English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints

This paper combines domestic and international research results to analyze and study the difference between the attribute features of English phrase speech and noise to enhance the short-time energy, which is used to improve the threshold judgment sensitivity; noise addition to the discrepancy data...

Full description

Saved in:
Bibliographic Details
Main Authors: Haifan Du, Haiwen Duan
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/8482379
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1832560096105725952
author Haifan Du
Haiwen Duan
author_facet Haifan Du
Haiwen Duan
author_sort Haifan Du
collection DOAJ
description This paper combines domestic and international research results to analyze and study the difference between the attribute features of English phrase speech and noise to enhance the short-time energy, which is used to improve the threshold judgment sensitivity; noise addition to the discrepancy data set is used to enhance the recognition robustness. The backpropagation algorithm is improved to constrain the range of weight variation, avoid oscillation phenomenon, and shorten the training time. In the real English phrase sound recognition system, there are problems such as massive training data and low training efficiency caused by the super large-scale model parameters of the convolutional neural network. To address these problems, the NWBP algorithm is based on the oscillation phenomenon that tends to occur when searching for the minimum error value in the late training period of the network parameters, using the K-MEANS algorithm to obtain the seed nodes that approach the minimal error value, and using the boundary value rule to reduce the range of weight change to reduce the oscillation phenomenon so that the network error converges as soon as possible and improve the training efficiency. Through simulation experiments, the NWBP algorithm improves the degree of fitting and convergence speed in the training of complex convolutional neural networks compared with other algorithms, reduces the redundant computation, and shortens the training time to a certain extent, and the algorithm has the advantage of accelerating the convergence of the network compared with simple networks. The word tree constraint and its efficient storage structure are introduced, which improves the storage efficiency of the word tree constraint and the retrieval efficiency in the English phrase recognition search.
format Article
id doaj-art-2e40f936d75b45af94f399eb7e514700
institution Kabale University
issn 1076-2787
1099-0526
language English
publishDate 2021-01-01
publisher Wiley
record_format Article
series Complexity
spelling doaj-art-2e40f936d75b45af94f399eb7e5147002025-02-03T01:28:23ZengWileyComplexity1076-27871099-05262021-01-01202110.1155/2021/84823798482379English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree ConstraintsHaifan Du0Haiwen Duan1Ordos Vocational College, Ordos 017000, ChinaChina University of Mining and Technology, Xuzhou 221116, ChinaThis paper combines domestic and international research results to analyze and study the difference between the attribute features of English phrase speech and noise to enhance the short-time energy, which is used to improve the threshold judgment sensitivity; noise addition to the discrepancy data set is used to enhance the recognition robustness. The backpropagation algorithm is improved to constrain the range of weight variation, avoid oscillation phenomenon, and shorten the training time. In the real English phrase sound recognition system, there are problems such as massive training data and low training efficiency caused by the super large-scale model parameters of the convolutional neural network. To address these problems, the NWBP algorithm is based on the oscillation phenomenon that tends to occur when searching for the minimum error value in the late training period of the network parameters, using the K-MEANS algorithm to obtain the seed nodes that approach the minimal error value, and using the boundary value rule to reduce the range of weight change to reduce the oscillation phenomenon so that the network error converges as soon as possible and improve the training efficiency. Through simulation experiments, the NWBP algorithm improves the degree of fitting and convergence speed in the training of complex convolutional neural networks compared with other algorithms, reduces the redundant computation, and shortens the training time to a certain extent, and the algorithm has the advantage of accelerating the convergence of the network compared with simple networks. The word tree constraint and its efficient storage structure are introduced, which improves the storage efficiency of the word tree constraint and the retrieval efficiency in the English phrase recognition search.http://dx.doi.org/10.1155/2021/8482379
spellingShingle Haifan Du
Haiwen Duan
English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints
Complexity
title English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints
title_full English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints
title_fullStr English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints
title_full_unstemmed English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints
title_short English Phrase Speech Recognition Based on Continuous Speech Recognition Algorithm and Word Tree Constraints
title_sort english phrase speech recognition based on continuous speech recognition algorithm and word tree constraints
url http://dx.doi.org/10.1155/2021/8482379
work_keys_str_mv AT haifandu englishphrasespeechrecognitionbasedoncontinuousspeechrecognitionalgorithmandwordtreeconstraints
AT haiwenduan englishphrasespeechrecognitionbasedoncontinuousspeechrecognitionalgorithmandwordtreeconstraints