An Affordable Telerobotic System Architecture for Grasp Training and Object Grasping for Human–Machine Interaction

Author:

Hazra Sudip1,Abdul Rahaman Abdul Hafiz1,Shiakolas Panos S.2

Affiliation:

1. MARS Lab, Mechanical & Aerospace Engineering, The University of Texas at Arlington , Arlington, TX 76019

2. Micro Medical Manufacturing Automation Robotics Systems Laboratory, Mechanical & Aerospace Engineering, The University of Texas at Arlington , Arlington, TX 76019

Abstract

Abstract Due to mobility impairment, a person might rely on wheelchairs, canes, and crutches for assistance but could face challenges when performing tasks such as grasping and manipulating objects due to limitations in reach and capability. To overcome these challenges, a multidegree-of-freedom robotic arm with an anthropomorphic robotic hand (ARH) could be used. In this research, we propose an architecture and then implement it toward the development of an assistive system to assist a person with object grasping. The architecture interlinks three functional modules to provide three operation modes to calibrate the system, train a user on how to execute a grasp, synthesize grasps, and execute a grasp. The developed system consists of a user input and feedback glove capable of capturing user inputs and providing grasp-related vibrotactile feedback, a coppeliasim virtual environment emulating the motions of the ARH, and an underactuated ARH capable of executing grasps while sensing grasp contact locations. The operation of the developed system is evaluated to determine the ability of a person to operate it and perform a grasp using two control methods; using a synthesized grasp or under real-time continuous control. The successful evaluation validates the architecture and the developed system to provide the ability to perform a grasp. The results of the evaluation provide confidence in expanding the system capabilities and using it to develop a database of grasp trajectories of objects with different geometries.

Publisher

ASME International

Subject

General Medicine

Reference23 articles.

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4. Hazra, S., 2018, “ Inducing Vibro-Tactile Sensation at Mesoscale,” M.S. thesis, The University of Texas at Arlington, Arlington, TX.http://hdl.handle.net/10106/29676

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