A Controlled Experiment: Evolution for Learning Difficult Image Classification
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Teller-EPIA,
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author = "Astro Teller and Manuela Veloso",
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title = "A Controlled Experiment: Evolution for Learning
Difficult Image Classification",
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booktitle = "Seventh Portuguese Conference On Artificial
Intelligence",
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year = "1995",
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publisher = "Springer-Verlag",
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series = "Lecture Notes in Computer Science",
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volume = "990",
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pages = "165--176",
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address = "Funchal, Madeira Island, Portugal",
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month = oct # " 3-6",
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keywords = "genetic algorithms, genetic programming, memory",
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URL = "http://www.cs.cmu.edu/afs/cs/usr/astro/public/papers/TellerVelosoEPIA.ps",
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abstract = "The signal-to-symbol problem is the task of converting
raw sensor data into a set of symbols that Artificial
Intelligence systems can reason about. We have
developed a method for directly learning and combining
algorithms that map signals into symbols. This new
method is based on evolutionary computation and imposes
little burden on or bias from the humans involved.
Previous papers of ours have focused on PADO, our
learning architecture. We showed how it applies to the
general signal-to-symbol task and in particular the
impressive results it brings to natural image object
recognition. The most exciting challenge this work has
received is the idea that PADO's success in natural
image object recognition may be due to the underlying
simplicity of the problems we posed it. This implicitly
assumes that our approach may suffer from many of same
afflictions that traditional computer vision approaches
suffer in natural image object recognition. This paper
responds to this challenge by designing and executing a
controlled experiment specifically designed to solidify
PADO's claim to success.",
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notes = "EPIA'95
",
- }
Genetic Programming entries for
Astro Teller
Manuela Veloso
Citations