Title
Long short-term memory recurrent neural network based segment features for music genre classification
Abstract
In the conventional frame feature based music genre classification methods, the audio data is represented by independent frames and the sequential nature of audio is totally ignored. If the sequential knowledge is well modeled and combined, the classification performance can be significantly improved. The long short-term memory(LSTM) recurrent neural network (RNN) which uses a set of special memory cells to model for long-range feature sequence, has been successfully used for many sequence labeling and sequence prediction tasks. In this paper, we propose the LSTM RNN based segment features for music genre classification. The LSTM RNN is used to learn the representation of LSTM frame feature. The segment features are the statistics of frame features in each segment. Furthermore, the LSTM segment feature is combined with the segment representation of initial frame feature to obtain the fusional segment feature. The evaluation on ISMIR database show that the LSTM segment feature performs better than the frame feature. Overall, the fusional segment feature achieves 89.71% classification accuracy, about 4.19% improvement over the baseline model using deep neural network (DNN). This significant improvement show the effectiveness of the proposed segment feature.
Year
DOI
Venue
2016
10.1109/ISCSLP.2016.7918369
2016 10th International Symposium on Chinese Spoken Language Processing (ISCSLP)
Keywords
Field
DocType
Long short-term memory,recurrent neural network,music genre classification,scattering transform
Sequence prediction,Sequence labeling,Pattern recognition,Computer science,Feature (computer vision),Recurrent neural network,Long short term memory,Feature extraction,Speech recognition,Artificial intelligence,Feature based,Artificial neural network
Conference
ISBN
Citations 
PageRank 
978-1-5090-4295-1
1
0.37
References 
Authors
0
5
Name
Order
Citations
PageRank
Jia Dai121.74
Shan Liang281.88
Wei Xue340052.95
Chong-Jia Ni4204.84
Wenju Liu521439.32