Positive-Unlabeled Constraint Learning for Inferring Nonlinear Continuous Constraints Functions From Expert Demonstrations

IF 4.6 2区 计算机科学 Q2 ROBOTICS IEEE Robotics and Automation Letters Pub Date : 2024-12-25 DOI:10.1109/LRA.2024.3522756
Baiyu Peng;Aude Billard
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Abstract

Planning for diverse real-world robotic tasks necessitates to know and write all constraints. However, instances exist where these constraints are either unknown or challenging to specify accurately. A possible solution is to infer the unknown constraints from expert demonstration. This letter presents a novel two-step Positive-Unlabeled Constraint Learning (PUCL) algorithm to infer a continuous constraint function from demonstrations, without requiring prior knowledge of the true constraint parameterization or environmental model as existing works. We treat all data in demonstrations as positive (feasible) data, and learn a control policy to generate potentially infeasible trajectories, which serve as unlabeled data. The proposed two-step learning framework first identifies reliable infeasible data using a distance metric, and secondly learns a binary feasibility classifier (i.e., constraint function) from the feasible demonstrations and reliable infeasible data. The proposed method is flexible to learn complex-shaped constraint boundary and will not mistakenly classify demonstrations as infeasible as previous methods. The effectiveness of the proposed method is verified in four constrained environments, using a networked policy or a dynamical system policy. It successfully infers the continuous nonlinear constraints and outperforms other baseline methods in terms of constraint accuracy and policy safety.
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从专家论证中推断非线性连续约束函数的正无标记约束学习
规划各种现实世界的机器人任务需要了解并编写所有约束条件。然而,在某些情况下,这些约束要么是未知的,要么是难以准确指定的。一种可能的解决方案是通过专家论证来推断未知约束。这封信提出了一种新的两步积极无标记约束学习(PUCL)算法,可以从演示中推断连续约束函数,而不需要像现有作品那样事先了解真正的约束参数化或环境模型。我们将演示中的所有数据视为正(可行)数据,并学习一种控制策略来生成潜在的不可行轨迹,这些轨迹作为未标记数据。提出的两步学习框架首先使用距离度量识别可靠的不可行数据,然后从可行演示和可靠的不可行数据中学习二元可行性分类器(即约束函数)。该方法可以灵活地学习复杂形状的约束边界,并且不会像以前的方法那样错误地将演示归类为不可行的。在网络策略和动态系统策略四种约束环境下验证了该方法的有效性。该方法成功地推导出连续非线性约束,在约束精度和策略安全性方面优于其他基线方法。
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来源期刊
IEEE Robotics and Automation Letters
IEEE Robotics and Automation Letters Computer Science-Computer Science Applications
CiteScore
9.60
自引率
15.40%
发文量
1428
期刊介绍: The scope of this journal is to publish peer-reviewed articles that provide a timely and concise account of innovative research ideas and application results, reporting significant theoretical findings and application case studies in areas of robotics and automation.
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