Clare Lohrmann, Maria Stull, A. Roncone, Bradley Hayes
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引用次数: 0
摘要
人类要想有效地与机器人合作,就必须能够预测机器人队友的行动和行为,而不仅仅是对它们做出反应。虽然现有的技术能让机器人适应人类的行为,但我们仍然需要能明确提高人类在多任务时间尺度上理解和预测机器人行为的能力的方法。在这项工作中,我们提出了一种利用人类与生俱来的模式识别倾向的方法,以改善人类-机器人团队的动态关系,并使机器人对与之共事的人类而言更具可预测性。模式是人类经常使用和依赖的一种认知工具,人脑在很多方面都具备模式识别和使用的能力。我们提出了一种基于熵的算法--PACT(Pattern-Aware Convention-setting for Teaming),该算法可以识别并在机器人的规划器或策略上长期实施适当的模式。这些模式是通过一个算法过程自主生成和选择的,该过程考虑了人类可感知的特征和来自待完成任务的特性,因此产生的行为更容易被人类识别和预测。我们的评估结果表明,与使用传统 "最优 "计划的机器人和使用未优化模式的机器人相比,PACT 显著改善了团队活力和队友对机器人的看法。
Generating Pattern-Based Conventions for Predictable Planning in Human-Robot Collaboration
For humans to effectively work with robots, they must be able to predict the actions and behaviors of their robot teammates rather than merely react to them. While there are existing techniques enabling robots to adapt to human behavior, there is a demonstrated need for methods that explicitly improve humans’ ability to understand and predict robot behavior at multi-task timescales. In this work, we propose a method leveraging the innate human propensity for pattern recognition in order to improve team dynamics in human-robot teams and to make robots more predictable to the humans that work with them. Patterns are a cognitive tool that humans use and rely on often, and the human brain is in many ways primed for pattern recognition and usage. We propose Pattern-Aware Convention-setting for Teaming (PACT), an entropy-based algorithm that identifies and imposes appropriate patterns over a robot’s planner or policy over long time horizons. These patterns are autonomously generated and chosen via an algorithmic process that considers human-perceptible features and characteristics derived from the tasks to be completed, and as such, produces behavior that is easier for humans to identify and predict. Our evaluation shows that PACT contributes to significant improvements in team dynamics and teammate perceptions of the robot, as compared to robots that utilize traditionally ‘optimal’ plans and robots utilizing unoptimized patterns.
期刊介绍:
ACM Transactions on Human-Robot Interaction (THRI) is a prestigious Gold Open Access journal that aspires to lead the field of human-robot interaction as a top-tier, peer-reviewed, interdisciplinary publication. The journal prioritizes articles that significantly contribute to the current state of the art, enhance overall knowledge, have a broad appeal, and are accessible to a diverse audience. Submissions are expected to meet a high scholarly standard, and authors are encouraged to ensure their research is well-presented, advancing the understanding of human-robot interaction, adding cutting-edge or general insights to the field, or challenging current perspectives in this research domain.
THRI warmly invites well-crafted paper submissions from a variety of disciplines, encompassing robotics, computer science, engineering, design, and the behavioral and social sciences. The scholarly articles published in THRI may cover a range of topics such as the nature of human interactions with robots and robotic technologies, methods to enhance or enable novel forms of interaction, and the societal or organizational impacts of these interactions. The editorial team is also keen on receiving proposals for special issues that focus on specific technical challenges or that apply human-robot interaction research to further areas like social computing, consumer behavior, health, and education.