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Data-driven Diffusion Models for Enhancing Safety in Autonomous Vehicle Traffic Simulations (2410.04809v1)

Published 7 Oct 2024 in cs.RO

Abstract: Safety-critical traffic scenarios are integral to the development and validation of autonomous driving systems. These scenarios provide crucial insights into vehicle responses under high-risk conditions rarely encountered in real-world settings. Recent advancements in critical scenario generation have demonstrated the superiority of diffusion-based approaches over traditional generative models in terms of effectiveness and realism. However, current diffusion-based methods fail to adequately address the complexity of driver behavior and traffic density information, both of which significantly influence driver decision-making processes. In this work, we present a novel approach to overcome these limitations by introducing adversarial guidance functions for diffusion models that incorporate behavior complexity and traffic density, thereby enhancing the generation of more effective and realistic safety-critical traffic scenarios. The proposed method is evaluated on two evaluation metrics: effectiveness and realism.The proposed method is evaluated on two evaluation metrics: effectiveness and realism, demonstrating better efficacy as compared to other state-of-the-art methods.

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References (14)
  1. E. Pronovost, K. Wang, and N. Roy, “Generating driving scenes with diffusion,” arXiv preprint arXiv:2305.18452, 2023.
  2. D. Saxena and J. Cao, “Generative adversarial networks (gans) challenges, solutions, and future directions,” ACM Computing Surveys (CSUR), vol. 54, no. 3, pp. 1–42, 2021.
  3. F.-A. Croitoru, V. Hondru, R. T. Ionescu, and M. Shah, “Diffusion models in vision: A survey,” IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 45, no. 9, pp. 10 850–10 869, 2023.
  4. L. Yang, Z. Zhang, Y. Song, S. Hong, R. Xu, Y. Zhao, W. Zhang, B. Cui, and M.-H. Yang, “Diffusion models: A comprehensive survey of methods and applications,” ACM Computing Surveys, vol. 56, no. 4, pp. 1–39, 2023.
  5. C. Yang, A. X. Tian, D. Chen, T. Shi, and A. Heydarian, “Wcdt: World-centric diffusion transformer for traffic scene generation,” arXiv preprint arXiv:2404.02082, 2024.
  6. W.-J. Chang, F. Pittaluga, M. Tomizuka, W. Zhan, and M. Chandraker, “Controllable safety-critical closed-loop traffic simulation via guided diffusion,” arXiv preprint arXiv:2401.00391, 2023.
  7. C. Xu, D. Zhao, A. Sangiovanni-Vincentelli, and B. Li, “Diffscene: Diffusion-based safety-critical scenario generation for autonomous vehicles,” in The Second Workshop on New Frontiers in Adversarial Machine Learning, 2023.
  8. D. Rempe, J. Philion, L. J. Guibas, S. Fidler, and O. Litany, “Generating useful accident-prone driving scenarios via a learned traffic prior,” in Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, 2022, pp. 17 305–17 315.
  9. M. Janner, Y. Du, J. B. Tenenbaum, and S. Levine, “Planning with diffusion for flexible behavior synthesis,” arXiv preprint arXiv:2205.09991, 2022.
  10. T. Gu, G. Chen, J. Li, C. Lin, Y. Rao, J. Zhou, and J. Lu, “Stochastic trajectory prediction via motion indeterminacy diffusion,” in Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, 2022, pp. 17 113–17 122.
  11. X. Li, J. Thickstun, I. Gulrajani, P. S. Liang, and T. B. Hashimoto, “Diffusion-lm improves controllable text generation,” Advances in Neural Information Processing Systems, vol. 35, pp. 4328–4343, 2022.
  12. A. Q. Nichol and P. Dhariwal, “Improved denoising diffusion probabilistic models,” in International conference on machine learning.   PMLR, 2021, pp. 8162–8171.
  13. Z. Zhong, D. Rempe, D. Xu, Y. Chen, S. Veer, T. Che, B. Ray, and M. Pavone, “Guided conditional diffusion for controllable traffic simulation,” in 2023 IEEE International Conference on Robotics and Automation (ICRA).   IEEE, 2023, pp. 3560–3566.
  14. C. Xu, W. Ding, W. Lyu, Z. Liu, S. Wang, Y. He, H. Hu, D. Zhao, and B. Li, “Safebench: A benchmarking platform for safety evaluation of autonomous vehicles,” Advances in Neural Information Processing Systems, vol. 35, pp. 25 667–25 682, 2022.

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