There are two big stages to implement in a signal classification process: features extraction and signal classification. The
present work shows up the development of an automated classifier based on the use of the Wavelet Transform to extract signal
characteristics, and Neural Networks (Feed Forward type) to obtain decision rules. The classifier has been applied to the
nuclear fusion environment (TJ-II stellarator), specifically to the Thomson Scattering diagnostic, which is devoted to measure
density and temperature radial profiles. The aim of this work is to achieve an automated profile reconstruction from raw data
without human intervention. Raw data processing depends on the image pattern obtained in the measurement and, therefore, an
image classifier is required. The method reduces the 221.760 original features to only 900, being the success mean rate over
90%. This classifier has been programmed in MATLAB.