Infant Cry Recognition based on Convolutional Neural Network Method -Deep Learning Project

6,000.00

Infant Cry Recognition based on Convolutional Neural Network Method -Deep Learning Project

100 in stock

SKU: Infant Cry Recognition based on CNN Category:

Description

Infant Cry Recognition based on Convolutional Neural Network Method -Deep Learning Project

in this project, an investigation of crying signal spectra is used to classify categories of infant cries. Three different types of crying considered in this work are hungry, sleepy and burping need. These cries are preprocessed and converted for calculation of Mel-Frequency Cepstral Coefficients (MFCC) before being classified by Convolutional Neural Network (CNN). Experimental results show that CNN based deep learning achieves high performance of 84%.

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