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[RE] MEDIRL Maximum Entropy Deep Inverse Reinforcement Learning for Human Social Navigation #79

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nihalgunu opened this issue Dec 7, 2023 · 3 comments

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@nihalgunu
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Original article:
Learning How Pedestrians Navigate: A Deep Inverse Reinforcement Learning Approach
https://par.nsf.gov/servlets/purl/10111828

PDF URL:
https://drive.google.com/file/d/1Ud4husXegrcooQWrjyjaH6UPsevW_7Su/view

Metadata URL:
https://docs.google.com/document/d/1jJngE8_9QGPyu3Q6PxKqrhVrpmbVvS5FblQiwc2DgSs/edit?usp=sharing

Code URL:
https://dagshub.com/ML-Purdue/hackathonf23-Stacks

Scientific domain:
Data-Driven Approach to Human Social Navigation, Human-Robot Interaction within Navigation, Deep Inverse Reinforcement Learning
Programming language:
Python
Suggested editor:

@rougier
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rougier commented Dec 13, 2023

Thanks for your sublmission, we'll assign an editor soon. @koustuvsinha or @gdetor Can you handle this submission?

@vingupta22
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Hey @rougier, I'm the co-author of this paper, is there any update for the review?

@rougier
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rougier commented Feb 5, 2024

@vingupta22 Sorry for delay. No update so far.
@koustuvsinha or @gdetor, can you handle this submission?

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