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Speech recognition and blackboard expert systems.Loureiro, Guy Marchand. January 1992 (has links)
Spoken language is used by people to communicate naturally with one another. A simplistic
view of the communication process is as follows. Person A wishes to communicate an idea
to person B. The idea, initiated in the mind/brain of person A is encoded into speech
signals by means of the person A's speech production mechanism, the vocal apparata in
the vocal tract. Various kinds of noise may interfere with the speech signals as they travel
to person B. The resulting signal is captured by person B's speech receiving mechanism,
the ear. It is then analysed and decoded into a meaningful message by the brain of
person B.
This thesis concerns itself with the investigation of and attempt to automate the receiving
and decoding of English sentences using a machine - that is to perform the task of
person B in the above scenario using a computer. The aim is not only to produce a
sequence of phonetic sounds, but to look at the problems of building in the 'mind of the
machine', a picture of the meanings, intentions, absurdities and realities of the spoken
message.
The various models, algorithms and techniques of speech recognition and speech
understanding systems are examined. Speech signals are captured and digitised by
hardware. The digital samples are analysed and the important distinguishing features of all
speech sounds are identified. These are then used to classify speech sounds in subsequent
spoken words. The way speech sounds are joined together to form syllables and words
introduces difficult problems to the automatic recognition process. Speech sounds are
blurred, overlapped or left out due to the effects of coarticulation. Finally, natural language
processing issues, such as the importance of syntax (the structure) and semantics (the
meaning) of sentences, are studied.
A system to control and unite all the above processing is considered. The blackboard expert
system model of the widely reported HEARSAY-II speech recognition system is reviewed
as the system with the best potential for the above tasks. / Thesis (M.Sc.)-University of KwaZulu-Natal, 1992.
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A software speech recognition system using a phonetic approach.Everson, L Robert H. January 1985 (has links)
Computer speech recognition techniques were investigated. This investigation included a study of the hearing and speech process. An
algorithm was developed that used nine features to identify the phonemes in speech signals. Two of these features, the total energy and the number of zero crossings in a specific section of the speech signal, were obtained
directly from the digitized speech signal. The other features, frequency energy bands and formant frequencies, were measured from a spectral analysis of the signal. A Hewlett Packard mini-computer was used for the development of the necessary software in FORTRAN. For the testing of the algorithm ten words, "zero" through to "nine" were used. / Thesis (M.Sc.)-University of Natal, 1985.
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A comparative study of various speech recognition techniques.Pitchers, Richard Charles. January 1990 (has links)
Speech recognition systems fall into four categories,
depending on whether they are speaker-dependent or
independent of speaker population and on whether they are
capable of recognizing continuous speech or only isolated
words.
A study was made of most methods used in speech recognition
to date. Four speech recognition techniques for
speaker-dependent isolated word applications were then
implemented in software on an IBM PC with a minimum of
interfacing hardware. These techniques made use of short-time
energy and zero-crossing rates, autocorrelation
coefficients, linear predictor coefficients and cepstral
coefficients. A comparison of their relative performances
was made using four test vocabularies that were 10, 30,
60 and 120 words in size. These consisted of 10 digits,
30 and 60 computer terms and lastly 120 airline reservation
terms.
The performance of any speech recognition system is
affected by a number of parameters. The effects of frame
length, pre-emphasis, window functions, dynamic time
warping and the filter order were also studied experimentally. / Thesis (M.Sc.-Electronic Engineering)-University of Natal, 1990.
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Detection of seizure onset in epileptic patients from intracranial EEG signalsEsteller, Rosana 05 1900 (has links)
No description available.
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Analysis, synthesis, and recognition of stressed speechCummings, Kathleen E. 12 1900 (has links)
No description available.
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A Gaussian mixture modeling approach to text-independent speaker identificationReynolds, Douglas A. 08 1900 (has links)
No description available.
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Spoken letter recognition with neural networksReynolds, James H. January 1991 (has links)
Neural networks have recently been applied to real-world speech recognition problems with a great deal of success. This thesis developes a strategy for optimising a neural network known as the Radial Basis Function classifier (RBF), on a large spoken letter recognition problem designed by British Telecom Research Laboratories. The strategy developed can be viewed as a compromise between a fully adaptive approach involving prohibitively large amounts of computation, and a heuristic approach resulting in poor generalisation. A value for the optimal number of kernel functions is suggested, and methods for determining the positions of the centres and the values of the width parameters are provided. During the evolution of the optimisation strategy it was demonstrated that spatial organisation of the centres does not adversely affect the ability of the classifier to generalise. An RBF employing the optimisation strategy achieved a lower error rate than a multilayer perceptron and two traditional static pattern classifiers on the same problem. The error rate of the RBF was very close to the theoretical minimum error rate obtainable with an optimal Bayes classifier. In addition to error rate, the performance of the classifiers was assessed in terms of the computational requirements of training and classification, illustrating the significant trade-off between computational investment in training and level of generalisation achieved. The error rate of the RBF was compared with that of a well established method of dynamic classification to examine whether non-linear time normalisation of word patterns was advantageous to generalisation. It was demonstrated that the dynamic classifier was better suited to small-scale speech recognition problems, and the RBF to speaker-independent speech recognition problems. The dynamic classifier was then combined with a neural network algorithm, greatly reducing its computational requirement without significantly increasing its error rate. This system was then extended into a novel system for visual feedback therapy in which speech is visualised as a moving trajectory on a computer screen.
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Computer aided pronunciation system (CAPS) /Ananthakrishnan, Kollengode Subramanian. Unknown Date (has links)
Thesis (MEng(TelecommunicationsbyResearch))--University of South Australia, 2003.
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A statistical approach to formant tracking /Gayvert, Robert T. January 1988 (has links)
Thesis (M.S.)--Rochester Institute of Technology, 1989. / Includes bibliographical references (leaves 20-21).
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A prototype of an online speech-enabled information access tool using Java speech application programming interfaceNarayanaswami, Anand. January 2001 (has links)
Thesis (M.S.)--Ohio University, June, 2001. / Title from PDF t.p.
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