ROMay 18

Scenario Generation in Roundabouts with Adjustable Interaction Intensity

arXiv:2605.1802614.2
Predicted impact top 58% in RO · last 90 daysOriginality Synthesis-oriented
AI Analysis

For developers of intelligent driving functions, this provides a controllable scenario generation method for systematic safety testing in roundabouts, though improvements over baseline are incremental.

This paper presents a roundabout scenario generator with adjustable interaction intensity, using autoencoders and WGAN to generate scenarios with controllable yielding behavior. Results show enhanced timing-latent fidelity and plausible interaction responses, with safety margin expansion under criticality-calibrated scaling.

Roundabouts, characterized by frequent merging and yielding interactions, remain a safety-critical corner case for the development and testing of intelligent driving functions. However, extracting sufficient near-critical scenarios from naturalistic data is inefficient. Most existing scenario generation methods provide limited controllability over interaction intensity and criticality, making systematic safety testing and detailed analysis difficult. This paper presents an interaction-aware roundabout scenario generator with continuously adjustable interaction intensity. Geometric routes and temporal progress profiles are first decoupled and mapped to latent codes using pretrained autoencoders. Conditional latent generation is then performed with Wasserstein Generative Adversarial Networks (WGAN) to generate scenarios. Yielding is modeled as a controllable timing intervention via a compact yield code during the approach-to-entry segment, where interaction intensity is modulated by scaling the code with a factor $λ$. Results demonstrate enhanced timing-latent fidelity and plausible interaction responses compared to a baseline model. Under criticality-calibrated scaling, increasing $λ$ expands the safety margin, providing a scalable and controlled testing mechanism.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes