DNN (Deep Neural Network)-HMM (Hidden Markov Model)-based civil aviation radiotelephony communication acoustic model construction method

A land-air call and acoustic model technology, applied in speech analysis, speech recognition, instruments, etc., can solve problems such as high computational complexity and reduced feature dimensions

Inactive Publication Date: 2019-01-01
CIVIL AVIATION UNIV OF CHINA
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Problems solved by technology

The hidden layers of the convolutional neural network (CNN) are not fully connected, and the feature dimension is reduced through the convolution calculation of the convolution kernel; the hidden layers of the long short-term memory network (LSTM) are fully connected, and timing information can be obtained. But the computational complexity is high

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  • DNN (Deep Neural Network)-HMM (Hidden Markov Model)-based civil aviation radiotelephony communication acoustic model construction method
  • DNN (Deep Neural Network)-HMM (Hidden Markov Model)-based civil aviation radiotelephony communication acoustic model construction method
  • DNN (Deep Neural Network)-HMM (Hidden Markov Model)-based civil aviation radiotelephony communication acoustic model construction method

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[0012] The DNN-HMM-based acoustic model construction method for civil aviation, ground and air calls provided by the present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments.

[0013] Such as figure 1 As shown, the DNN-HMM-based civil aviation ground-air conversation acoustic model construction method provided by the present invention includes the following steps carried out in order:

[0014] Step 1) make Chinese land and air call corpus;

[0015] According to the civil aviation land-air call standard, the actual land-air call voice and related course materials are used as the original reference for building the corpus, and the Chinese land-air call corpus is established; the corpus is jointly recorded by air traffic control professionals and front-line controllers, and contains multiple flight Civil aviation land and air call voice signals at various stages. The Chinese land-air conversation corpus that the ...

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Abstract

The invention relates to a DNN (Deep Neural Network)-HMM (Hidden Markov Model)-based civil aviation radiotelephony communication acoustic model construction method. The method includes the following steps that: a Chinese radiotelephony communication corpus is set up; civil aviation radiotelephony communication speech signals are pre-processed; Fbank features are extracted from the civil aviation radiotelephony communication speech signals and are adopted as civil aviation radiotelephony communication speech features; linear discrimination analysis, feature space maximum likelihood regression transformation and speaker adaptive training transformation processing are performed on the civil aviation radiotelephony communication speech features; and the processed speech features are utilized to build a DNN-HMM-based radiotelephony communication acoustic model. With the method of the invention adopted, the FBANK and MFCC features of radiotelephony communication speech are extracted to traina DNN network, so that the DNN-HMM acoustic model suitable for radiotelephony communication speech recognition can be obtained; and since a dictionary and a language model are combined, so that the feature enhanced DNN-HMM model can reduce the phoneme recognition error rate of the radiotelephony communication speech to 5.62% on the basis of constructed data.

Description

technical field [0001] The invention belongs to the technical field of speech recognition, and in particular relates to a DNN-HMM-based method for constructing an acoustic model of a civil aviation land-air call. Background technique [0002] With the continuous development of the national economy, due to the fast and comfortable characteristics of the aircraft, it has become the preferred means of transportation for people to travel. Security will face a tougher test. As the main information communication method between pilots and controllers during the flight, civil aviation land-air calls are of great significance to ensuring flight safety. Only when controllers and pilots correctly understand the content of land-air calls can they effectively guarantee flight safety. [0003] Due to the special application scenarios, sentence structure and special pronunciation of land and air calls, the general speech recognition model cannot be applied to the field of land and air cal...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G10L15/06G10L15/14G10L15/16G10L25/03G10L25/24G10L25/30
CPCG10L15/063G10L15/142G10L15/16G10L25/03G10L25/24G10L25/30G10L2015/0631
Inventor 贾桂敏邱意李凯涛杨金锋
Owner CIVIL AVIATION UNIV OF CHINA
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