Francisco Martinez-Gil

Orcid: 0000-0002-2795-2816

According to our database1, Francisco Martinez-Gil authored at least 12 papers between 2008 and 2019.

Collaborative distances:
  • Dijkstra number2 of four.
  • Erdős number3 of four.

Timeline

Legend:

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PhD thesis 
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Links

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Bibliography

2019
Procedural Location of Roads Using Desire Paths.
Proceedings of the XXIX Spanish Computer Graphics Conference, 2019

2017
Emergent behaviors and scalability for multi-agent reinforcement learning-based pedestrian models.
Simul. Model. Pract. Theory, 2017

Modeling, Evaluation, and Scale on Artificial Pedestrians: A Literature Review.
ACM Comput. Surv., 2017

2016
MARL-Ped+Hitmap: Towards Improving Agent-Based Simulations with Distributed Arrays.
Proceedings of the Algorithms and Architectures for Parallel Processing, 2016

Phase Space Data-Driven Simulation of Elastic Materials.
Proceedings of the XXVI Spanish Computer Graphics Conference, 2016

2015
Strategies for simulating pedestrian navigation with multiple reinforcement learning agents.
Auton. Agents Multi Agent Syst., 2015

2014
MARL-Ped: A multi-agent reinforcement learning based framework to simulate pedestrian groups.
Simul. Model. Pract. Theory, 2014

Emergent Collective Behaviors in a Multi-agent Reinforcement Learning Pedestrian Simulation: A Case Study.
Proceedings of the Multi-Agent-Based Simulation XV - International Workshop, 2014

2012
Calibrating a Motion Model Based on Reinforcement Learning for Pedestrian Simulation.
Proceedings of the Motion in Games - 5th International Conference, 2012

2011
Multi-agent Reinforcement Learning for Simulating Pedestrian Navigation.
Proceedings of the Adaptive and Learning Agents - International Workshop, 2011

2010
A Reinforcement Learning Approach for Multiagent Navigation.
Proceedings of the ICAART 2010 - Proceedings of the International Conference on Agents and Artificial Intelligence, Volume 1, 2010

2008
Agent's actions as a classification criteria for the state space in a learning from rewards system.
J. Exp. Theor. Artif. Intell., 2008


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