Article citationsMore>>
Chan, T.S., Yeh, T.C., Fan, Z.C., Chen, H.W., Sui, L., Yang, Y.H. and Jang, R. (2015) Vocal Activity Informed Singing Voice Separation with the iKala Dataset. 2015 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Brisbane, 19-24 April 2015, 718-722.
https://doi.org/10.1109/ICASSP.2015.7178063
has been cited by the following article:
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TITLE:
Low-Rank Sparse Representation with Pre-Learned Dictionaries and Side Information for Singing Voice Separation
AUTHORS:
Chenghong Yang, Hongjuan Zhang
KEYWORDS:
Singing Voice Separation, Low-Rank and Sparse, Dictionary Learning
JOURNAL NAME:
Advances in Pure Mathematics,
Vol.8 No.4,
April
24,
2018
ABSTRACT: At present, although the human speech separation has
achieved fruitful results, it is not ideal for the separation of singing and
accompaniment. Based on low-rank and sparse optimization theory, in this paper,
we propose a new singing voice separation algorithm called Low-rank, Sparse
Representation with pre-learned dictionaries and side Information (LSRi). The
algorithm incorporates both the vocal and instrumental spectrograms as sparse
matrix and low-rank matrix, meanwhile combines pre-learning dictionary and the
reconstructed voice spectrogram form the annotation. Evaluations on the iKala
dataset show that the proposed methods are effective and efficient for singing
voice separation.