Applying Genetic Programming To Control Of An Artificial Arm
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @InProceedings{Farry:1997:MEC,
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author = "Kristin Farry and Jaime Fernandez and
Robert Abramczyk and Mara Novy and Diane Atkins",
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title = "Applying Genetic Programming To Control Of An
Artificial Arm",
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booktitle = "Proceedings of the 1997 MyoElectric Controls/Powered
Prosthetics Symposium, MEC 97",
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year = "1997",
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address = "Fredericton, New Brunswick, Canada",
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month = aug,
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organisation = "Institute of Biomedical Engineering, University of New
Brunswick",
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keywords = "genetic algorithms, genetic programming",
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URL = "http://hdl.handle.net/10161/4883",
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size = "6 pages",
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abstract = "Robotics researchers at NASA's Johnson Space Center
(JSC) and Rice University have made substantial
progress in myoelectric teleoperation. A myoelectric
teleoperation system translates signals generated by an
able-bodied robot operator's muscles during hand
motions into commands that drive a robot's hand through
identical motions Farry's early work in myoelectric
teleoperation used variations over time in the
myoelectric spectrum as inputs to neural networks to
discriminate grasp types and thumb motions; schemes
yielded up to 93percent correct classification on thumb
motions. More recently, Fernandez achieved 100percent
correct non-realtime classification of thumb abduction,
extension, and flexion on the same myoelectric data
using genetic programming to develop functions that
discriminate between thumb motions using myoelectric
signal parameters. Genetic programming (GP) is an
evolutionary programming method where the computer can
modify the discriminating functions' form to improve
its performance, not just adjust numerical coefficients
or weights. While the function development may require
much computational time and many training cases, the
resulting discrimination functions can run in realtime
on modest computers These results suggest that
myoelectric signals might be a feasible teleoperation
medium, allowing an operator to use his own hand and
arm as a master to intuitively control an
anthropomorphic robot in a remote location such as
outer space. These early results imply that
multifunction myoelectric control based on genetic
programming is viable for prosthetics, since
teleoperation of a robot by an operator with a complete
limb is a limiting or 'best-case' scenario for
myoelectric control We suggest that myoelectric signals
of traumatic below-elbow amputees can control several
movements of a myoelectric hand with the help of a
function or functions developed with genetic
programming techniques. We are now testing this
hypothesis with the help of NASA/ISC under a NASA/JSC -
Texas Medical Center Cooperative Grant. In this study,
five adult below-elbow amputees are performing two
forearm motions, two wrist motions and two grasp
motions using their 'phantom' limb and sound limb while
we collect myoelectric data from four sites on the
residual limb and four sites from the sound limb. We
will use a variety of myoelectric signal time and
frequency features in a genetic programming analysis to
evolve functions that discriminate between signals
generated during different muscle contractions.",
- }
Genetic Programming entries for
Kristin A Farry
Jaime Fernandez
Robert Abramczyk
Mara Novy
Diane J Atkins
Citations