Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove
Grasping, the skill to hold objects and tools while doing in-hand manipulation, still is in many cases an unsolvable problem for robotics, but a natural act for humans. An efficient grasping requires not only human-like robotic hands with articulated fingers but also tactile, force, and kinesthetic...
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Université d'Ottawa / University of Ottawa
2020
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Online Access: | http://hdl.handle.net/10393/41117 http://dx.doi.org/10.20381/ruor-25341 |
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ndltd-uottawa.ca-oai-ruor.uottawa.ca-10393-411172020-09-30T05:48:01Z Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove Zhu, Qi Petriu, Emil Robotic Hand Grasping Synergy Machine Learning Fuzzy logic control Teleoperation Grasping, the skill to hold objects and tools while doing in-hand manipulation, still is in many cases an unsolvable problem for robotics, but a natural act for humans. An efficient grasping requires not only human-like robotic hands with articulated fingers but also tactile, force, and kinesthetic sensors for the precise control of the forces and motions exerted during the manipulation. As a fully autonomous robotic dexterous manipulation is too difficult to develop for changing and unstructured environments, an alternative approach is to combine the low-level robot computer control with the higher-level perception and task planning abilities of a human operator equipped with an adequate human-computer interface (HCI). This thesis presents theoretical and experimental contributions to the development of an upgraded haptic-enabled anthropomorphic Ring Ada dexterous robotic hand and a biology-inspired synergistic real-time control system for teleoperated grasping of different objects using a CyberTouch HCI data glove. A fuzzy logic controller module was developed to efficiently control the underactuated Ring Ada’ robotic hand during grasping. A machine learning classification system was developed to recognize grasped objects. Experiments have convincingly demonstrated that our novel Ring Ada robotic hand equipped with kinematic position sensors and touch sensors is able to efficiently grasp different lightweight objects through teleoperation. 2020-09-28T20:06:26Z 2020-09-28T20:06:26Z 2020-09-28 Thesis http://hdl.handle.net/10393/41117 http://dx.doi.org/10.20381/ruor-25341 en application/pdf Université d'Ottawa / University of Ottawa |
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Robotic Hand Grasping Synergy Machine Learning Fuzzy logic control Teleoperation |
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Robotic Hand Grasping Synergy Machine Learning Fuzzy logic control Teleoperation Zhu, Qi Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove |
description |
Grasping, the skill to hold objects and tools while doing in-hand manipulation, still is in many cases an unsolvable problem for robotics, but a natural act for humans. An efficient grasping requires not only human-like robotic hands with articulated fingers but also tactile, force, and kinesthetic sensors for the precise control of the forces and motions exerted during the manipulation.
As a fully autonomous robotic dexterous manipulation is too difficult to develop for changing and unstructured environments, an alternative approach is to combine the low-level robot computer control with the higher-level perception and task planning abilities of a human operator equipped with an adequate human-computer interface (HCI).
This thesis presents theoretical and experimental contributions to the development of an upgraded haptic-enabled anthropomorphic Ring Ada dexterous robotic hand and a biology-inspired synergistic real-time control system for teleoperated grasping of different objects using a CyberTouch HCI data glove. A fuzzy logic controller module was developed to efficiently control the underactuated Ring Ada’ robotic hand during grasping. A machine learning classification system was developed to recognize grasped objects.
Experiments have convincingly demonstrated that our novel Ring Ada robotic hand equipped with kinematic position sensors and touch sensors is able to efficiently grasp different lightweight objects through teleoperation. |
author2 |
Petriu, Emil |
author_facet |
Petriu, Emil Zhu, Qi |
author |
Zhu, Qi |
author_sort |
Zhu, Qi |
title |
Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove |
title_short |
Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove |
title_full |
Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove |
title_fullStr |
Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove |
title_full_unstemmed |
Teleoperated Grasping Using an Upgraded Haptic-Enabled Human-Like Robotic Hand and a CyberTouch Glove |
title_sort |
teleoperated grasping using an upgraded haptic-enabled human-like robotic hand and a cybertouch glove |
publisher |
Université d'Ottawa / University of Ottawa |
publishDate |
2020 |
url |
http://hdl.handle.net/10393/41117 http://dx.doi.org/10.20381/ruor-25341 |
work_keys_str_mv |
AT zhuqi teleoperatedgraspingusinganupgradedhapticenabledhumanlikerobotichandandacybertouchglove |
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1719347116074074112 |