Conceitos essenciais
SimGen leverages the strengths of both real-world data and driving simulators to generate diverse and controllable synthetic driving scenes, addressing limitations of previous methods reliant on static datasets.
Zhou, Y., Simon, M., Peng, Z., Mo, S., Zhu, H., Guo, M., & Zhou, B. (2024). SimGen: Simulator-conditioned Driving Scene Generation. Advances in Neural Information Processing Systems, 38. arXiv:2406.09386v2 [cs.CV] 28 Oct 2024
This paper introduces SimGen, a novel framework for generating diverse and controllable synthetic driving scenes by combining real-world data with a driving simulator. The authors aim to address the limitations of existing synthetic data generation methods that rely solely on static datasets, which often lack diversity and controllability.