自动驾驶的混合预测集成规划

Haochen Liu;Zhiyu Huang;Wenhui Huang;Haohan Yang;Xiaoyu Mo;Chen Lv
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引用次数: 0

摘要

自动驾驶系统需要全面了解和准确预测周围环境,以便在复杂情况下做出明智的决策。基于学习的系统的最新进展突出了整合预测和规划的重要性。然而,通过预测模式之间的一致性,以及未来预测和计划之间的交互,这种集成带来了重大的一致性挑战。为了应对这些挑战,我们引入了一个混合预测集成规划(HPP)框架,该框架通过三个新型模块协同运行。首先,我们引入边际条件占用预测,将联合占用与特定智能体的运动预测结合起来。我们提出的MS-OccFormer模块实现了跨多个粒度的运动预测的时空对齐。其次,我们提出了一个博弈论的运动预测器GTFormer,基于智能体的联合预测意识来建模智能体之间的交互动态。第三,将混合预测模式同时集成到Ego Planner中,并通过预测引导进行优化。HPP框架在nuScenes数据集上建立了最先进的性能,在端到端配置中展示了卓越的准确性和安全性。此外,HPP的交互式开环和闭环规划性能在Waymo开放运动数据集(WOMD)和CARLA基准上得到了验证,通过增强预测和规划之间的一致性,超越了现有的集成管道。
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Hybrid-Prediction Integrated Planning for Autonomous Driving
Autonomous driving systems require a comprehensive understanding and accurate prediction of the surrounding environment to facilitate informed decision-making in complex scenarios. Recent advances in learning-based systems have highlighted the importance of integrating prediction and planning. However, this integration poses significant alignment challenges through consistency between prediction patterns, to interaction between future prediction and planning. To address these challenges, we introduce a Hybrid-Prediction integrated Planning (HPP) framework, which operates through three novel modules collaboratively. First, we introduce marginal-conditioned occupancy prediction to align joint occupancy with agent-specific motion forecasting. Our proposed MS-OccFormer module achieves spatial-temporal alignment with motion predictions across multiple granularities. Second, we propose a game-theoretic motion predictor, GTFormer, to model the interactive dynamics among agents based on their joint predictive awareness. Third, hybrid prediction patterns are concurrently integrated into the Ego Planner and optimized by prediction guidance. The HPP framework establishes state-of-the-art performance on the nuScenes dataset, demonstrating superior accuracy and safety in end-to-end configurations. Moreover, HPP’s interactive open-loop and closed-loop planning performance are demonstrated on the Waymo Open Motion Dataset (WOMD) and CARLA benchmark, outperforming existing integrated pipelines by achieving enhanced consistency between prediction and planning.
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