基于端到端模型学习的直接点机器人导航

IF 9.4 1区 计算机科学 Q1 ROBOTICS
Ruihua Han;Shuai Wang;Shuaijun Wang;Zeqing Zhang;Jianjun Chen;Shijie Lin;Chengyang Li;Chengzhong Xu;Yonina C. Eldar;Qi Hao;Jia Pan
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引用次数: 0

摘要

在混乱的未知环境中导航非完整机器人需要精确的感知和精确的运动控制来实时避免碰撞。本文介绍了神经近端交替最小化网络(NeuPAN):一种实时、高精度、无地图、易于部署和环境不变的机器人运动规划器。利用紧密耦合的感知到控制框架,与现有方法相比,NeuPAN有两个关键创新:首先,它直接将原始点云数据映射到潜在距离特征空间,以生成无碰撞的运动,避免了从感知到控制管道的错误传播;其次,它可以从端到端基于模型的学习角度进行解释。NeuPAN的关键是使用即插即用的近端交替最小化网络解决具有许多点级约束的端到端数学模型,并在环路中包含神经元。这使得NeuPAN能够生成实时的、物理上可解释的运动。它无缝集成了数据和知识引擎,其网络参数可以通过反向传播进行微调。我们在广泛的模拟和现实环境中对地面移动机器人、轮腿机器人和自动驾驶汽车进行了评估。结果表明,NeuPAN在各种环境(包括杂乱的沙盒、办公室、走廊和停车场)的准确性、效率、鲁棒性和泛化能力方面优于现有的基线。我们证明了NeuPAN在未知和非结构化环境中具有任意形状的物体,将不可通过的路径转换为可通过的路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NeuPAN: Direct Point Robot Navigation With End-to-End Model-Based Learning
Navigating a nonholonomic robot in a cluttered, unknown environment requires accurate perception and precise motion control for real-time collision avoidance. This article presents neural proximal alternating-minimization network (NeuPAN): a real-time, highly accurate, map-free, easy-to-deploy, and environment-invariant robot motion planner. Leveraging a tightly coupled perception-to-control framework, NeuPAN has two key innovations compared to existing approaches: first, it directly maps raw point cloud data to a latent distance feature space for collision-free motion generation, avoiding error propagation from the perception to control pipeline; second, it is interpretable from an end-to-end model-based learning perspective. The crux of NeuPAN is solving an end-to-end mathematical model with numerous point-level constraints using a plug-and-play proximal alternating-minimization network, incorporating neurons in the loop. This allows NeuPAN to generate real-time, physically interpretable motions. It seamlessly integrates data and knowledge engines, and its network parameters can be fine-tuned via backpropagation. We evaluate NeuPAN on a ground mobile robot, a wheel-legged robot, and an autonomous vehicle, in extensive simulated and real-world environments. Results demonstrate that NeuPAN outperforms existing baselines in terms of accuracy, efficiency, robustness, and generalization capabilities across various environments, including the cluttered sandbox, office, corridor, and parking lot. We show that NeuPAN works well in unknown and unstructured environments with arbitrarily shaped objects, transforming impassable paths into passable ones.
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来源期刊
IEEE Transactions on Robotics
IEEE Transactions on Robotics 工程技术-机器人学
CiteScore
14.90
自引率
5.10%
发文量
259
审稿时长
6.0 months
期刊介绍: The IEEE Transactions on Robotics (T-RO) is dedicated to publishing fundamental papers covering all facets of robotics, drawing on interdisciplinary approaches from computer science, control systems, electrical engineering, mathematics, mechanical engineering, and beyond. From industrial applications to service and personal assistants, surgical operations to space, underwater, and remote exploration, robots and intelligent machines play pivotal roles across various domains, including entertainment, safety, search and rescue, military applications, agriculture, and intelligent vehicles. Special emphasis is placed on intelligent machines and systems designed for unstructured environments, where a significant portion of the environment remains unknown and beyond direct sensing or control.
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