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An integrated mixed reality system for safety-aware human-robot collaboration using deep learning and digital twin generation

机译:一种综合混合现实体系,用于使用深度学习和数码双代使用深度学习和数字双单一的人体机器人协作

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For human-robot collaboration (HRC), one of the most practical methods to ensure human safety with a vision-based system is establishing a minimum safe distance. This study proposes a novel integrated mixed reality (MR) system for safety-aware HRC using deep learning and digital twin generation. The proposed approach can accurately measure the minimum safe distance in real-time and provide MR-based task assistance to the human operator. The approach integrates MR with safety-related monitoring by tracking the shared workplace and providing user-centric visualization through smart MR glasses for safe and effective HRC. Two RGB-D sensors are used to reconstruct and track the working environment. One sensor scans one area of the physical environment through 3D point cloud data. The other also scans another area of the environment and tracks the user's 3D skeletal information. In addition, the two partially scanned environments are registered together by applying a fast global registration method to two sets of the 3D point cloud. Furthermore, deep learning-based instance segmentation is applied to the target object's 3D point cloud to increase the registration between the real robot and its virtual robot, the digital twin of the real robot. While only 3D point cloud data are widely used in previous studies, this study proposes a simple yet effective 3D offset-based safety distance calculation method based on the robot's digital twin and the human skeleton. The 3D offset-based method allows for real-time applicability without sacrificing the accuracy of safety distance calculation for HRI. In addition, two comparative evaluations were conducted to confirm the originality and advantage of the proposed MR-based HRC.
机译:对于人机器人协作(HRC),可以使用基于视觉的系统确保人类安全的最实用方法之一建立了最低安全距离。本研究提出了一种使用深层学习和数字双代的安全感感知HRC的新型集成混合现实(MR)系统。所提出的方法可以确地测量实时的最低安全距离,并为人类运营商提供基于MR的任务援助。该方法通过跟踪共享工作场所并通过智能MR眼镜来提供安全相关的监控先生,通过智能MR眼镜提供安全和有效的HRC。两个RGB-D传感器用于重建和跟踪工作环境。一个传感器通过3D点云数据扫描物理环境的一个区域。另一个也扫描了环境的另一个区域并跟踪用户的3D骨架信息。另外,通过将快速全局注册方法应用于两组3D点云,将两个部分扫描的环境一起登记。此外,基于深度学习的实例分割应用于目标对象的3D点云,以增加真实机器人与其虚拟机器人之间的配准,这是真正的机器人的数字双胞胎。虽然只有3D点云数据被广泛用于先前的研究,但本研究提出了一种基于机器人数字双胞胎和人骨架的简单且有效的3D偏移的安全距离计算方法。基于3D偏移的方法允许实时适用性而不牺牲HRI的安全距离计算的准确性。此外,还进行了两项比较评估,以确认拟议的基于MR的HRC的原创性和优势。

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