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The probabilistic neural network architecture for high speed classification of remotely sensed imageryIn this paper we discuss a neural network architecture (the Probabilistic Neural Net or the PNN) that, to the best of our knowledge, has not previously been applied to remotely sensed data. The PNN is a supervised non-parametric classification algorithm as opposed to the Gaussian maximum likelihood classifier (GMLC). The PNN works by fitting a Gaussian kernel to each training point. The width of the Gaussian is controlled by a tuning parameter called the window width. If very small widths are used, the method is equivalent to the nearest neighbor method. For large windows, the PNN behaves like the GMLC. The basic implementation of the PNN requires no training time at all. In this respect it is far better than the commonly used backpropagation neural network which can be shown to take O(N6) time for training where N is the dimensionality of the input vector. In addition the PNN can be implemented in a feed forward mode in hardware. The disadvantage of the PNN is that it requires all the training data to be stored. Some solutions to this problem are discussed in the paper. Finally, we discuss the accuracy of the PNN with respect to the GMLC and the backpropagation neural network (BPNN). The PNN is shown to be better than GMLC and not as good as the BPNN with regards to classification accuracy.
Document ID
19930016783
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Chettri, Samir R.
(NASA Goddard Space Flight Center Greenbelt, MD, United States)
Cromp, Robert F.
(NASA Goddard Space Flight Center Greenbelt, MD, United States)
Date Acquired
September 6, 2013
Publication Date
January 1, 1993
Publication Information
Publication: The 1993 Goddard Conference on Space Applications of Artificial Intelligence
Subject Category
Cybernetics
Accession Number
93N25972
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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