Time-frequency analysis based methods for classification of newborn cry signals

The infant cry classification implies non invasive objective methods, classification of different patterns of infant cry utterances and adoption of artificial and digital signal processing techniques. It has been commenced past decades ago to overcome the limitations of subjective methods in part...

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Format: Thesis
Language:English
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Online Access:http://dspace.unimap.edu.my:80/xmlui/bitstream/123456789/77899/1/Page%201-24.pdf
http://dspace.unimap.edu.my:80/xmlui/bitstream/123456789/77899/2/Full%20text.pdf
http://dspace.unimap.edu.my:80/xmlui/bitstream/123456789/77899/4/Saraswathy.pdf
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Summary:The infant cry classification implies non invasive objective methods, classification of different patterns of infant cry utterances and adoption of artificial and digital signal processing techniques. It has been commenced past decades ago to overcome the limitations of subjective methods in particularly auditory perception and human spectrographic analysis, which are relying on clinical rater‘s experience and expertise. This thesis addresses the development of an objective method for classification of newborn cries primarily using time-frequency (t-f) methods. Towards this aim, a novel investigation using two different t-f based signal processing approaches was performed: (a) Quadratic time-frequency distributions (QTFDs): Spectrogram (SPEC), Wigner- Ville distribution (WVD), Smoothed-Wigner Ville distribution (SWVD), Choi-William distribution (CWD) and Modified B-distribution (MBD), and (b) Wavelet packet transform (WPT) based method: wavelet packet spectrum (Wpspectrum). The effectiveness of the suggested t-f methods was analyzed using normal and different pathological cry signals. The investigational cry signals were accessed from three different origins of databases (Mexico, Hungary and Malaysia (self-developed database). In order to investigate the effectiveness of the suggested t-f methods, eight different cry experiments were suggested, including binary and multiclass problems. In the binary domain, analysis of cry signals from different origin and the severity level of pathological cry signals were considered for investigation. The framework of this work was designed in two phases in order to compare the performance evaluation of the suggested t-f methods with the state of the art attributes in the infant cry classification area (Mel frequency cepstral coefficients (MFCCs) and Linear prediction coefficients (LPCs)). Initially, the performance evaluation of the individual suggested t-f methods, MFCCs and LPCs on different proposed cry datasets were performed. In this case, a cluster of t-f based statistical features was extracted from the suggested t-f methods. The performance evaluation in term of classification task was tackled using two different supervised neural networks, namely Probabilistic Neural Network (PNN) and General Regression Neural Network (GRNN). Subsequently, by considering the classification performance, the best distribution from the QTFDs was selected. In the second phase, a feature set, combination of MFCCs, LPCs and the extracted statistical features from the best QTFDs and Wpspectrum was formed. Different feature selection techniques, such as Plus-1-minus-r (LRS) and Information Gain (IGS) were applied on the formed feature set to obtain a parsimonious subset of those features. The discrimination capability of the selected feature vector in terms of classification accuracy was evaluated using PNN and GRNN.