RGB和3d分割数据组合用于个人护理机器人的自主对象操作

G. Mezzina, D. Venuto
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引用次数: 1

摘要

本文提出了个人护理机器人(PCR)胡椒由软银机器人的功能重新设计。Pepper主要用于与患者进行口头交流,尽管有两条上臂,但它缺乏物体操作能力。在提出的重新设计中,使用Pepper RGB相机和3D深度传感器的数据组合来识别和定位专用存储库中的特定药物信封。在这种情况下,RGB图像的语义分割被委托给一个专门的预训练的YOLOv3对象检测器,同时实现了一个专门的手(夹具)定位算法。基于这种三维位置信息,PCR操作一个特别设计的程序来抓取物体并扫描它。一旦扫描程序确认抓取已经成功完成,并且抓取的包装与所需的药物相匹配,PCR必须能够安全地导航到用户(例如,医生,病人),递送药物。所建议的程序是全自动的,并且在名义上的用例中不需要互联网连接,以这种方式保存敏感数据,如家庭/医院地图、患者数据等。本文提出的对象操作程序的实验结果表明,即使对象没有正确定位在专用存储库中,抓取成功率也高达96%。最后,还提供了实现顺序拾取,对象识别和交付操作的概念验证,以演示现实场景的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RGB and 3D-Segmentation Data Combination for the Autonomous Object Manipulation in Personal Care Robotics
This paper proposes the re-design of the functionalities of the personal care robot (PCR) Pepper by SoftBank Robotics. Pepper is mainly designed for verbal interaction with patients and despite the presence of two upper arms, it lacks object manipulation capabilities. In the proposed re-design, a combination of data from Pepper RGB camera and 3D depth sensor is used to identify and localize a specific pharmaceutical envelope in a dedicated repository. In this context, the semantic segmentation of the RGB image has been entrusted to a dedicated pretrained YOLOv3 object detector, while a dedicated algorithm has been realized for the hand (gripper) positioning. Basing on this 3D positional information, the PCR operates an ad-hoc designed routine to grasp the object and to scan it. Once the scanning procedure confirms that the grasping has been successfully completed and that the grasped package matches with the needed drug, the PCR must be able to safely navigate towards the user (e.g., physician, patient), delivering the drug. The proposed procedure is fully automatic, and no internet connection is needed for the nominal use case, preserving -in this way- sensitive data like home/hospital maps, patient’s data and so on. Experimental results on the here proposed object manipulation routine demonstrated a grasping success rate up to 96 %, even if the objects are not properly positioned in the dedicated repository. Finally, a proof of concept that implements a sequential pick-up, object recognition and delivery operation is also provided demonstrating real-life scenario applicability.
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