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Is CQT more suitable for monaural speech separation than STFT? an
  empirical study

Is CQT more suitable for monaural speech separation than STFT? an empirical study

2 February 2019
Ziqiang Shi
Huibin Lin
Liu Liu
Rujie Liu
Jiqing Han
ArXiv (abs)PDFHTML

Papers citing "Is CQT more suitable for monaural speech separation than STFT? an empirical study"

4 / 4 papers shown
Title
Approach to Learning Generalized Audio Representation Through Batch
  Embedding Covariance Regularization and Constant-Q Transforms
Approach to Learning Generalized Audio Representation Through Batch Embedding Covariance Regularization and Constant-Q Transforms
Ankit Parag Shah
Shuyi Chen
Kejun Zhou
Yue Chen
Bhiksha Raj
50
1
0
07 Mar 2023
Toward Speech Separation in The Pre-Cocktail Party Problem with TasTas
Toward Speech Separation in The Pre-Cocktail Party Problem with TasTas
Ziqiang Shi
Jiqing Han
31
0
0
07 Sep 2020
Speech Separation Based on Multi-Stage Elaborated Dual-Path Deep BiLSTM
  with Auxiliary Identity Loss
Speech Separation Based on Multi-Stage Elaborated Dual-Path Deep BiLSTM with Auxiliary Identity Loss
Ziqiang Shi
Rujie Liu
Jiqing Han
38
7
0
06 Aug 2020
LaFurca: Iterative Refined Speech Separation Based on Context-Aware
  Dual-Path Parallel Bi-LSTM
LaFurca: Iterative Refined Speech Separation Based on Context-Aware Dual-Path Parallel Bi-LSTM
Ziqiang Shi
Rujie Liu
Jiqing Han
34
4
0
23 Jan 2020
1