Development of a modified neural network-based land cover classification system using automated data selector and multiresolution remotely sensed data |
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Authors: | Siamak Khorram Hui Yuan |
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Affiliation: | 1. Department of Environmental Science, Policy, and Management , University of California , Berkeley, 94720, California;2. Center for Earth Observation , North Carolina State University , Raleigh, NC, USA;3. ERDAS Inc., Chao Yang District , Beijing, China |
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Abstract: | Integrating multiple images with artificial neural networks (ANN) improves classification accuracy. ANN performance is sensitive to training datasets. Complexity and errors compound when merging multiple data, pointing to needs for new techniques. Kohonen's self-organizing mapping (KSOM) neural network was adapted as an automated data selector (ADS) to replace manual training data processes. The multilayer perceptron (MLP) network was then trained using automatically extracted datasets and used for classification. Two hypotheses were tested: ADS adapted from the KSOM network provides adequate and reliable training datasets, improving MLP classification performance; and fusion of Landsat thematic mapper (TM) and SPOT images using the modified ANN approach increases accuracy. ADS adapted from the KSOM network improved training data quality and increased classification accuracy and efficiency. Fusion of compatible multiple data can improve performance if appropriate training datasets are collected. This proved to be a viable classification scheme particularly where acquiring sufficient and reliable training datasets is difficult. |
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Keywords: | automated data selector (ADS) artificial neural network (ANN) Landsat TM SPOT multiresolution classification land use/land cover classification, data fusion, image classification, remote sensing |
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