Real Time Speaker Identification: An Approach to the Implementation of Real Time Speaker Identification System by Using Artifici,Used

Real Time Speaker Identification: An Approach to the Implementation of Real Time Speaker Identification System by Using Artifici,Used

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SKU: DADAX3838386302
Brand: LAP Lambert Academic Publishing
Condition: New
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This book presents the real time speaker identification system using artificial neural network. This system takes the speech signal as its input. The input signal is then filtered to remove noise. After preprocessing, frame blocking and windowing the features are obtained using signal processing techniques. The extracted feature is then fed to the multilayer back propagation neural network as input. Thus the network is trained and creates a knowledge base for identification. The same procedures are applied for identification but the only difference is that the neural network uses the previously learned weights to calculate the output.

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