The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance

This work focuses on the use of 3D motion capture data to create and optimize a robotic human body model (RHBM) to predict the inverse kinematics of the upper body. The RHBM is a 25 degrees of freedom (DoFs) upper body model with subject specific kinematic parameters. The model was developed to pred...

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Main Author: Lura, Derek James
Format: Others
Published: Scholar Commons 2012
Subjects:
Online Access:http://scholarcommons.usf.edu/etd/4133
http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=5329&context=etd
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spelling ndltd-USF-oai-scholarcommons.usf.edu-etd-53292015-09-30T04:42:22Z The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance Lura, Derek James This work focuses on the use of 3D motion capture data to create and optimize a robotic human body model (RHBM) to predict the inverse kinematics of the upper body. The RHBM is a 25 degrees of freedom (DoFs) upper body model with subject specific kinematic parameters. The model was developed to predict the inverse kinematics of the upper body in the simulation of a virtual person, including persons with functional limitations such as a transradial or transhumeral amputation. Motion data were collected from 14 subjects: 10 non-amputees control subjects, 1 person with a transradial amputation, and 3 persons with a transhumeral amputation, in the University of South Florida's (USF) motion analysis laboratory. Motion capture for each subject consisted of the repetition of a series of range of motion (RoM) tasks and activities of daily living (ADLs), which were recorded using an eight camera Vicon (Oxford, UK) motion analysis system. The control subjects were also asked to repeat the motions while wearing a brace on their dominant arm. The RoM tasks consisted of elbow flexion & extension, forearm pronation & supination, shoulder flexion & extension, shoulder abduction & adduction, shoulder rotation, torso flexion & extension, torso lateral flexion, and torso rotation. The ADLs evaluated were brushing one's hair, drinking from a cup, eating with a knife and fork, lifting a laundry basket, and opening a door. The impact of bracing and prosthetic devices on the subjects' RoM, and their motion during ADLs was analyzed. The segment geometries of the subjects' upper body were extracted directly from the motion analysis data using a functional joint center method. With this method there are no conventional or segment length differences between recorded data segments and the RHBM. This ensures the accuracy of the RHBM when reconstructing a recorded task, as the model has the same geometry as the recorded data. A detailed investigation of the weighted least norm, probability density gradient projection method, artificial neural networks was performed to optimize the redundancy RHBM inverse kinematics. The selected control algorithm consisted of a combination of the weighted least norm method and the gradient projection of the null space, minimizing the inverse of the probability density function. This method increases the accuracy of the RHBM while being suitable for a wide range of tasks and observing the required subject constraint inputs. 2012-01-01T08:00:00Z text application/pdf http://scholarcommons.usf.edu/etd/4133 http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=5329&context=etd default Graduate Theses and Dissertations Scholar Commons Amputee Compensatory Motion Motion Analysis Motion Planning Prosthetics Simulation American Studies Arts and Humanities Medicine and Health Sciences Robotics
collection NDLTD
format Others
sources NDLTD
topic Amputee
Compensatory Motion
Motion Analysis
Motion Planning
Prosthetics
Simulation
American Studies
Arts and Humanities
Medicine and Health Sciences
Robotics
spellingShingle Amputee
Compensatory Motion
Motion Analysis
Motion Planning
Prosthetics
Simulation
American Studies
Arts and Humanities
Medicine and Health Sciences
Robotics
Lura, Derek James
The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance
description This work focuses on the use of 3D motion capture data to create and optimize a robotic human body model (RHBM) to predict the inverse kinematics of the upper body. The RHBM is a 25 degrees of freedom (DoFs) upper body model with subject specific kinematic parameters. The model was developed to predict the inverse kinematics of the upper body in the simulation of a virtual person, including persons with functional limitations such as a transradial or transhumeral amputation. Motion data were collected from 14 subjects: 10 non-amputees control subjects, 1 person with a transradial amputation, and 3 persons with a transhumeral amputation, in the University of South Florida's (USF) motion analysis laboratory. Motion capture for each subject consisted of the repetition of a series of range of motion (RoM) tasks and activities of daily living (ADLs), which were recorded using an eight camera Vicon (Oxford, UK) motion analysis system. The control subjects were also asked to repeat the motions while wearing a brace on their dominant arm. The RoM tasks consisted of elbow flexion & extension, forearm pronation & supination, shoulder flexion & extension, shoulder abduction & adduction, shoulder rotation, torso flexion & extension, torso lateral flexion, and torso rotation. The ADLs evaluated were brushing one's hair, drinking from a cup, eating with a knife and fork, lifting a laundry basket, and opening a door. The impact of bracing and prosthetic devices on the subjects' RoM, and their motion during ADLs was analyzed. The segment geometries of the subjects' upper body were extracted directly from the motion analysis data using a functional joint center method. With this method there are no conventional or segment length differences between recorded data segments and the RHBM. This ensures the accuracy of the RHBM when reconstructing a recorded task, as the model has the same geometry as the recorded data. A detailed investigation of the weighted least norm, probability density gradient projection method, artificial neural networks was performed to optimize the redundancy RHBM inverse kinematics. The selected control algorithm consisted of a combination of the weighted least norm method and the gradient projection of the null space, minimizing the inverse of the probability density function. This method increases the accuracy of the RHBM while being suitable for a wide range of tasks and observing the required subject constraint inputs.
author Lura, Derek James
author_facet Lura, Derek James
author_sort Lura, Derek James
title The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance
title_short The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance
title_full The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance
title_fullStr The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance
title_full_unstemmed The Creation of a Robotics Based Human Upper Body Model for Predictive Simulation of Prostheses Performance
title_sort creation of a robotics based human upper body model for predictive simulation of prostheses performance
publisher Scholar Commons
publishDate 2012
url http://scholarcommons.usf.edu/etd/4133
http://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=5329&context=etd
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