Adding Object Manipulation Capabilities to Social Robots by using 3D and RGB Cameras Data

G. Mezzina, D. Venuto
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Abstract

This paper outlines the design and implementation of novel object manipulation for a social robot, here Pepper by SoftBank Robotics. It is primarily designed for verbal interaction and has therefore not been equipped with object manipulation capabilities. The proposed routine exploits the built-in RGB and 3D cameras. First, semantic segmentation based on the Mini-YOLOv3 neural network is run on the RGB image. Next, 3D sensor data are used to position the hand over the object, implementing a novel routine to grab the object and to scan it for recognition purposes. To preserve patient and location sensitive data, the here-proposed architecture operates automatically and offline, running on the robot’s operating system. Experimental results on 370 grabbing processes showed how the manipulation routine achieves a grabbing success rate of up to 96%. They also proved that the success rate remains unaltered if the target object is positioned in a rectangular area of ± 6 cm × ± 3 cm centered in the nominal position provided by an initial positioning grid. The grabbing success rate remains above 80% even if the object to be grabbed is stored with an angle that ranges between 10° and 45° within the above-reported area.
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通过使用3D和RGB相机数据为社交机器人添加对象操作功能
本文概述了社交机器人的新型对象操作的设计和实现,这里是软银机器人公司的Pepper。它主要是为语言交互而设计的,因此没有配备对象操作功能。所提出的例程利用内置的RGB和3D相机。首先,对RGB图像进行基于Mini-YOLOv3神经网络的语义分割。接下来,3D传感器数据用于定位手在物体上的位置,实现一个新的例程来抓取物体并扫描它以进行识别。为了保存病人和位置敏感数据,这里提出的架构可以在机器人的操作系统上自动离线运行。370个抓取过程的实验结果表明,该操作程序的抓取成功率高达96%。他们还证明,如果目标物体被定位在以初始定位网格提供的标称位置为中心的±6厘米×±3厘米的矩形区域内,成功率保持不变。即使被抓取物体以10°到45°的角度存储在上述报告的区域内,抓取成功率仍保持在80%以上。
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