FEBRUARY 2012
INDONESIAN SPEECH RECOGNITION SYSTEM USING DISCRIMINANT FEATURE EXTRACTION – NEURAL PREDICTIVE CODING (DFE-NPC) AND PROBABILISTIC NEURAL NETWORK
A THESIS SUBMITTED TO THE GRADUATE SCHOOL OF
TELKOM INSTITUTE OF TECHNOLOGY
BY
UNTARI NOVIA WISESTY
213100004
Prof. Dr. The Houw Liong
Supervisor
Adiwijaya, SSi., MSi
Co-Supervisor
IN PARTIAL FULFILLMENT OF THE REQUIREMENTS FOR THE DEGREE OF
MASTER OF INFORMATICS IN THE INFORMATICS STUDY PROGRAM
ABSTRACT
Along with advances in information technology, it has been developed the technology to facilitate human life, one of which is speech recognition. Speech recognition is widely applied to speech to text, speech to emotion, in order to make gadget and computer easier to use, or to help people with hearing disability. However, the development of speech recognition to produce the text from the input voice has not well developed because of time processing. This is certainly going to make the animators and engineers need more time using speech recognition. Therefore, it needs a method to solve the time processing problem and with a good accuracy.
In this study proposes a speech recognition system using Discriminant Feature Extraction – Neural Predictive Coding (DFE-NPC) as feature extraction and Probabilistic Neural Network as recognition method. This system can accelerate time processing because it only uses one iteration in training process. Time processing of proposed method is decrease significantly until 1:95 compared to Fuzzy Hidden Markov Model. The best accuracy of the system is 100% when number of class is 2 and 3, and the worst one is 56% when number of class is 10.
Keywords: Speech Recognition System, DFE-NPC, PNN, time processing.
Indonesia harus mampu mengembangkan sains dan teknologi yang ramah lingkungan sesuai dengan perkembangannya di tanah air, tanpa teknologi yang boros sumber alam dan energi.
Hal yang penting juga ialah memahami dan menghayati filsafat sains untuk bisa menyatakan kebenaran ilmiah dan bisa membedakannya dengan "kebenaran" yang diperoleh dengan cara lain.
The Houw Liong
http://LinkedIn.com/in/houwliong
Subscribe to:
Post Comments (Atom)
No comments:
Post a Comment