基于注意力深度学习的机器人人机交接阶段三维人体姿态预测模型

Javier Laplaza, Albert Pumarola, F. Moreno-Noguer, A. Sanfeliu
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引用次数: 8

摘要

本文提出了一种用于切换操作的人体运动预测模型。在这项工作中,我们使用切换操作的不同阶段来改进人体运动预测。我们的基于注意力深度学习的模型考虑了机器人末端执行器(REE)的位置和切换操作的阶段来预测未来的人体姿势。我们的模型输出可能位置的分布,而不是一个确定的位置,这是允许机器人与人类合作的关键特征。我们提供人体上半身和右手的结果,也被称为人体末端执行器(HEE)。使用人类志愿者和拟人化机器人创建的数据集对基于注意力深度学习的模型进行了训练和评估,模拟了机器人作为给予者和人类作为接受者的移交操作。对于每一次操作,人类骨骼都是通过安装在机器人头部内的英特尔RealSense D435i摄像头获得的。结果表明,与其他方法相比,该方法对人体右手和三维身体的预测有了很大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention deep learning based model for predicting the 3D Human Body Pose using the Robot Human Handover Phases
This work proposes a human motion prediction model for handover operations. We use in this work, the different phases of the handover operation to improve the human motion predictions. Our attention deep learning based model takes into account the position of the robot’s End Effector (REE) and the phase in the handover operation to predict future human poses. Our model outputs a distribution of possible positions rather than one deterministic position, a key feature in order to allow robots to collaborate with humans. We provide results of the human upper body and the human right hand, also referred as Human End Effector (HEE).The attention deep learning based model has been trained and evaluated with a dataset created using human volunteers and an anthropomorphic robot, simulating handover operations where the robot is the giver and the human the receiver. For each operation, the human skeleton is obtained with an Intel RealSense D435i camera attached inside the robot’s head. The results shown a great improvement of the human’s right hand prediction and 3D body compared with other methods.
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