a dangerousness metric can be used to modify the input of a gene regulatory network when plugged to a virtual car. In the context of the 2015 Simulated Car Racing Championship organized during GECCO 2015, we have developed a new cartography methodology able to inform the controller of the car about the incoming complexity of the track: turns (slipperiness, angle, etc.) and bumps. We show how this dangerousness metric improves the results of our controller and outperforms other approaches on the tracks used in the competition
Several different controller representations are compared on a non-trivial problem in simulated car ...
This paper addresses the problem of automatically constructing tracks tailor-made to maximize the en...
Autonomous driving is expected to significantly improve road safety. Carmakers are conducting extens...
International audienceIn this paper, we show how a dangerousness metric can be used to modify the in...
This paper presents a virtual racing car controller based on an artificial gene regulatory network. ...
This paper presents a virtual racing car controller based on an artificial gene regulatory network. ...
International audienceThis work presents a driving system designed for virtual racing situations. It...
This work presents a driving system designed for virtual racing situations. It is based on a complet...
This paper describes the evolution of controllers for racing a simulated radio-controlled car around...
Neural network-based controllers are evolved for racing simulated R/C cars around several tracks of ...
IEEE Symposium on Computational Intelligence and Games. Perth, Australia, 15-18 December 2008.The te...
Proceedings of: 10th International Conference on Parallel Problem Solving From Nature, PPSN 2008. D...
Proceeding of: IEEE Congres on Computational Intelligence and Games (CIG'10), Copenhagen (Denmark), ...
The Car Racing competition platform is used for evaluating different car control solutions under com...
Evolutionary car racing (ECR) is extended to the case of two cars racing on the same track. A sensor...
Several different controller representations are compared on a non-trivial problem in simulated car ...
This paper addresses the problem of automatically constructing tracks tailor-made to maximize the en...
Autonomous driving is expected to significantly improve road safety. Carmakers are conducting extens...
International audienceIn this paper, we show how a dangerousness metric can be used to modify the in...
This paper presents a virtual racing car controller based on an artificial gene regulatory network. ...
This paper presents a virtual racing car controller based on an artificial gene regulatory network. ...
International audienceThis work presents a driving system designed for virtual racing situations. It...
This work presents a driving system designed for virtual racing situations. It is based on a complet...
This paper describes the evolution of controllers for racing a simulated radio-controlled car around...
Neural network-based controllers are evolved for racing simulated R/C cars around several tracks of ...
IEEE Symposium on Computational Intelligence and Games. Perth, Australia, 15-18 December 2008.The te...
Proceedings of: 10th International Conference on Parallel Problem Solving From Nature, PPSN 2008. D...
Proceeding of: IEEE Congres on Computational Intelligence and Games (CIG'10), Copenhagen (Denmark), ...
The Car Racing competition platform is used for evaluating different car control solutions under com...
Evolutionary car racing (ECR) is extended to the case of two cars racing on the same track. A sensor...
Several different controller representations are compared on a non-trivial problem in simulated car ...
This paper addresses the problem of automatically constructing tracks tailor-made to maximize the en...
Autonomous driving is expected to significantly improve road safety. Carmakers are conducting extens...