Resolving Conflicts During Human-Robot Co-Manipulation

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Date

2023

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Volume Title

Publisher

IEEE Computer Society

Open Access Color

HYBRID

Green Open Access

Yes

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Top 10%
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Average
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Top 10%

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Abstract

This paper proposes a machine learning ( ML) approach to detect and resolve motion conflicts that occur between a human and a proactive robot during the execution of a physically collaborative task. We train a random forest classifier to distinguish between harmonious and conflicting human-robot interaction behaviors during object co-manipulation. Kinesthetic information generated through the teamwork is used to describe the interactive quality of collaboration. As such, we demonstrate that features derived from haptic (force/torque) data are sufficient to classify if the human and the robot harmoniously manipulate the object or they face a conflict. A conflict resolution strategy is implemented to get the robotic partner to proactively contribute to the task via online trajectory planning whenever interactive motion patterns are harmonious, and to follow the human lead when a conflict is detected. An admittance controller regulates the physical interaction between the human and the robot during the task. This enables the robot to follow the human passively when there is a conflict. An artificial potential field is used to proactively control the robot motion when partners work in harmony. An experimental study is designed to create scenarios involving harmonious and conflicting interactions during collaborative manipulation of an object, and to create a dataset to train and test the random forest classifier. The results of the study show that ML can successfully detect conflicts and the proposed conflict resolution mechanism reduces human force and effort significantly compared to the case of a passive robot that always follows the human partner and a proactive robot that cannot resolve conflicts.

Description

Al-Saadi, Zaid/0000-0003-3321-1181

Keywords

Machine-Learning, Conflict Resolution, Statistical Tests, Classification (of Information), Machine Learning Approaches, Haptics, Dyadic Manipulation, Human Robots, Man Machine Systems, Machine Learning, Robot Programming, Physical Humanrobot Interaction (PHRI), Haptic Feature, Human Robot Interaction, Random Forest Classifier, Physical Human-Robot Interaction, Collaborative Tasks, Haptic Features, haptic features, Robot programming, Conflict Resolution, Man machine systems, Physical human-robot interaction, Classification (of information), Haptic feature, Human robot interaction, Conflict resolution; Dyadic manipulation; Haptic features; Machine learning; Physical human-robot interaction, Haptics, Mechanical engineering, Dyadic manipulation, Machine learning approaches, machine learning, Statistical tests, Random forest classifier, Machine learning, Collaborative tasks, Human robots, conflict resolution, dyadic manipulation, Machine-learning, Physical humanrobot interaction (phri)

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Citation

Al-Saadi, Z., Hamad, Y. M., Aydin, Y., Kucukyilmaz, A., & Basdogan, C. (2023, March). Resolving Conflicts During Human-Robot Co-Manipulation. In Proceedings of the 2023 ACM/IEEE International Conference on Human-Robot Interaction (pp. 243-251).

WoS Q

Scopus Q

Q3
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OpenCitations Citation Count
8

Source

18th International Conference on Human Robot Interaction-HRI -- MAR 13-16, 2023 -- Stockholm, SWEDEN

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Issue

Start Page

243

End Page

251
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Citations

CrossRef : 9

Scopus : 11

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Mendeley Readers : 22

SCOPUS™ Citations

11

checked on Feb 03, 2026

Web of Science™ Citations

11

checked on Feb 03, 2026

Page Views

302

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Downloads

2894

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