Kernel methods match deep neural networks on TIMIT
Po-Sen Huang, Haim Avron, et al.
ICASSP 2014
Audio segmentation has applications in a variety of contexts, such as audio information retrieval, automatic Sound analysis, and as a pre-processing step in speech recognition. Extended Baum-Welch (EBW) transformations are most commonly used as a discriminative technique for estimating parameters of Gaussian mixtures. In this paper, we derive an unsupervised audio segmentation approach using these transformations, We find that our algorithm outperforms both the Bayesian Information. Criterion (BIC) and Cumulative Sum (CUSUM) segmentation methods. In particular, our EBW segmentation algorithm provides improvements over the baseline approaches in detecting landmarks of short duration and minimizing landmark oversegmentation. In addition, we show that the EBW approach provides faster computation compared to the baseline methods. © 2007 IEEE.
Po-Sen Huang, Haim Avron, et al.
ICASSP 2014
Bhuvana Ramabhadran, Jing Huang, et al.
INTERSPEECH - Eurospeech 2003
Zhenbo Zhu, Qing Wang, et al.
ICASSP 2007
Vadim Sheinin, Da-Ke He
ICASSP 2007