基于虚拟现实的机器人遥操作对象材料触觉分类

Bukeikhan Omarali, Francesca Palermo, K. Althoefer, Maurizio Valle, I. Farkhatdinov
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引用次数: 3

摘要

本文提出了一种基于虚拟现实(VR)的机器人遥操作材料触觉分类方法。在我们的系统中,操作员使用一个远程控制的机器人操纵器和一个基于光纤的触觉和接近传感器来扫描远程环境中的物体表面。触觉和接近数据以及机器人的末端执行器状态反馈用于物体材料的分类,然后在每个物体的远程环境的VR重建中可视化。随机森林、卷积神经和多模态卷积神经网络等机器学习技术被用于材料分类。用5种不同的材料对所提出的系统和方法进行了测试,分类准确率达到90%以上。材料分类的结果被成功地用于在VR界面中可视化远程场景,为人类操作员提供更多的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tactile Classification of Object Materials for Virtual Reality based Robot Teleoperation
This work presents a method for tactile classification of materials for virtual reality (VR) based robot teleoperation. In our system, a human-operator uses a remotely controlled robot-manipulator with an optical fibre-based tactile and proximity sensor to scan surfaces of objects in a remote environment. Tactile and proximity data and the robot's end-effector state feedback are used for the classification of objects' materials which are then visualized in the VR reconstruction of the remote environment for each object. Machine learning techniques such as random forest, convolutional neural and multi-modal convolutional neural networks were used for material classification. The proposed system and methods were tested with five different materials and classification accuracy of 90 % and more was achieved. The results of material classification were successfully exploited for visualising the remote scene in the VR interface to provide more information to the human-operator.
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