Visual servoing of robot manipulator with weak field-of-view constraints
Aiming at the problem of servoing task failure caused by the manipulated object deviating from the camera field-of-view (FOV) during the robot manipulator visual servoing (VS) process, a new VS method based on an improved tracking learning detection (TLD) algorithm is proposed in this article, which...
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doaj-0369867dc557467295ca32e0687b68c12021-02-17T17:05:03ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142021-02-011810.1177/1729881421990320Visual servoing of robot manipulator with weak field-of-view constraintsJing Xin0Han Cheng1Baojing Ran2 Shaanxi Key Laboratory of Complex System Control and Intelligent Information Processing, School of Automation and Information Engineering, , Xi’an 710048, China Shaanxi Key Laboratory of Complex System Control and Intelligent Information Processing, School of Automation and Information Engineering, , Xi’an 710048, China Shaanxi Key Laboratory of Complex System Control and Intelligent Information Processing, School of Automation and Information Engineering, , Xi’an 710048, ChinaAiming at the problem of servoing task failure caused by the manipulated object deviating from the camera field-of-view (FOV) during the robot manipulator visual servoing (VS) process, a new VS method based on an improved tracking learning detection (TLD) algorithm is proposed in this article, which allows the manipulated object to deviate from the camera FOV in several continuous frames and maintains the smoothness of the robot manipulator motion during VS. Firstly, to implement the robot manipulator visual object tracking task with strong robustness under the weak FOV constraints, an improved TLD algorithm is proposed. Then, the algorithm is used to extract the image features (object in the camera FOV) or predict image features (object out of the camera FOV) of the manipulated object in the current frame. And then, the position of the manipulated object in the current image is further estimated. Finally, the visual sliding mode control law is designed according to the image feature errors to control the motion of the robot manipulator so as to complete the visual tracking task of the robot manipulator to the manipulated object in complex natural scenes with high robustness. Several robot manipulator VS experiments were conducted on a six-degrees-of-freedom MOTOMANSV3 industrial manipulator under different natural scenes. The experimental results show that the proposed robot manipulator VS method can relax the FOV constraint requirements on real-time visibility of manipulated object and effectively solve the problem of servoing task failure caused by the object deviating from the camera FOV during the VS.https://doi.org/10.1177/1729881421990320 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jing Xin Han Cheng Baojing Ran |
spellingShingle |
Jing Xin Han Cheng Baojing Ran Visual servoing of robot manipulator with weak field-of-view constraints International Journal of Advanced Robotic Systems |
author_facet |
Jing Xin Han Cheng Baojing Ran |
author_sort |
Jing Xin |
title |
Visual servoing of robot manipulator with weak field-of-view constraints |
title_short |
Visual servoing of robot manipulator with weak field-of-view constraints |
title_full |
Visual servoing of robot manipulator with weak field-of-view constraints |
title_fullStr |
Visual servoing of robot manipulator with weak field-of-view constraints |
title_full_unstemmed |
Visual servoing of robot manipulator with weak field-of-view constraints |
title_sort |
visual servoing of robot manipulator with weak field-of-view constraints |
publisher |
SAGE Publishing |
series |
International Journal of Advanced Robotic Systems |
issn |
1729-8814 |
publishDate |
2021-02-01 |
description |
Aiming at the problem of servoing task failure caused by the manipulated object deviating from the camera field-of-view (FOV) during the robot manipulator visual servoing (VS) process, a new VS method based on an improved tracking learning detection (TLD) algorithm is proposed in this article, which allows the manipulated object to deviate from the camera FOV in several continuous frames and maintains the smoothness of the robot manipulator motion during VS. Firstly, to implement the robot manipulator visual object tracking task with strong robustness under the weak FOV constraints, an improved TLD algorithm is proposed. Then, the algorithm is used to extract the image features (object in the camera FOV) or predict image features (object out of the camera FOV) of the manipulated object in the current frame. And then, the position of the manipulated object in the current image is further estimated. Finally, the visual sliding mode control law is designed according to the image feature errors to control the motion of the robot manipulator so as to complete the visual tracking task of the robot manipulator to the manipulated object in complex natural scenes with high robustness. Several robot manipulator VS experiments were conducted on a six-degrees-of-freedom MOTOMANSV3 industrial manipulator under different natural scenes. The experimental results show that the proposed robot manipulator VS method can relax the FOV constraint requirements on real-time visibility of manipulated object and effectively solve the problem of servoing task failure caused by the object deviating from the camera FOV during the VS. |
url |
https://doi.org/10.1177/1729881421990320 |
work_keys_str_mv |
AT jingxin visualservoingofrobotmanipulatorwithweakfieldofviewconstraints AT hancheng visualservoingofrobotmanipulatorwithweakfieldofviewconstraints AT baojingran visualservoingofrobotmanipulatorwithweakfieldofviewconstraints |
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1724264841339731968 |