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Main Authors: Yao, Yu, Bhatnagar, Salil, Mazzola, Markus, Belagiannis, Vasileios, Gilitschenski, Igor, Palmieri, Luigi, Razniewski, Simon, Hallgarten, Marcel
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.13729
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author Yao, Yu
Bhatnagar, Salil
Mazzola, Markus
Belagiannis, Vasileios
Gilitschenski, Igor
Palmieri, Luigi
Razniewski, Simon
Hallgarten, Marcel
author_facet Yao, Yu
Bhatnagar, Salil
Mazzola, Markus
Belagiannis, Vasileios
Gilitschenski, Igor
Palmieri, Luigi
Razniewski, Simon
Hallgarten, Marcel
contents Rare, yet critical, scenarios pose a significant challenge in testing and evaluating autonomous driving planners. Relying solely on real-world driving scenes requires collecting massive datasets to capture these scenarios. While automatic generation of traffic scenarios appears promising, data-driven models require extensive training data and often lack fine-grained control over the output. Moreover, generating novel scenarios from scratch can introduce a distributional shift from the original training scenes which undermines the validity of evaluations especially for learning-based planners. To sidestep this, recent work proposes to generate challenging scenarios by augmenting original scenarios from the test set. However, this involves the manual augmentation of scenarios by domain experts. An approach that is unable to meet the demands for scale in the evaluation of self-driving systems. Therefore, this paper introduces a novel LLM-agent based framework for augmenting real-world traffic scenarios using natural language descriptions, addressing the limitations of existing methods. A key innovation is the use of an agentic design, enabling fine-grained control over the output and maintaining high performance even with smaller, cost-effective LLMs. Extensive human expert evaluation demonstrates our framework's ability to accurately adhere to user intent, generating high quality augmented scenarios comparable to those created manually.
format Preprint
id arxiv_https___arxiv_org_abs_2507_13729
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AGENTS-LLM: Augmentative GENeration of Challenging Traffic Scenarios with an Agentic LLM Framework
Yao, Yu
Bhatnagar, Salil
Mazzola, Markus
Belagiannis, Vasileios
Gilitschenski, Igor
Palmieri, Luigi
Razniewski, Simon
Hallgarten, Marcel
Robotics
Artificial Intelligence
Rare, yet critical, scenarios pose a significant challenge in testing and evaluating autonomous driving planners. Relying solely on real-world driving scenes requires collecting massive datasets to capture these scenarios. While automatic generation of traffic scenarios appears promising, data-driven models require extensive training data and often lack fine-grained control over the output. Moreover, generating novel scenarios from scratch can introduce a distributional shift from the original training scenes which undermines the validity of evaluations especially for learning-based planners. To sidestep this, recent work proposes to generate challenging scenarios by augmenting original scenarios from the test set. However, this involves the manual augmentation of scenarios by domain experts. An approach that is unable to meet the demands for scale in the evaluation of self-driving systems. Therefore, this paper introduces a novel LLM-agent based framework for augmenting real-world traffic scenarios using natural language descriptions, addressing the limitations of existing methods. A key innovation is the use of an agentic design, enabling fine-grained control over the output and maintaining high performance even with smaller, cost-effective LLMs. Extensive human expert evaluation demonstrates our framework's ability to accurately adhere to user intent, generating high quality augmented scenarios comparable to those created manually.
title AGENTS-LLM: Augmentative GENeration of Challenging Traffic Scenarios with an Agentic LLM Framework
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2507.13729