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Proceedings ArticleDOI

A speech recognition system for connected word sequences

T. Skinner, +2 more
- Vol. 1, pp 434-437
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TLDR
The Speech Communications Group at SPERRY UNIVAC Defense Systems is developing a linguistically-oriented procedure for recognizing words, phrases, and natural sentences by computer that will be extended from the recognition of several-word noun phrases to the understanding of more natural sentences.
Abstract
The Speech Communications Group at SPERRY UNIVAC Defense Systems is developing a linguistically-oriented procedure for recognizing words, phrases, and natural sentences by computer. The major components of the current speech recognition system perform acoustic and phonetic analysis, phonetic segmentation, and lexical matching and scoring. The acoustic processing is based on a linear-predictive spectral analysis of the speech signal. Sounds are classified by manner, place, and voicing using formant frequencies and other spectral functions, as well as information about syllable boundaries and nuclei. A linear sequence of analysis segments is created, and matched against the lexicon using a scoring matrix that ranks analysis-lexical segment pairs by their expected confusions. Word sequences are progressively formed and ranked against the entire input to determine the most likely phrases spoken. When the recognition system was tested on a 31-word vocabulary from two male speakers, single word recognition scores of 95% correct were obtained when the task syntax was used. Preliminary results for recognizing connected word sequences from three male speakers range from 54 to 74% for a task with constrained word order. Current plans for enhancing the recognition system include the incorporation of components for phonological rules, speaker normalization, and prosodic guidelines. By adding more powerful procedures for syntactic and semantic analysis, the system will be extended from the recognition of several-word noun phrases to the understanding of more natural sentences.

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Citations
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Proceedings ArticleDOI

Syntax and semantics in a word-sequence recognition system

TL;DR: A recognizer of meaningful sequences of isolated words spoken in the Italian language is presented and the current version has been obtained by adding the syntactic and semantic levels to the isolated-word recognizer previously developed by the same authors.
Patent

System and method for compiling rules created by machine learning program

TL;DR: In this paper, a group of linear rules and associated weights are provided as a result of machine learning, and each one of the linear rules is partitioned into a respective one of a particular type of rules and a respective transducer for each of the rules is compiled.
Journal ArticleDOI

Feature Extraction Techniques with Analysis of Confusing Words for Speech Recognition in the Hindi Language

TL;DR: In this paper, a speaker-independent connected word Hindi speech recognition system using different feature extraction techniques with comparative analysis of confusing words is presented to understand the reason for the speech recognition errors.
Proceedings ArticleDOI

A system for the recognition of spoken connected word sequences

TL;DR: Sperry Univac is developing a linguistically oriented computer system which recognizes natural spoken phrases and sentences without requiring extensive adjustments for individual users and without the need for each user to repeat every vocabulary word for system training.
Proceedings ArticleDOI

An automatic word spotting system for conversational speech

TL;DR: Sperry Univac is developing a linguistically oriented system for locating important words in conversational speech that uses acoustic, prosodic, and phonetic analyses to produce a phonetic description of the incoming speech.
References
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Journal ArticleDOI

A prosodically guided speech understanding strategy

TL;DR: This strategy for computer understanding of speech uses prosodic features to break up continuous speech into sentences and phrases and locate stressed syllables in those phrases and shows that phonetic recognition clearly is most successful in the stressed syllable.
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