具有可学习成本函数的可变综合运动预测与规划,用于自动驾驶。

IF 10.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE transactions on neural networks and learning systems Pub Date : 2024-11-01 Epub Date: 2024-10-29 DOI:10.1109/TNNLS.2023.3283542
Zhiyu Huang, Haochen Liu, Jingda Wu, Chen Lv
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引用次数: 0

摘要

预测周围交通参与者的未来状态,并据此规划一条安全、顺畅且符合社会要求的行驶轨迹,对于自动驾驶汽车(AV)来说至关重要。目前的自动驾驶系统存在两个主要问题:预测模块往往与规划模块分离,规划的成本函数难以指定和调整。为了解决这些问题,我们提出了一种可微分集成预测和规划(DIPP)框架,它也可以从数据中学习成本函数。具体来说,我们的框架使用可微分非线性优化器作为运动规划器,将神经网络给出的周围代理预测轨迹作为输入,优化 AV 的轨迹,使所有操作都可微分,包括成本函数权重。提出的框架在大规模真实驾驶数据集上进行了训练,以模仿人类在整个驾驶场景中的驾驶轨迹,并以开环和闭环方式进行了验证。开环测试结果表明,所提出的方法在各种指标上都优于基线方法,并提供了以规划为中心的预测结果,使规划模块能够输出接近人类驾驶员的轨迹。在闭环测试中,所提出的方法优于各种基线方法,显示出处理复杂城市驾驶场景的能力和应对分布偏移的鲁棒性。重要的是,我们发现在开环和闭环测试中,规划和预测模块的联合训练比使用单独训练的预测模块进行规划取得了更好的性能。此外,消融研究表明,该框架中的可学习组件对于确保规划的稳定性和性能至关重要。代码和补充视频见 https://mczhi.github.io/DIPP/。
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Differentiable Integrated Motion Prediction and Planning With Learnable Cost Function for Autonomous Driving.

Predicting the future states of surrounding traffic participants and planning a safe, smooth, and socially compliant trajectory accordingly are crucial for autonomous vehicles (AVs). There are two major issues with the current autonomous driving system: the prediction module is often separated from the planning module, and the cost function for planning is hard to specify and tune. To tackle these issues, we propose a differentiable integrated prediction and planning (DIPP) framework that can also learn the cost function from data. Specifically, our framework uses a differentiable nonlinear optimizer as the motion planner, which takes as input the predicted trajectories of surrounding agents given by the neural network and optimizes the trajectory for the AV, enabling all operations to be differentiable, including the cost function weights. The proposed framework is trained on a large-scale real-world driving dataset to imitate human driving trajectories in the entire driving scene and validated in both open-loop and closed-loop manners. The open-loop testing results reveal that the proposed method outperforms the baseline methods across a variety of metrics and delivers planning-centric prediction results, allowing the planning module to output trajectories close to those of human drivers. In closed-loop testing, the proposed method outperforms various baseline methods, showing the ability to handle complex urban driving scenarios and robustness against the distributional shift. Importantly, we find that joint training of planning and prediction modules achieves better performance than planning with a separate trained prediction module in both open-loop and closed-loop tests. Moreover, the ablation study indicates that the learnable components in the framework are essential to ensure planning stability and performance. Code and Supplementary Videos are available at https://mczhi.github.io/DIPP/.

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来源期刊
IEEE transactions on neural networks and learning systems
IEEE transactions on neural networks and learning systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
CiteScore
23.80
自引率
9.60%
发文量
2102
审稿时长
3-8 weeks
期刊介绍: The focus of IEEE Transactions on Neural Networks and Learning Systems is to present scholarly articles discussing the theory, design, and applications of neural networks as well as other learning systems. The journal primarily highlights technical and scientific research in this domain.
期刊最新文献
A Novel k-Means Framework via Constrained Relaxation and Spectral Rotation. A Word-Level Adversarial Attack Method Based on Sememes and an Improved Quantum-Behaved Particle Swarm Optimization. Adaptive Prototype Interaction Network for Few-Shot Knowledge Graph Completion. Differentiable Integrated Motion Prediction and Planning With Learnable Cost Function for Autonomous Driving. Learning Cross-Attention Discriminators via Alternating Time-Space Transformers for Visual Tracking.
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