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Phasebook and Friends: Leveraging Discrete Representations for Source
  Separation

Phasebook and Friends: Leveraging Discrete Representations for Source Separation

2 October 2018
Jonathan Le Roux
G. Wichern
Shinji Watanabe
Andy M. Sarroff
J. Hershey
ArXivPDFHTML

Papers citing "Phasebook and Friends: Leveraging Discrete Representations for Source Separation"

12 / 12 papers shown
Title
Deep neural network techniques for monaural speech enhancement: state of
  the art analysis
Deep neural network techniques for monaural speech enhancement: state of the art analysis
P. Ochieng
28
21
0
01 Dec 2022
Online Phase Reconstruction via DNN-based Phase Differences Estimation
Online Phase Reconstruction via DNN-based Phase Differences Estimation
Yoshiki Masuyama
Kohei Yatabe
Kento Nagatomo
Yasuhiro Oikawa
3DV
8
7
0
12 Nov 2022
Phase-Aware Deep Speech Enhancement: It's All About The Frame Length
Phase-Aware Deep Speech Enhancement: It's All About The Frame Length
Tal Peer
Timo Gerkmann
14
21
0
30 Mar 2022
PoCoNet: Better Speech Enhancement with Frequency-Positional Embeddings,
  Semi-Supervised Conversational Data, and Biased Loss
PoCoNet: Better Speech Enhancement with Frequency-Positional Embeddings, Semi-Supervised Conversational Data, and Biased Loss
Umut Isik
Ritwik Giri
Neerad Phansalkar
J. Valin
Karim Helwani
A. Krishnaswamy
15
83
0
11 Aug 2020
Lightweight Online Noise Reduction on Embedded Devices using
  Hierarchical Recurrent Neural Networks
Lightweight Online Noise Reduction on Embedded Devices using Hierarchical Recurrent Neural Networks
Hendrik Schröter
T. Rosenkranz
Alberto N. Escalante
Pascal Zobel
Andreas Maier
10
6
0
23 Jun 2020
Phase reconstruction based on recurrent phase unwrapping with deep
  neural networks
Phase reconstruction based on recurrent phase unwrapping with deep neural networks
Yoshiki Masuyama
Kohei Yatabe
Yuma Koizumi
Yasuhiro Oikawa
N. Harada
22
21
0
14 Feb 2020
Two-Step Sound Source Separation: Training on Learned Latent Targets
Two-Step Sound Source Separation: Training on Learned Latent Targets
Efthymios Tzinis
Shrikant Venkataramani
Zhepei Wang
Y. C. Sübakan
Paris Smaragdis
11
64
0
22 Oct 2019
Time Domain Audio Visual Speech Separation
Time Domain Audio Visual Speech Separation
Jian Wu
Yong-mei Xu
Shi-Xiong Zhang
Lianwu Chen
Meng Yu
Lei Xie
Dong Yu
20
114
0
07 Apr 2019
Deep Griffin-Lim Iteration
Deep Griffin-Lim Iteration
Yoshiki Masuyama
Kohei Yatabe
Yuma Koizumi
Yasuhiro Oikawa
N. Harada
38
55
0
10 Mar 2019
Deep Learning Based Phase Reconstruction for Speaker Separation: A
  Trigonometric Perspective
Deep Learning Based Phase Reconstruction for Speaker Separation: A Trigonometric Perspective
Zhong-Qiu Wang
Ke Tan
DeLiang Wang
50
95
0
22 Nov 2018
Trainable Adaptive Window Switching for Speech Enhancement
Trainable Adaptive Window Switching for Speech Enhancement
Yuma Koizumi
N. Harada
Y. Haneda
16
8
0
05 Nov 2018
End-to-End Speech Separation with Unfolded Iterative Phase
  Reconstruction
End-to-End Speech Separation with Unfolded Iterative Phase Reconstruction
Zhong-Qiu Wang
Jonathan Le Roux
DeLiang Wang
J. Hershey
96
123
0
26 Apr 2018
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