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Unsupervised feature learning for speech using correspondence and
  Siamese networks

Unsupervised feature learning for speech using correspondence and Siamese networks

IEEE Signal Processing Letters (IEEE SPL), 2020
28 March 2020
Petri-Johan Last
H. Engelbrecht
Herman Kamper
    SSL
ArXiv (abs)PDFHTML

Papers citing "Unsupervised feature learning for speech using correspondence and Siamese networks"

12 / 12 papers shown
Deep clustering using adversarial net based clustering loss
Deep clustering using adversarial net based clustering loss
Kart-Leong Lim
508
2
0
12 Dec 2024
Metric Learning as a Service with Covariance Embedding
Metric Learning as a Service with Covariance EmbeddingIEEE Transactions on Services Computing (IEEE TSC), 2022
Imam Mustafa Kamal
Hyerim Bae
Ling Liu
DML
240
4
0
28 Nov 2022
Speech Sequence Embeddings using Nearest Neighbors Contrastive Learning
Speech Sequence Embeddings using Nearest Neighbors Contrastive LearningInterspeech (Interspeech), 2022
Algayres Robin
Adel Nabli
Benoît Sagot
Emmanuel Dupoux
SSL
221
9
0
11 Apr 2022
The effectiveness of unsupervised subword modeling with autoregressive
  and cross-lingual phone-aware networks
The effectiveness of unsupervised subword modeling with autoregressive and cross-lingual phone-aware networksIEEE Open Journal of Signal Processing (JOSP), 2020
Siyuan Feng
O. Scharenborg
SSL
285
3
0
17 Dec 2020
Towards unsupervised phone and word segmentation using self-supervised
  vector-quantized neural networks
Towards unsupervised phone and word segmentation using self-supervised vector-quantized neural networksInterspeech (Interspeech), 2020
Herman Kamper
Benjamin van Niekerk
SSLMQ
349
38
0
14 Dec 2020
A comparison of self-supervised speech representations as input features
  for unsupervised acoustic word embeddings
A comparison of self-supervised speech representations as input features for unsupervised acoustic word embeddingsSpoken Language Technology Workshop (SLT), 2020
Lisa van Staden
Herman Kamper
SSL
188
17
0
14 Dec 2020
Paralinguistic Privacy Protection at the Edge
Paralinguistic Privacy Protection at the Edge
Ranya Aloufi
Hamed Haddadi
David E. Boyle
375
18
0
04 Nov 2020
Unsupervised Discovery of Recurring Speech Patterns Using Probabilistic
  Adaptive Metrics
Unsupervised Discovery of Recurring Speech Patterns Using Probabilistic Adaptive Metrics
Okko Räsänen
María Andrea Cruz Blandón
296
27
0
03 Aug 2020
Privacy-preserving Voice Analysis via Disentangled Representations
Privacy-preserving Voice Analysis via Disentangled Representations
Ranya Aloufi
Hamed Haddadi
David E. Boyle
DRL
370
65
0
29 Jul 2020
Evaluating the reliability of acoustic speech embeddings
Evaluating the reliability of acoustic speech embeddingsInterspeech (Interspeech), 2020
Robin Algayres
Mohamed Salah Zaiem
Benoît Sagot
Emmanuel Dupoux
358
32
0
27 Jul 2020
Improved acoustic word embeddings for zero-resource languages using
  multilingual transfer
Improved acoustic word embeddings for zero-resource languages using multilingual transferIEEE/ACM Transactions on Audio Speech and Language Processing (TASLP), 2020
Herman Kamper
Yevgen Matusevych
Sharon Goldwater
287
22
0
02 Jun 2020
Vector-quantized neural networks for acoustic unit discovery in the
  ZeroSpeech 2020 challenge
Vector-quantized neural networks for acoustic unit discovery in the ZeroSpeech 2020 challenge
Benjamin van Niekerk
Leanne Nortje
Herman Kamper
334
126
0
19 May 2020
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