Investigation of User Performance in Virtual Reality-based Annotation-assisted Remote Robot Control

Thanh Long Vu, Dac Dang Khoa Nguyen, Sheila Sutjipto, Dinh Tung Le, G. Paul
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Abstract

This poster investigates the use of point cloud processing algorithms to provide annotations for robotic manipulation tasks completed remotely via Virtual Reality (VR). A VR-based system has been developed that receives and visualizes the processed data from real-time RGB-D camera feeds. A real-world robot model has also been developed to provide realistic reactions and control feedback. The targets and the robot model are reconstructed in a VR environment and presented to users in different modalities. The modalities and available information are varied between experimental settings, and the associated task performance is recorded and analyzed. The results accumulated from 192 experiments completed by 8 participants showed that point cloud data is sufficient for completing the task. Additional information, either image stream or preliminary processes presented as annotations, was found to not have a significant impact on the completion time. However, the combination of image stream and colored point cloud data visualization modalities was found to greatly enhance a user’s performance accuracy, with the number of target centers missed being reduced by 40%.
基于虚拟现实的注释辅助远程机器人控制中的用户性能研究
这张海报研究了点云处理算法的使用,为通过虚拟现实(VR)远程完成的机器人操作任务提供注释。一个基于虚拟现实的系统已经开发出来,可以接收和可视化实时RGB-D摄像机馈送的处理数据。一个真实世界的机器人模型也被开发出来,以提供真实的反应和控制反馈。在虚拟现实环境中重建目标和机器人模型,并以不同的方式呈现给用户。模式和可用信息在实验设置之间是不同的,并记录和分析相关的任务表现。8名参与者完成了192次实验,累积的结果表明,点云数据足以完成任务。其他信息,无论是图像流还是作为注释呈现的初步过程,都不会对完成时间产生重大影响。然而,图像流和彩色点云数据可视化模式的组合被发现大大提高了用户的性能准确性,目标中心丢失的数量减少了40%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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