Speech modeling based on balanced reduction techniques
In this thesis an CELP algorithm based speech signal processing sys-tem is developed, in which, unlike the classical modeling where an Auto Regressive model is used, a stable Auto Regressive Moving Av-erage (ARM A) model employed. The basic idea is to first estimate the vocal tract filter with an Au...
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sg-ntu-dr.10356-133662023-07-04T15:13:08Z Speech modeling based on balanced reduction techniques Gao, Guangmin Li, Gang School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering::Electronic systems::Signal processing In this thesis an CELP algorithm based speech signal processing sys-tem is developed, in which, unlike the classical modeling where an Auto Regressive model is used, a stable Auto Regressive Moving Av-erage (ARM A) model employed. The basic idea is to first estimate the vocal tract filter with an Auto Regressive(AR) model of very high order and then convert it into an ARMA model via the powerful Balanced Model Reduction(BMR) techniques. Thus, the difficulties in the direct estimation of ARMA parameters is avoided. Another advantage of this method is to estimate the vocal tract filter as one transfer function and hence no pitch detection is required, which may simplify the existing speech processing. It is believed that with the ARMA model obtained using this proposed mothed, the CELP algorithm can achieve a synthetic speech of high quality at very low bit rates. Master of Engineering 2008-10-20T07:26:44Z 2008-10-20T07:26:44Z 1998 1998 Thesis http://hdl.handle.net/10356/13366 en 87 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering::Electronic systems::Signal processing Gao, Guangmin Speech modeling based on balanced reduction techniques |
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In this thesis an CELP algorithm based speech signal processing sys-tem is developed, in which, unlike the classical modeling where an Auto Regressive model is used, a stable Auto Regressive Moving Av-erage (ARM A) model employed. The basic idea is to first estimate the vocal tract filter with an Auto Regressive(AR) model of very high order and then convert it into an ARMA model via the powerful Balanced Model Reduction(BMR) techniques. Thus, the difficulties in the direct estimation of ARMA parameters is avoided. Another advantage of this method is to estimate the vocal tract filter as one transfer function and hence no pitch detection is required, which may simplify the existing speech processing. It is believed that with the ARMA model obtained using this proposed mothed, the CELP algorithm can achieve a synthetic speech of high quality at very low bit rates. |
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Li, Gang |
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Li, Gang Gao, Guangmin |
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Theses and Dissertations |
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Gao, Guangmin |
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Gao, Guangmin |
title |
Speech modeling based on balanced reduction techniques |
title_short |
Speech modeling based on balanced reduction techniques |
title_full |
Speech modeling based on balanced reduction techniques |
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Speech modeling based on balanced reduction techniques |
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Speech modeling based on balanced reduction techniques |
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speech modeling based on balanced reduction techniques |
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2008 |
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http://hdl.handle.net/10356/13366 |
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