Abstract
Photomicrographs of 5 species of Cymatocylis were digitised, binarised and edited by hand to remove large debris contaminating the images. An artificial neural network (back-propagation of error) was trained to categorise 201 of these specimens after pre-processing the data by Fourier transformation. Of the 299 trials which were carried out, 28 % demonstrated better than 70 % correct categorisation of the data used in the training sets. The best performing network learned to differentiate the training data set with an error rate of 11 %. The same network gave an error rate of 18 % when presented with previously unseen data. The results of training back-propagation of error networks are presented and the performance and limitations are discussed and compared with more classical morphometric and clustering techniques for the taxonomic separation of marine plankton. This automatic technique demonstrates the potential of neural network pattern classifiers for addressing the difficult taxonomic task of congeneric classification and also has wider implications for the automatic identification of field samples of marine organisms.