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Comparing merging behaviors observed in naturalistic data with behaviors
  generated by a machine learned model

Comparing merging behaviors observed in naturalistic data with behaviors generated by a machine learned model

21 April 2021
Aravinda Ramakrishnan Srinivasan
Mohamed Hasan
Yi-Shin Lin
Matteo Leonetti
J. Billington
R. Romano
Gustav Markkula
ArXivPDFHTML

Papers citing "Comparing merging behaviors observed in naturalistic data with behaviors generated by a machine learned model"

6 / 6 papers shown
Title
Merging in a Coupled Driving Simulator: How do drivers resolve
  conflicts?
Merging in a Coupled Driving Simulator: How do drivers resolve conflicts?
Olger Siebinga
Arkady Zgonnikov
David A. Abbink
26
1
0
09 Aug 2023
Benchmark for Models Predicting Human Behavior in Gap Acceptance
  Scenarios
Benchmark for Models Predicting Human Behavior in Gap Acceptance Scenarios
J. Schumann
Jens Kober
Arkady Zgonnikov
27
10
0
10 Nov 2022
Beyond RMSE: Do machine-learned models of road user interaction produce
  human-like behavior?
Beyond RMSE: Do machine-learned models of road user interaction produce human-like behavior?
Aravinda Ramakrishnan Srinivasan
Yi-Shin Lin
Morris Antonello
Anthony Knittel
Mohamed Hasan
...
S. Ramamoorthy
Matteo Leonetti
J. Billington
R. Romano
Gustav Markkula
27
15
0
22 Jun 2022
Flash: Fast and Light Motion Prediction for Autonomous Driving with
  Bayesian Inverse Planning and Learned Motion Profiles
Flash: Fast and Light Motion Prediction for Autonomous Driving with Bayesian Inverse Planning and Learned Motion Profiles
Morris Antonello
M. Dobre
Stefano V. Albrecht
John Redford
S. Ramamoorthy
3DV
37
10
0
15 Mar 2022
A Utility Maximization Model of Pedestrian and Driver Interactions
A Utility Maximization Model of Pedestrian and Driver Interactions
Yi-Shin Lin
Aravinda Ramakrishnan Srinivasan
Matteo Leonetti
J. Billington
Gustav Markkula
18
4
0
21 Oct 2021
A human factors approach to validating driver models for
  interaction-aware automated vehicles
A human factors approach to validating driver models for interaction-aware automated vehicles
Olger Siebinga
Arkady Zgonnikov
David A. Abbink
42
24
0
27 Sep 2021
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