Title
Stress Detection Using Speech Spectrograms and Sigma-pi Neuron Units
Abstract
This paper presents a new system for automatic stress detection in speech. In the process of feature extraction speech spectrograms were used as the primary features. The sigma-pi neuron cells were then employed to derive the secondary features. The analysis was performed at three alternative sets of analytical frequency bands: critical bands, Bark scale bands and equivalent rectangular bandwidth (ERB) scale bands. The presented algorithm was tested using actual stressful speech utterances from SUSAS (Speech Under Simulated and Actual Stress) database on the vowel-based level. The automatic stress-level classification was implemented using Gaussian mixture model (GMM) and k-nearest neighbor (KNN) classifiers. The strongest effect on the classification results was observed when selecting the type of frequency bands. The ERB scale provided the highest classification results ranging from 67.84% to 73.76%. The classification results did not differ between data sets containing specific types of vowels and data sets containing mixtures of vowels. This indicates that the proposed method can be applied to voiced speech in speech independent conditions.
Year
DOI
Venue
2009
10.1109/ICNC.2009.59
ICNC (2)
Keywords
Field
DocType
automatic stress-level classification,speech independent condition,scale band,analytical frequency band,speech spectrograms,sigma-pi neuron units,actual stressful speech utterance,erb scale,stress detection,bark scale band,classification result,feature extraction speech spectrogram,highest classification result,k nearest neighbor,equivalent rectangular bandwidth,gaussian mixture model,critical bands,spectrograms,speech recognition,spectrogram,classification algorithms,gaussian processes,feature extraction,speech,speech processing,stress
Speech processing,Equivalent rectangular bandwidth,Pattern recognition,Critical band,Spectrogram,Computer science,Bark scale,Speech recognition,Feature extraction,Vowel,Artificial intelligence,Statistical classification
Conference
Citations 
PageRank 
References 
8
0.85
5
Authors
4
Name
Order
Citations
PageRank
Ling He1526.94
Margaret Lech223924.84
Namunu C. Maddage334526.51
Nicholas B. Allen4385.19