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  2. Volume 7, Issue 4
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Online ISSN: 2515-8260

Volume7, Issue4

Identification of Speech Signal in Moving Objects using Artificial Neural Network System

    DIWAKAR BHARDWAJ RAKESH KUMAR GALAV

European Journal of Molecular & Clinical Medicine, 2020, Volume 7, Issue 4, Pages 418-424

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Abstract

The speech signal moving objects regarding the speaker’s personality. A speaker recognition field is about retrieving the name of the individual voicing the speech. The effectiveness of accurately identifying a speaker is focused solely on vocal features, as voice contact with machines is becoming more prevalent in tasks like telephone, banking transactions, and the transformation of data from speech databases. This review illustrates the detection of text-dependent speakers, which identifies a single speaker from a known population. The program asks the user to utter voice. Program recognizes the person through evaluating the voice utterance codebook with the voice utterance codebook held in the database and records that may have provided the voice speech. Furthermore, the features are removed; the speech signal is registered for 6 speakers. Extraction of the function is achieved using LPC coefficients, AMDF calculation and DFT. By adding certain features as input data, the neural network is equipped. For further comparison the characteristics are stored in models. The characteristics that need to be defined for the speakers were obtained and analyzed using Back Propagation Algorithm to a template image. Now this framework trained correlates to the outcome; the source is the characteristics retrieved from the speaker to be described. The weight adjustment is done by the system, and the similarity score is discovered to recognize the speaker. The number of iterations needed for achieving the goal determines the efficiency of the network.
Keywords:
    Speech Recognition Artificial Neural Network Lib ROSA feature
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(2020). Identification of Speech Signal in Moving Objects using Artificial Neural Network System. European Journal of Molecular & Clinical Medicine, 7(4), 418-424.
DIWAKAR BHARDWAJ; RAKESH KUMAR GALAV. "Identification of Speech Signal in Moving Objects using Artificial Neural Network System". European Journal of Molecular & Clinical Medicine, 7, 4, 2020, 418-424.
(2020). 'Identification of Speech Signal in Moving Objects using Artificial Neural Network System', European Journal of Molecular & Clinical Medicine, 7(4), pp. 418-424.
Identification of Speech Signal in Moving Objects using Artificial Neural Network System. European Journal of Molecular & Clinical Medicine, 2020; 7(4): 418-424.
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