Abstract

Music genre designations are useful for grouping songs, albums, and performers with comparable musical characteristics into larger categories. The goal of our study and research is to develop a deep learning method that can predict and classify song genres better than existing algorithms. Here the dataset of music genre information has been collected and processed for predicting genre of songs. We present a new approach including feature extraction and classification that takes into account the disparities in spectrums. The dataset namely MSD-I dataset, GTZAN Dataset and ISMIR2004 Genre dataset are utilized for feature extracted using BiLSTM and classification of extracted features has been done using VGG-16 Net. The effect of proposed approach is then evaluated in experiments on single and multi-label genre classification. The results are obtained based on the parameters of accuracy of 97%, precision of 94%, recall of 86.5%, F-1 score of 77.8%, average loss of audio signal of 40% for proposed technique.

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