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Autori principali: Nguyen, Phat, Wang, Tsun-Hsuan, Hong, Zhang-Wei, Aasi, Erfan, Silva, Andrew, Rosman, Guy, Karaman, Sertac, Rus, Daniela
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2511.04769
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author Nguyen, Phat
Wang, Tsun-Hsuan
Hong, Zhang-Wei
Aasi, Erfan
Silva, Andrew
Rosman, Guy
Karaman, Sertac
Rus, Daniela
author_facet Nguyen, Phat
Wang, Tsun-Hsuan
Hong, Zhang-Wei
Aasi, Erfan
Silva, Andrew
Rosman, Guy
Karaman, Sertac
Rus, Daniela
contents Simulation plays a key role in scaling robot learning and validating policies, but constructing simulations remains a labor-intensive process. This paper introduces ReGen, a generative simulation framework that automates simulation design via inverse design. Given a robot's behavior -- such as a motion trajectory or an objective function -- and its textual description, ReGen infers plausible scenarios and environments that could have caused the behavior. ReGen leverages large language models to synthesize scenarios by expanding a directed graph that encodes cause-and-effect relationships, relevant entities, and their properties. This structured graph is then translated into a symbolic program, which configures and executes a robot simulation environment. Our framework supports (i) augmenting simulations based on ego-agent behaviors, (ii) controllable, counterfactual scenario generation, (iii) reasoning about agent cognition and mental states, and (iv) reasoning with distinct sensing modalities, such as braking due to faulty GPS signals. We demonstrate ReGen in autonomous driving and robot manipulation tasks, generating more diverse, complex simulated environments compared to existing simulations with high success rates, and enabling controllable generation for corner cases. This approach enhances the validation of robot policies and supports data or simulation augmentation, advancing scalable robot learning for improved generalization and robustness. We provide code and example videos at: https://regen-sim.github.io/
format Preprint
id arxiv_https___arxiv_org_abs_2511_04769
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ReGen: Generative Robot Simulation via Inverse Design
Nguyen, Phat
Wang, Tsun-Hsuan
Hong, Zhang-Wei
Aasi, Erfan
Silva, Andrew
Rosman, Guy
Karaman, Sertac
Rus, Daniela
Robotics
Simulation plays a key role in scaling robot learning and validating policies, but constructing simulations remains a labor-intensive process. This paper introduces ReGen, a generative simulation framework that automates simulation design via inverse design. Given a robot's behavior -- such as a motion trajectory or an objective function -- and its textual description, ReGen infers plausible scenarios and environments that could have caused the behavior. ReGen leverages large language models to synthesize scenarios by expanding a directed graph that encodes cause-and-effect relationships, relevant entities, and their properties. This structured graph is then translated into a symbolic program, which configures and executes a robot simulation environment. Our framework supports (i) augmenting simulations based on ego-agent behaviors, (ii) controllable, counterfactual scenario generation, (iii) reasoning about agent cognition and mental states, and (iv) reasoning with distinct sensing modalities, such as braking due to faulty GPS signals. We demonstrate ReGen in autonomous driving and robot manipulation tasks, generating more diverse, complex simulated environments compared to existing simulations with high success rates, and enabling controllable generation for corner cases. This approach enhances the validation of robot policies and supports data or simulation augmentation, advancing scalable robot learning for improved generalization and robustness. We provide code and example videos at: https://regen-sim.github.io/
title ReGen: Generative Robot Simulation via Inverse Design
topic Robotics
url https://arxiv.org/abs/2511.04769