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arXiv 提交日期: 2026-01-04
📄 Abstract - DrivingGen: A Comprehensive Benchmark for Generative Video World Models in Autonomous Driving

Video generation models, as one form of world models, have emerged as one of the most exciting frontiers in AI, promising agents the ability to imagine the future by modeling the temporal evolution of complex scenes. In autonomous driving, this vision gives rise to driving world models: generative simulators that imagine ego and agent futures, enabling scalable simulation, safe testing of corner cases, and rich synthetic data generation. Yet, despite fast-growing research activity, the field lacks a rigorous benchmark to measure progress and guide priorities. Existing evaluations remain limited: generic video metrics overlook safety-critical imaging factors; trajectory plausibility is rarely quantified; temporal and agent-level consistency is neglected; and controllability with respect to ego conditioning is ignored. Moreover, current datasets fail to cover the diversity of conditions required for real-world deployment. To address these gaps, we present DrivingGen, the first comprehensive benchmark for generative driving world models. DrivingGen combines a diverse evaluation dataset curated from both driving datasets and internet-scale video sources, spanning varied weather, time of day, geographic regions, and complex maneuvers, with a suite of new metrics that jointly assess visual realism, trajectory plausibility, temporal coherence, and controllability. Benchmarking 14 state-of-the-art models reveals clear trade-offs: general models look better but break physics, while driving-specific ones capture motion realistically but lag in visual quality. DrivingGen offers a unified evaluation framework to foster reliable, controllable, and deployable driving world models, enabling scalable simulation, planning, and data-driven decision-making.

顶级标签: benchmark video generation agents
详细标签: autonomous driving world models evaluation metrics synthetic data temporal coherence 或 搜索:

DrivingGen:自动驾驶中生成式视频世界模型的综合基准 / DrivingGen: A Comprehensive Benchmark for Generative Video World Models in Autonomous Driving


1️⃣ 一句话总结

这篇论文提出了首个针对自动驾驶生成式视频世界模型的综合基准测试DrivingGen,它通过一个多样化的数据集和一套新的评估指标,系统地衡量了模型的视觉真实性、轨迹合理性、时间一致性及可控性,揭示了现有模型在物理准确性与视觉质量之间的权衡。

源自 arXiv: 2601.01528