Evolving spectral transformations for multitemporal information extraction using evolutionary computation
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Momm:2011:JARS,
-
author = "Henrique G. Momm and Greg Easson",
-
title = "Evolving spectral transformations for multitemporal
information extraction using evolutionary computation",
-
journal = "Journal of Applied Remote Sensing",
-
year = "2011",
-
volume = "5",
-
pages = "053564--1 to 053564--18",
-
email = "henrique.momm@mtsu.edu",
-
keywords = "genetic algorithms, genetic programming,
multitemporal, evolutionary computation, remote
sensing",
-
ISSN = "1931-3195",
-
publisher = "SPIE",
-
URL = "http://remotesensing.spiedigitallibrary.org/article.aspx?articleid=1182443",
-
DOI = "doi:10.1117/1.3662089",
-
size = "18 pages",
-
abstract = "Remote sensing plays an important role in assessing
temporal changes in land features. The challenge often
resides in the conversion of large quantities of raw
data into actionable information in a timely and
cost-effective fashion. To address this issue, research
was undertaken to develop an innovative methodology
integrating biologically-inspired algorithms with
standard image classification algorithms to improve
information extraction from multitemporal imagery.
Genetic programming was used as the optimisation engine
to evolve feature-specific candidate solutions in the
form of nonlinear mathematical expressions of the image
spectral channels (spectral indices). The temporal
generalisation capability of the proposed system was
evaluated by addressing the task of building rooftop
identification from a set of images acquired at
different dates in a cross-validation approach. The
proposed system generates robust solutions (kappa
values > 0.75 for stage 1 and > 0.4 for stage 2)
despite the statistical differences between the scenes
caused by land use and land cover changes coupled with
variable environmental conditions, and the lack of
radiometric calibration between images. Based on our
results, the use of nonlinear spectral indices enhanced
the spectral differences between features improving the
clustering capability of standard classifiers and
providing an alternative solution for multitemporal
information extraction.",
- }
Genetic Programming entries for
Henrique G Momm
Greg Easson
Citations