dc.description.abstract |
This paper presents texture feature extraction
methods for sound classification. Nowadays, many
researchers interest in combination of digital signal
processing and digital image processing fields to get
higher efficiency. In this paper, feature extraction
methods used in image processing are applied in
classification of signal processing. Signals are
converted into image format and then features are
extracted using bi-directional local binary pattern.
Feature vector is constructed using these features
and then label the input signal by checking similarly
value from known dataset using multi support vector
machine classifier. Evaluation is tested on
benchmark dataset namely ESC10 Dataset, ESC50
Dataset and UrbanSound8K Dataset.
This paper presents texture feature extraction
methods for sound classification. Nowadays, many
researchers interest in combination of digital signal
processing and digital image processing fields to get
higher efficiency. In this paper, feature extraction
methods used in image processing are applied in
classification of signal processing. Signals are
converted into image format and then features are
extracted using bi-directional local binary pattern.
Feature vector is constructed using these features
and then label the input signal by checking similarly
value from known dataset using multi support vector
machine classifier. Evaluation is tested on
benchmark dataset namely ESC10 Dataset, ESC50
Dataset and UrbanSound8K Dataset. |
en_US |