Title of article :
MFCC based hybrid fingerprinting method for audio classification through LSTM
Author/Authors :
Banuroopa, K Department of Computer Science - Karpagam Academy of Higher Education - Coimbatore, India , Shanmuga Priyaa, D Department of Computer Science - Karpagam Academy of Higher Education - Coimbatore, India
Abstract :
In this paper, a novel audio finger methodology for audio classification is proposed. The fingerprint
of the audio signal is a unique digest to identify the signal. The proposed model uses the audio
fingerprinting methodology to create a unique fingerprint of the audio files. The fingerprints are
created by extracting an MFCC spectrum and then taking a mean of the spectra and converting
the spectrum into a binary image. These images are then fed to the LSTM network to classify the
environmental sounds stored in UrbanSound8K dataset and it produces an accuracy of 98.8% of
accuracy across all 10 folds of the dataset.
Keywords :
Audio fingerprinting , MFCC , Audio Classification , LSTM
Journal title :
International Journal of Nonlinear Analysis and Applications