Using Evolution to Learn How to Perform Interest Point Detection
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- @InProceedings{Trujillo:2006:ICPR,
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author = "L. Trujillo and G. Olague",
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title = "Using Evolution to Learn How to Perform Interest Point
Detection",
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booktitle = "ICPR 2006 18th International Conference on Pattern
Recognition",
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year = "2006",
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editor = "X. Y Tang et al.",
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volume = "1",
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pages = "211--214",
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month = "20-24 " # aug,
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming",
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URL = "http://www.genetic-programming.org/hc2006/Olague-Paper-2-ICPR-2006.pdf",
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DOI = "doi:10.1109/ICPR.2006.1153",
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abstract = "The performance of high-level computer vision
applications is tightly coupled with the low-level
vision operations that are commonly required. Thus, it
is advantageous to have low-level feature extractors
that are optimal with respect to a desired performance
criteria. This paper presents a novel approach that
uses Genetic Programming as a learning framework that
generates a specific type of low-level feature
extractor: Interest Point Detector. The learning
process is posed as an optimization problem. The
optimization criterion is designed to promote the
emergence of the detectors' geometric stability under
different types of image transformations and global
separability between detected points. This concept is
represented by the operators repeatability rate [11].
Results prove that our approach is effective at
automatically generating low-level feature extractors.
This paper presents two different evolved operators:
IPGP1 and IPGP2. Their performance is comparable with
the Harris [5] operator given their excellent
repeatability rate. Furthermore, the learning process
was able to rediscover the DET corner detector proposed
by Beaudet.",
- }
Genetic Programming entries for
Leonardo Trujillo
Gustavo Olague
Citations