Identification of normal and pain infants based on individual crying pattern
Abstract
An Infant informs his or her needs to those around them by crying. It is difficult for
us adults to exactly know the message associated with each crying pattern.
In this endeavour, a normal cry and a cry associated with pain will be identified using a
signal processing approach. There are four processes involved; first stage is to filter the
signal using pre-emphasis filter, then to perform feature extraction using Melfrequency
cepstral coefficient (MFCC) and finally to classify the features into normal cry
pattern and pain cry pattern using Radial Basis Function Neural Network (RBF). The
accuracy achieved is 92.3%. Thus, the RBF has the potential to be utilized as a classifier for crying pattern signals.