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Main Authors: Reichenbächer, Christian, Rank, Philipp, Hipp, Jochen, Bringmann, Oliver
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.10098
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author Reichenbächer, Christian
Rank, Philipp
Hipp, Jochen
Bringmann, Oliver
author_facet Reichenbächer, Christian
Rank, Philipp
Hipp, Jochen
Bringmann, Oliver
contents This paper presents the first application of Gaussian Mixture Copula Models to the statistical modeling of driving scenarios for the safety validation of automated driving systems. Knowledge of the joint probability distribution of scenario parameters is essential for scenario-based safety assessment, where risk quantification depends on the likelihood of concrete parameter combinations. Gaussian Mixture Copula Models bring together the multimodal expressivity of Gaussian Mixture Models and the flexibility of copulas, enabling separate modeling of marginal distributions and dependence. We benchmark Gaussian Mixture Copula Models against previously proposed approaches - Gaussian Mixture Models and Gaussian Copula Models - using real-world driving data drawn from two scenarios defined in United Nations Regulation No. 157. Our evaluation on approximately 18 million instances of these two scenarios demonstrates that Gaussian Mixture Copula Models consistently surpass Gaussian Copula Models and perform competitively with Gaussian Mixture Models, as measured by both log-likelihood and Sinkhorn distance, with relative performance depending on the scenario. The results are promising for the adoption of Gaussian Mixture Copula Models as a statistical foundation for future scenario-based validation frameworks.
format Preprint
id arxiv_https___arxiv_org_abs_2506_10098
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Estimating the Joint Probability of Scenario Parameters with Gaussian Mixture Copula Models
Reichenbächer, Christian
Rank, Philipp
Hipp, Jochen
Bringmann, Oliver
Robotics
Machine Learning
This paper presents the first application of Gaussian Mixture Copula Models to the statistical modeling of driving scenarios for the safety validation of automated driving systems. Knowledge of the joint probability distribution of scenario parameters is essential for scenario-based safety assessment, where risk quantification depends on the likelihood of concrete parameter combinations. Gaussian Mixture Copula Models bring together the multimodal expressivity of Gaussian Mixture Models and the flexibility of copulas, enabling separate modeling of marginal distributions and dependence. We benchmark Gaussian Mixture Copula Models against previously proposed approaches - Gaussian Mixture Models and Gaussian Copula Models - using real-world driving data drawn from two scenarios defined in United Nations Regulation No. 157. Our evaluation on approximately 18 million instances of these two scenarios demonstrates that Gaussian Mixture Copula Models consistently surpass Gaussian Copula Models and perform competitively with Gaussian Mixture Models, as measured by both log-likelihood and Sinkhorn distance, with relative performance depending on the scenario. The results are promising for the adoption of Gaussian Mixture Copula Models as a statistical foundation for future scenario-based validation frameworks.
title Estimating the Joint Probability of Scenario Parameters with Gaussian Mixture Copula Models
topic Robotics
Machine Learning
url https://arxiv.org/abs/2506.10098