author_facet Gao, P.
Shetty, S.
Momm, H. G.
Gao, P.
Shetty, S.
Momm, H. G.
author Gao, P.
Shetty, S.
Momm, H. G.
spellingShingle Gao, P.
Shetty, S.
Momm, H. G.
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
General Earth and Planetary Sciences
General Environmental Science
author_sort gao, p.
spelling Gao, P. Shetty, S. Momm, H. G. 2194-9034 Copernicus GmbH General Earth and Planetary Sciences General Environmental Science http://dx.doi.org/10.5194/isprsarchives-xl-1-113-2014 <jats:p>Abstract. Evolutionary computation is used for improved information extraction from high-resolution satellite imagery. The utilization of evolutionary computation is based on stochastic selection of input parameters often defined in a trial-and-error approach. However, exploration of optimal input parameters can yield improved candidate solutions while requiring reduced computation resources. In this study, the design and implementation of a system that investigates the optimal input parameters was researched in the problem of feature extraction from remotely sensed imagery. The two primary assessment criteria were the highest fitness value and the overall computational time. The parameters explored include the population size and the percentage and order of mutation and crossover. The proposed system has two major subsystems; (i) data preparation: the generation of random candidate solutions; and (ii) data processing: evolutionary process based on genetic programming, which is used to spectrally distinguish the features of interest from the remaining image background of remote sensed imagery. The results demonstrate that the optimal generation number is around 1500, the optimal percentage of mutation and crossover ranges from 35% to 40% and 5% to 0%, respectively. Based on our findings the sequence that yielded better results was mutation over crossover. These findings are conducive to improving the efficacy of utilizing genetic programming for feature extraction from remotely sensed imagery. </jats:p> Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
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series The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
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title Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_unstemmed Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_full Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_fullStr Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_full_unstemmed Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_short Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_sort exploration of genetic programming optimal parameters for feature extraction from remote sensed imagery
topic General Earth and Planetary Sciences
General Environmental Science
url http://dx.doi.org/10.5194/isprsarchives-xl-1-113-2014
publishDate 2014
physical 113-120
description <jats:p>Abstract. Evolutionary computation is used for improved information extraction from high-resolution satellite imagery. The utilization of evolutionary computation is based on stochastic selection of input parameters often defined in a trial-and-error approach. However, exploration of optimal input parameters can yield improved candidate solutions while requiring reduced computation resources. In this study, the design and implementation of a system that investigates the optimal input parameters was researched in the problem of feature extraction from remotely sensed imagery. The two primary assessment criteria were the highest fitness value and the overall computational time. The parameters explored include the population size and the percentage and order of mutation and crossover. The proposed system has two major subsystems; (i) data preparation: the generation of random candidate solutions; and (ii) data processing: evolutionary process based on genetic programming, which is used to spectrally distinguish the features of interest from the remaining image background of remote sensed imagery. The results demonstrate that the optimal generation number is around 1500, the optimal percentage of mutation and crossover ranges from 35% to 40% and 5% to 0%, respectively. Based on our findings the sequence that yielded better results was mutation over crossover. These findings are conducive to improving the efficacy of utilizing genetic programming for feature extraction from remotely sensed imagery. </jats:p>
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author Gao, P., Shetty, S., Momm, H. G.
author_facet Gao, P., Shetty, S., Momm, H. G., Gao, P., Shetty, S., Momm, H. G.
author_sort gao, p.
container_start_page 113
container_title The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
container_volume XL-1
description <jats:p>Abstract. Evolutionary computation is used for improved information extraction from high-resolution satellite imagery. The utilization of evolutionary computation is based on stochastic selection of input parameters often defined in a trial-and-error approach. However, exploration of optimal input parameters can yield improved candidate solutions while requiring reduced computation resources. In this study, the design and implementation of a system that investigates the optimal input parameters was researched in the problem of feature extraction from remotely sensed imagery. The two primary assessment criteria were the highest fitness value and the overall computational time. The parameters explored include the population size and the percentage and order of mutation and crossover. The proposed system has two major subsystems; (i) data preparation: the generation of random candidate solutions; and (ii) data processing: evolutionary process based on genetic programming, which is used to spectrally distinguish the features of interest from the remaining image background of remote sensed imagery. The results demonstrate that the optimal generation number is around 1500, the optimal percentage of mutation and crossover ranges from 35% to 40% and 5% to 0%, respectively. Based on our findings the sequence that yielded better results was mutation over crossover. These findings are conducive to improving the efficacy of utilizing genetic programming for feature extraction from remotely sensed imagery. </jats:p>
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spelling Gao, P. Shetty, S. Momm, H. G. 2194-9034 Copernicus GmbH General Earth and Planetary Sciences General Environmental Science http://dx.doi.org/10.5194/isprsarchives-xl-1-113-2014 <jats:p>Abstract. Evolutionary computation is used for improved information extraction from high-resolution satellite imagery. The utilization of evolutionary computation is based on stochastic selection of input parameters often defined in a trial-and-error approach. However, exploration of optimal input parameters can yield improved candidate solutions while requiring reduced computation resources. In this study, the design and implementation of a system that investigates the optimal input parameters was researched in the problem of feature extraction from remotely sensed imagery. The two primary assessment criteria were the highest fitness value and the overall computational time. The parameters explored include the population size and the percentage and order of mutation and crossover. The proposed system has two major subsystems; (i) data preparation: the generation of random candidate solutions; and (ii) data processing: evolutionary process based on genetic programming, which is used to spectrally distinguish the features of interest from the remaining image background of remote sensed imagery. The results demonstrate that the optimal generation number is around 1500, the optimal percentage of mutation and crossover ranges from 35% to 40% and 5% to 0%, respectively. Based on our findings the sequence that yielded better results was mutation over crossover. These findings are conducive to improving the efficacy of utilizing genetic programming for feature extraction from remotely sensed imagery. </jats:p> Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
spellingShingle Gao, P., Shetty, S., Momm, H. G., The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery, General Earth and Planetary Sciences, General Environmental Science
title Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_full Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_fullStr Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_full_unstemmed Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_short Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
title_sort exploration of genetic programming optimal parameters for feature extraction from remote sensed imagery
title_unstemmed Exploration of Genetic Programming Optimal Parameters for Feature Extraction from Remote Sensed Imagery
topic General Earth and Planetary Sciences, General Environmental Science
url http://dx.doi.org/10.5194/isprsarchives-xl-1-113-2014