DiffStack:自动驾驶汽车的可微模块化控制堆栈

Peter Karkus, B. Ivanovic, Shie Mannor, M. Pavone
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引用次数: 15

摘要

自动驾驶汽车(AV)堆栈通常以模块化的方式构建,由显式组件执行检测、跟踪、预测、计划、控制等。虽然模块化提高了可重用性、可解释性和泛化性,但它也受到复合错误、信息瓶颈和集成挑战的困扰。为了克服这些挑战,一个突出的方法是将AV堆栈转换为端到端的神经网络,并用数据对其进行训练。虽然这些方法取得了令人印象深刻的结果,但它们通常缺乏可解释性和可重用性,并且它们避开了原则性的分析组件,例如计划和控制,而倾向于深度神经网络。为了在保持模块化的同时实现AV堆栈的联合优化,我们提出了DiffStack,一种用于预测、规划和控制的可微分和模块化堆栈。至关重要的是,我们基于模型的规划和控制算法利用可微分优化的最新进展来产生梯度,从而通过规划和控制的反向传播来优化上游组件,例如预测。我们在nuScenes数据集上的结果表明,使用DiffStack的端到端训练在开环和闭环规划指标上产生了实质性的改进,例如,通过学习减少影响规划的预测错误。除了这些直接的好处之外,DiffStack还为完全数据驱动的模块化和可解释的AV架构开辟了新的机会。项目网站:https://sites.google.com/view/diffstack
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DiffStack: A Differentiable and Modular Control Stack for Autonomous Vehicles
Autonomous vehicle (AV) stacks are typically built in a modular fashion, with explicit components performing detection, tracking, prediction, planning, control, etc. While modularity improves reusability, interpretability, and generalizability, it also suffers from compounding errors, information bottlenecks, and integration challenges. To overcome these challenges, a prominent approach is to convert the AV stack into an end-to-end neural network and train it with data. While such approaches have achieved impressive results, they typically lack interpretability and reusability, and they eschew principled analytical components, such as planning and control, in favor of deep neural networks. To enable the joint optimization of AV stacks while retaining modularity, we present DiffStack, a differentiable and modular stack for prediction, planning, and control. Crucially, our model-based planning and control algorithms leverage recent advancements in differentiable optimization to produce gradients, enabling optimization of upstream components, such as prediction, via backpropagation through planning and control. Our results on the nuScenes dataset indicate that end-to-end training with DiffStack yields substantial improvements in open-loop and closed-loop planning metrics by, e.g., learning to make fewer prediction errors that would affect planning. Beyond these immediate benefits, DiffStack opens up new opportunities for fully data-driven yet modular and interpretable AV architectures. Project website: https://sites.google.com/view/diffstack
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