Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 87758
Unsupervised Reciter Recognition Using Gaussian Mixture Models
Authors: Ahmad Alwosheel, Ahmed Alqaraawi
Abstract:
This work proposes an unsupervised text-independent probabilistic approach to recognize Quran reciter voice. It is an accurate approach that works on real time applications. This approach does not require a prior information about reciter models. It has two phases, where in the training phase the reciters' acoustical features are modeled using Gaussian Mixture Models, while in the testing phase, unlabeled reciter's acoustical features are examined among GMM models. Using this approach, a high accuracy results are achieved with efficient computation time process.Keywords: Quran, speaker recognition, reciter recognition, Gaussian Mixture Model
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