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Dive into the research topics where Matthew A Hartman is active.

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Featured researches published by Matthew A Hartman.


Journal of the Acoustical Society of America | 1998

Multi-segment vector quantizer for a speech coder suitable for use in a radiotelephone

Ira Alan Gerson; Mark A. Jasiuk; Matthew A Hartman

A Vector-Sum Excited Linear Predictive Coding (VSELP) speech coder provides improved quality and reduced complexity over a typical speech coder. VSELP uses a codebook which has a predefined structure such that the computations required for the codebook search process can be significantly reduced. This VSELP speech coder uses single or multi-segment vector quantizer of the reflection coefficients based on a Fixed-Point-Lattice-Technique (FLAT). Additionally, this speech coder uses a pre-quantizer to reduce the vector codebook search complexity and a high-resolution scalar quantizer to reduce the amount of memory needed to store the reflection coefficient vector codebooks. Resulting in a high quality speech coder with reduced computations and storage requirements.


Journal of the Acoustical Society of America | 1997

Method, apparatus, and radio optimizing Hidden Markov Model speech recognition

William M. Kushner; Edward Srenger; Matthew A Hartman

In a statistical based speech recognition system, one of the key issues is the selection of the Hidden Markov Model that best matches a given sequence of feature observations. The problem is usually addressed by the calculation of the maximum likelihood, ML, state sequence by means of a Viterbi or other decoder. Noise or inadequate training can produce a ML sequence associated with a Hidden Markov Model other than the correct model. The method of the present invention provides improved robustness by combining the standard ML state sequence score (416) with an additional path score (418) derived from the dynamics of the ML score as a function of time. These two scores, when combined, form a hybrid metric (420) that, when used with the decoder, optimizes selection of the correct Hidden Markov Model (422).


Archive | 1996

Method of storing reflection coeffients in a vector quantizer for a speech coder to provide reduced storage requirements

Ira Alan Gerson; Mark A. Jasiuk; Matthew A Hartman


Archive | 1995

Speech coding method and apparatus using mean squared error modifier for selected speech coder parameters using VSELP techniques

Ira Alan Gerson; Mark A. Jasiuk; Matthew A Hartman


Journal of the Acoustical Society of America | 1996

Method for generating a spectral noise weighting filter for use in a speech coder

Ira Alan Gerson; Mark A. Jasiuk; Matthew A Hartman


Archive | 1994

Vector Quantizer Method and Apparatus

Ira Alan Gerson; Mark A. Jasiuk; Matthew A Hartman


Archive | 1996

Method, apparatus, and radio for optimizing hidden markov model speech recognition

William M. Kushner; Edward Srenger; Matthew A Hartman


Archive | 1999

Voice coding method to be used in digital voice encoder

Ira Alan Gerson; Matthew A Hartman; Mark A. Jasiuk; イラ・エイ・ジャーソン; マーク・エイ・ジャシウク; マシュー・エイ・ハートマン


Archive | 1994

A method of generating a spectral weighting filter noise in a speech coder.

Ira Alan Gerson; Mark A. Jasiuk; Matthew A Hartman


Archive | 1994

Vector quantization method

Ira Alan Gerson; Mark A. Jasiuk; Matthew A Hartman

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