Data di Pubblicazione:
2001
Abstract:
Pattern recognition techniques have widely been
used in the context of odor recognition. The recognition
of mixtures and simple odors as separate clusters
is an untractable problem with some of the classical
supervised methods. Recently a new paradigm
has been introduced in which the detection problem
can be seen as a learning from examples problem. In
this paper we investigate odor recognition in this new
perspective and in particular by using a novel learning
scheme known as Support Vector Machines (SVM)
which guarantees high generalization ability on the
test set. We illustrate the basics of the theory of SVM
and show its performance in comparison with Radial
Basis network and the error backpropagation training
method. The leave-one-out procedure has been used
for all classifiers, in order to finding the near-optimal
SVM parameter and both to reduce the generalization
error and to avoid outliers.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Elenco autori:
Ancona, Nicola; Distante, Cosimo
Link alla scheda completa:
Titolo del libro:
Artificial Chemical Sensing: Olfaction and the Electronic Nose (ISOEN 2001)