Sang Ha Park
Seoul National University
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Publication
Featured researches published by Sang Ha Park.
IEEE Signal Processing Letters | 2012
Seokjin Lee; Sang Ha Park; Koeng-Mo Sung
In this letter, we develop a multichannel blind source separation algorithm based on a beamspace transform and the multichannel nonnegative matrix factorization (NMF) method. The conventional multichannel NMF algorithm performs well with multichannel mixing data, but there is still room for enhancement in multichannel real-world recording data. In this letter, we consider a beamspace-time-frequency domain data model for multichannel NMF method, and enhance the conventional method using a beamspace transform. Our decomposition algorithm is applied to 2-channel and 4-channel unsupervised audio source separation, using a dataset from the international Signal Separation Evaluation Campaign 2010 (SiSEC 2010). Our algorithm shows a better performance than the conventional NMF method in an evaluation results.
The Journal of the Acoustical Society of Korea | 2012
Seokjin Lee; Sang Ha Park; Koeng-Mo Sung
In this paper, we develop a multichannel blind source separation algorithm based on a beamspace transform and the multichannel non-negative matrix factorization (NMF) method. The NMF algorithm is a famous algorithm which is used to solve the source separation problems. In this paper, we consider a beamspace-time-frequency domain data model for multichannel NMF method, and enhance the conventional method using a beamspace transform. Our decomposition algorithm is applied to audio source separation, using a dataset from the international Signal Separation Evaluation Campaign 2010 (SiSEC 2010) for evaluation.
The Journal of the Acoustical Society of Korea | 2012
Seokjin Lee; Sang Ha Park; Koeng-Mo Sung
Beamspace transform algorithm transforms spatial-domain data - such as x, y, z dimension - into incidence-angle-domain data, which is called beamspace-domain data. The beamspace transform method is generally used in source localization and tracking, and adaptive beamforming problem. When the beamspace transform method is used in multichannel audio source separation, the inverse beamspace transform is also important because the source image have to be reconstructed. This paper studies the beamspace transform and inverse transform algorithms for multichannel audio source separation system, especially for the beamspace-domain multichannel NMF algorithm.
IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences | 2011
Seokjin Lee; Sang Ha Park; Koeng-Mo Sung
IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences | 2012
Sang Ha Park; Seokjin Lee; Koeng-Mo Sung
Audio Engineering Society Conference: 42nd International Conference: Semantic Audio | 2011
Seokjin Lee; Sang Ha Park; Koeng-Mo Sung
Audio Engineering Society Conference: 42nd International Conference: Semantic Audio | 2011
Sang Ha Park; Seokjin Lee; Koeng-Mo Sung
Archive | 2010
Sang Ha Park; Seokjin Lee; Koeng-Mo Sung
IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences | 2011
Seokjin Lee; Sang Ha Park; Koeng-Mo Sung
Audio Engineering Society Conference: 42nd International Conference: Semantic Audio | 2011
Seokjin Lee; Sang Ha Park; Koeng-Mo Sung