Satellite Image Classification Using Granular Neural Networks
The increased synergy between neural networks (NN) and fuzzy sets has led to
the introduction of granular neural networks (GNNs) that operate on granules of
information, rather than information itself. The fact that processing is done on a
conceptual rather than on a numerical level, combined with the representation of
granules using linguistic terms, results in increased interpretability. This is the
actual benefit, and not increased accuracy, gained by GNNs. The constraints
used to implement the GNN are such that accuracy degradation should not be
surprising. Having said that, it is well known that simple structured NNs tend to
be less prone to over-fitting the training data set, maintaining the ability to
generalize and more accurately classify previously unseen data. Standard NNs
are frequently found to be accurate but difficult to explain, hence they are often
associated with the black box syndrome. Because in GNNs the operation is
carried out at a conceptual level, the components have unambiguous meaning,
revealing how classification decisions are formed. In this paper, the interpretability
of GNNs is exploited using a satellite image classification problem. We
examine how land use classification using both spectral and non-spectral
information is expressed in GNN terms. One further contribution of this paper is
the use of specific symbolization of the network components to easily establish
causality relationships.
STATHAKIS Dimitrios;
VASILAKOS A.;
2007-04-13
TAYLOR & FRANCIS LTD
JRC36833
https://publications.jrc.ec.europa.eu/repository/handle/JRC36833,
10.1080/01431160600567779,
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