Paper
17 December 1996 Spatial and temporal classification with multiple self-organizing maps
Weijan Wan, Donald Fraser
Author Affiliations +
Abstract
There has been a great deal of interest recently in pattern recognition and classification for remote sensing, using both classical statistics and artificial neural networks. An interesting neural network is Kohonen's seif-organising map (SOM), which is a clustering algorithm based on competitive learning. We have found that seif-organisation is a neural network paradigm that is especially suited to remote sensing applications, because of its power and accuracy, its conceptual simplicity and efficiency during learning. A disadvantage of the Kohonen SOM is that there is no inherent partitioning. We have investigated a natural extension of the SOM to multiple seif-organising maps, which we call MSOM, as a means of providing a framework for various remote sensing classification requirements. These include both supervised and unsupervised classification, high dimensional data analysis, multisource data fusion, spatial analysis and combined spatial and temporal classification.
© (1996) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Weijan Wan and Donald Fraser "Spatial and temporal classification with multiple self-organizing maps", Proc. SPIE 2955, Image and Signal Processing for Remote Sensing III, (17 December 1996); https://doi.org/10.1117/12.262899
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Cited by 3 scholarly publications.
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KEYWORDS
Remote sensing

Neural networks

Image classification

Modeling

Pattern recognition

Feature extraction

Current controlled voltage source

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