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MagicHand: Context-Aware Dexterous Grasping Using an Anthropomorphic Robotic Hand

机译:MagicHand:使用拟人化的机器人手进行上下文感知的灵巧抓取

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摘要

Understanding of characteristics of objects such as fragility, rigidity, texture and dimensions facilitates and innovates robotic grasping. In this paper, we propose a context- aware anthropomorphic robotic hand (MagicHand) grasping system which is able to gather various information about its target object and generate grasping strategies based on the perceived information. In this work, NIR spectra of target objects are perceived to recognize materials on a molecular level and RGB-D images are collected to estimate dimensions of the objects. We selected six most used grasping poses and our system is able to decide the most suitable grasp strategies based on the characteristics of an object. Through multiple experiments, the performance of the MagicHand system is demonstrated.
机译:了解对象的特性(例如易碎性,刚度,纹理和尺寸)有助于并创新机器人抓取。在本文中,我们提出了一种上下文感知的拟人化机械手(MagicHand)抓取系统,该系统能够收集有关其目标对象的各种信息,并根据感知到的信息生成抓握策略。在这项工作中,目标物体的NIR光谱被认为可以识别分子水平上的材料,并收集RGB-D图像以估计物体的尺寸。我们选择了六个最常用的抓握姿势,我们的系统能够根据物体的特性决定最合适的抓握策略。通过多次实验,证明了MagicHand系统的性能。

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