Title :
Probabilistic classification based on Gaussian copula for speech recognition: Application to Spoken Arabic digits
Author :
Hammami, N. ; Bedda, M. ; Farah, Nadir
Author_Institution :
Lab. LabGed, Univ. Badji Mokhtar Annaba, Annaba, Algeria
Abstract :
Language modeling for an inflected language such as Arabic poses new challenges for automatic speech recognition and related topic due to its rich morphology. A new technique for automatic speech recognition is presented in this paper. This technique employs a full measure of statistical dependence among random variables that is known as copulas. A novel probabilistic classifier that combines finite Gaussian mixture modeling for marginal distribution function and Gaussian copula is developed. Using benchmark Arabic speech data base, the accuracy of the developed Gaussian copula with Gaussian Mixtures marginal distribution GCGMM is validated and compared with Gaussian copula with simple empirical marginal distribution GCEM. The result demonstrates the improvement and shows an excellent performance.
Keywords :
Gaussian distribution; Gaussian processes; mixture models; natural language processing; probability; speech recognition; statistical analysis; GCEM; GCGMM; Gaussian copula; Gaussian mixtures marginal distribution; automatic speech recognition; benchmark Arabic speech database; copulas; empirical marginal distribution; finite Gaussian mixture modeling; inflected language; language modeling; marginal distribution function; probabilistic classification; probabilistic classifier; spoken Arabic digits; statistical dependence; Acoustics; Benchmark testing; Correlation; Man machine systems; Speech; Speech recognition; Arabic Speech Recognition; Automatic speech recognition; Copula; Copula Function; Gaussian mixture model (GMM); Probabilistic Classification; Speech Recognition; Spoken Arabic Digits; statistical modeling;
Conference_Titel :
Signal Processing: Algorithms, Architectures, Arrangements, and Applications (SPA), 2013
Conference_Location :
Poznan
Electronic_ISBN :
2326-0262