Comparison of genetic algorithm systems with neural network and statistical techniques for analysis of cloud structures in midlatitude storm systems
Resource type
Authors/contributors
- Parikh, Jo Ann (Author)
- Daponte, J S (Author)
- Vitale, Joseph N (Author)
- Tselioudis, George (Author)
Title
Comparison of genetic algorithm systems with neural network and statistical techniques for analysis of cloud structures in midlatitude storm systems
Abstract
Cloud analyses provide information which is vital to the detection, understanding and prediction of meteorological trends and environmental changes. This paper compares statistical, neural network and genetic algorithm methods for recognition and tracking of midlatitude storm clouds in sequences of low-resolution cloud-top pressure data sets. Regions of interest are identified and tracked from one image frame to the next consecutive frame in an eight-frame sequence. Classification techniques are used to determine the relationships between regions of interest in consecutive time frames. A genetic algorithm procedure is then used to revise classifier outputs to ensure that consistency constraints are not violated. © 1997 Elsevier Science B.V.
Publication
Pattern Recognition Letters
Date
1997
Volume
18
Issue
11
Pages
1347-1351
Journal Abbr
Pattern Recogn. Lett.
Citation Key
pop00164
ISSN
01678655 (ISSN)
Language
English
Extra
6 citations (Crossref) [2023-10-31]
Citation Key Alias: lens.org/138-693-531-878-293
tex.type: [object Object]
Citation
Parikh, J. A., Daponte, J. S., Vitale, J. N., & Tselioudis, G. (1997). Comparison of genetic algorithm systems with neural network and statistical techniques for analysis of cloud structures in midlatitude storm systems. Pattern Recognition Letters, 18(11), 1347–1351. https://doi.org/10.1016/s0167-8655(97)00115-3
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