Neural network analysis is proposed and evaluated as a method of analysis of
marine biological data, specifically images of plankton specimens. The
quantification of the various plankton species is of great scientific importance, from
modelling global climatic change to predicting the economic effects of toxic red
tides. A preliminary evaluation of the neural network technique is made by the
development of a back-propagation system that successfully learns to distinguish
between two co-occurring morphologically similar species from the North Atlantic
Ocean, namely Ceratium arcticum and C. longipes. Various techniques are
developed to handle the indeterminately labelled source data, pre-process the
images and successfully train the networks. An analysis of the network solutions
is made, and some consideration given to how the system might be extended.
Date of Award | 1992 |
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Original language | English |
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Awarding Institution | |
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CLASSIFICATION OF COMPLEX TWO-DIMENSIONAL IMAGES IN A PARALLEL DISTRIBUTED PROCESSING ARCHITECTURE
SIMPSON, R. G. (Author). 1992
Student thesis: PhD