Human Prediction for the Natural Instruction of Handovers in Human Robot Collaboration

Jens Lambrecht, Sebastian Nimpsch
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引用次数: 4

Abstract

Human robot collaboration is aspiring to establish hybrid work environments in accordance with specific strengths of humans and robots. We present an approach of flexibly integrating robotic handover assistance into collaborative assembly tasks through the use of natural communication. For flexibly instructed handovers, we implement recent Convolutional Neural Networks in terms of object detection and grasping of arbitrary objects based on an RGB-D camera equipped to a robot following the eye-in-hand principle. In order to increase fluency and efficiency of the overall assembly process, we investigate the human ability to instruct the robot predictively with voice commands. We conduct a user study quantitatively and qualitatively evaluating the predictive instruction in order to achieve just-in-time handovers of tools needed for following subtasks. We compare our predictive strategy with a pure manual assembly having all tools in direct reach and a stepby-step reactive handover. The results reveal that the human is able to predict the handover comparable to algorithmbased predictors. Nevertheless, human prediction does not rely on extensive prior knowledge and is thus suitable for more flexible usage. However, the cognitive workload for the worker is increased compared to manual or reactive assembly.
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人机协作中移交自然指令的人类预测
人机协作旨在根据人与机器人的特定优势建立混合工作环境。我们提出了一种通过使用自然通信灵活地将机器人移交辅助集成到协作装配任务中的方法。对于灵活指示的移交,我们基于机器人配备的RGB-D相机,根据眼手原理,在物体检测和任意物体抓取方面实现了最近的卷积神经网络。为了提高整个装配过程的流畅性和效率,我们研究了人类用语音命令预测机器人的能力。我们进行用户研究,定量和定性地评估预测指令,以实现后续子任务所需的工具的及时移交。我们将我们的预测策略与纯手动组装进行比较,所有工具都在直接触及范围内,并逐步进行反应切换。结果表明,人类能够预测交接,可与基于算法的预测器相媲美。然而,人类的预测并不依赖于广泛的先验知识,因此适合更灵活的使用。然而,与手工组装或反应式组装相比,工人的认知工作量增加了。
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