Human–Robot Collaborative Manufacturing Cell with Learning-Based Interaction Abilities

Robotics Pub Date : 2024-07-17 DOI:10.3390/robotics13070107
Joel Baptista, Afonso Castro, Manuel Gomes, Pedro Amaral, Vítor M. F. Santos, Filipe Silva, Miguel Oliveira
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Abstract

This paper presents a collaborative manufacturing cell implemented in a laboratory setting, focusing on developing learning-based interaction abilities to enhance versatility and ease of use. The key components of the system include 3D real-time volumetric monitoring for safety, visual recognition of hand gestures for human-to-robot communication, classification of physical-contact-based interaction primitives during handover operations, and detection of hand–object interactions to anticipate human intentions. Due to the nature and complexity of perception, deep-learning-based techniques were used to enhance robustness and adaptability. The main components are integrated in a system containing multiple functionalities, coordinated through a dedicated state machine. This ensures appropriate actions and reactions based on events, enabling the execution of specific modules to complete a given multi-step task. An ROS-based architecture supports the software infrastructure among sensor interfacing, data processing, and robot and gripper controllers nodes. The result is demonstrated by a functional use case that involves multiple tasks and behaviors, paving the way for the deployment of more advanced collaborative cells in manufacturing contexts.
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具有基于学习的交互能力的人机协作制造单元
本文介绍了在实验室环境中实施的协作制造单元,重点是开发基于学习的交互能力,以提高通用性和易用性。该系统的关键组成部分包括用于安全的三维实时体积监测、用于人与机器人交流的手势视觉识别、交接操作过程中基于物理接触的交互基元分类,以及用于预测人类意图的手与物体交互检测。由于感知的性质和复杂性,使用了基于深度学习的技术来增强鲁棒性和适应性。主要组件集成在一个包含多种功能的系统中,通过专用状态机进行协调。这确保了根据事件采取适当的行动和反应,使特定模块的执行能够完成给定的多步骤任务。基于 ROS 的架构支持传感器接口、数据处理以及机器人和抓手控制器节点之间的软件基础设施。结果通过一个涉及多个任务和行为的功能用例进行了演示,为在制造环境中部署更先进的协作单元铺平了道路。
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