Literature DB >> 35002195

Human-in-the-Loop Robot Control for Human-Robot Collaboration: HUMAN INTENTION ESTIMATION AND SAFE TRAJECTORY TRACKING CONTROL FOR COLLABORATIVE TASKS.

Ashwin P Dani1, Iman Salehi1, Ghananeel Rotithor1, Daniel Trombetta1, Harish Ravichandar2.   

Abstract

This article provides a perspective on estimation and control problems in cyberphysical human systems (CPHSs) that work at the intersection of cyberphysical systems and human systems. The article also discusses solutions to some of the problems in CPHSs. One example of a CPHS is a close-proximity human-robot collaboration (HRC) in a manufacturing setting. The issue of the joint operation's efficiency and human factors, such as safety, attention, mental states, and comfort, naturally arise in the HRC context. By considering human factors, robots' actions can be controlled to achieve objectives, including safe operations and human comfort. Alternately, questions arise when robot factors are considered. For example, can we provide direct inputs and information to humans about an environment and the robots in the area such that the objectives of safety, efficiency, and comfort can be satisfied by considering the robots' current capabilities? The article discusses specific problems involved in HRC related to controlling a robot's motion by taking the current actions of the human in the loop with the robot's control system. To this end, two main challenges are discussed: 1) inferring the intention behind human actions by analyzing a person's motion as observed through skeletal tracking and gaze data and 2) a controller design that keeps robot motion constrained to a boundary in a 3D space by using control barrier functions. The intention inference method fuses skeleton-joint tracking data obtained using the Microsoft Kinect sensor and human gaze data gathered from red-green-blue Kinect images. The direction of a human's hand-reaching motion and a goal-reaching point is estimated while performing a joint pick-and-place task. The trajectory of the hand is estimated forward in time based on the gaze and hand motion data at the current time instance. A barrier function method is applied to generate safe robot trajectories along with forecast hand movements to complete the collaborative displacement of an object by a person and a robot. An adaptive controller is then used to track the reference trajectories using the Baxter robot, which is tested in a Gazebo simulation environment.

Entities:  

Year:  2020        PMID: 35002195      PMCID: PMC8740556     

Source DB:  PubMed          Journal:  IEEE Control Syst        ISSN: 1066-033X            Impact factor:   5.972


  12 in total

1.  Discerning intentions in dynamic human action.

Authors:  D A. Baldwin; J A. Baird
Journal:  Trends Cogn Sci       Date:  2001-04-01       Impact factor: 20.229

2.  Glance analysis of driver eye movements to evaluate distraction.

Authors:  Manbir Sodhi; Bryan Reimer; Ignacio Llamazares
Journal:  Behav Res Methods Instrum Comput       Date:  2002-11

3.  Kinodynamic Motion Planning With Continuous-Time Q-Learning: An Online, Model-Free, and Safe Navigation Framework.

Authors:  George P Kontoudis; Kyriakos G Vamvoudakis
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2019-03-29       Impact factor: 10.451

4.  Dynamic neural network-based robust observers for uncertain nonlinear systems.

Authors:  H T Dinh; R Kamalapurkar; S Bhasin; W E Dixon
Journal:  Neural Netw       Date:  2014-08-01

5.  Prediction of Ankle Dorsiflexion Moment by Combined Ultrasound Sonography and Electromyography.

Authors:  Qiang Zhang; Kang Kim; Nitin Sharma
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2019-11-14       Impact factor: 3.802

6.  An organizing principle for a class of voluntary movements.

Authors:  N Hogan
Journal:  J Neurosci       Date:  1984-11       Impact factor: 6.167

7.  Anticipating Human Activities Using Object Affordances for Reactive Robotic Response.

Authors:  Hema S Koppula; Ashutosh Saxena
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2016-01       Impact factor: 6.226

8.  Design and control of RUPERT: a device for robotic upper extremity repetitive therapy.

Authors:  Thomas G Sugar; Jiping He; Edward J Koeneman; James B Koeneman; Richard Herman; H Huang; Robert S Schultz; D E Herring; J Wanberg; Sivakumar Balasubramanian; Pete Swenson; Jeffrey A Ward
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2007-09       Impact factor: 3.802

9.  Source selection for real-time user intent recognition toward volitional control of artificial legs.

Authors: 
Journal:  IEEE J Biomed Health Inform       Date:  2013-09       Impact factor: 5.772

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