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Data-Driven Crowd Simulation with Generative Adversarial Networks

Data-Driven Crowd Simulation with Generative Adversarial Networks

International Conference on Computer Animation and Social Agents (CASA), 2019
23 May 2019
Javad Amirian
W. V. Toll
J. Hayet
J. Pettré
    GAN
ArXiv (abs)PDFHTML

Papers citing "Data-Driven Crowd Simulation with Generative Adversarial Networks"

6 / 6 papers shown
Deep Learning for Cross-Domain Data Fusion in Urban Computing: Taxonomy,
  Advances, and Outlook
Deep Learning for Cross-Domain Data Fusion in Urban Computing: Taxonomy, Advances, and Outlook
Xingchen Zou
Yibo Yan
Xixuan Hao
Yuehong Hu
Haomin Wen
...
Junbo Zhang
Yong Li
Tianrui Li
Yu Zheng
Yuxuan Liang
HAIAI4TS
421
100
0
29 Feb 2024
ODEs learn to walk: ODE-Net based data-driven modeling for crowd
  dynamics
ODEs learn to walk: ODE-Net based data-driven modeling for crowd dynamicsAdaptive Agents and Multi-Agent Systems (AAMAS), 2022
Chen Cheng
Jinglai Li
75
0
0
18 Oct 2022
Safety-compliant Generative Adversarial Networks for Human Trajectory
  Forecasting
Safety-compliant Generative Adversarial Networks for Human Trajectory Forecasting
Parth Kothari
Alexandre Alahi
332
42
0
25 Sep 2022
A Perceptually-Validated Metric for Crowd Trajectory Quality Evaluation
A Perceptually-Validated Metric for Crowd Trajectory Quality EvaluationProceedings of the ACM on Computer Graphics and Interactive Techniques (PACMCGIT), 2021
Beatriz Cabrero Daniel
Ricardo Marques
Ludovic Hoyet
Julien Pettré
J. Blat
232
17
0
27 Aug 2021
Development of A Stochastic Traffic Environment with Generative
  Time-Series Models for Improving Generalization Capabilities of Autonomous
  Driving Agents
Development of A Stochastic Traffic Environment with Generative Time-Series Models for Improving Generalization Capabilities of Autonomous Driving Agents
Anil Öztürk
Mustafa Burak Gunel
Melih Dal
M. U. Yavas
N. K. Üre
240
4
0
10 Jun 2020
Crowd simulation for crisis management: the outcomes of the last decade
Crowd simulation for crisis management: the outcomes of the last decadeMachine Learning with Applications (MLWA), 2020
George K. Sidiropoulos
C. Kiourt
Lefteris Moussiades
239
26
0
01 Jun 2020
1
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