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Phonetic-and-Semantic Embedding of Spoken Words with Applications in
  Spoken Content Retrieval
v1v2v3v4 (latest)

Phonetic-and-Semantic Embedding of Spoken Words with Applications in Spoken Content Retrieval

Spoken Language Technology Workshop (SLT), 2018
21 July 2018
Yi-Chen Chen
Sung-Feng Huang
Chia-Hao Shen
Hung-yi Lee
Lin-Shan Lee
ArXiv (abs)PDFHTML

Papers citing "Phonetic-and-Semantic Embedding of Spoken Words with Applications in Spoken Content Retrieval"

21 / 21 papers shown
Self-Supervised Speech Representations are More Phonetic than Semantic
Self-Supervised Speech Representations are More Phonetic than Semantic
Kwanghee Choi
Ankita Pasad
Tomohiko Nakamura
Satoru Fukayama
Karen Livescu
Shinji Watanabe
347
68
0
12 Jun 2024
Spoken Word2Vec: Learning Skipgram Embeddings from Speech
Spoken Word2Vec: Learning Skipgram Embeddings from SpeechInterspeech (Interspeech), 2023
Mohammad Amaan Sayeed
Hanan Aldarmaki
193
0
0
15 Nov 2023
Leveraging multilingual transfer for unsupervised semantic acoustic word
  embeddings
Leveraging multilingual transfer for unsupervised semantic acoustic word embeddingsIEEE Signal Processing Letters (IEEE SPL), 2023
C. Jacobs
Herman Kamper
244
3
0
05 Jul 2023
PWESuite: Phonetic Word Embeddings and Tasks They Facilitate
PWESuite: Phonetic Word Embeddings and Tasks They FacilitateInternational Conference on Language Resources and Evaluation (LREC), 2023
Vilém Zouhar
Kalvin Chang
Chenxuan Cui
Nathaniel Carlson
Nathaniel R. Robinson
Mrinmaya Sachan
David R. Mortensen
534
9
0
05 Apr 2023
Homophone Reveals the Truth: A Reality Check for Speech2Vec
Homophone Reveals the Truth: A Reality Check for Speech2Vec
Guangyu Chen
201
0
0
22 Sep 2022
Multilingual transfer of acoustic word embeddings improves when training
  on languages related to the target zero-resource language
Multilingual transfer of acoustic word embeddings improves when training on languages related to the target zero-resource language
C. Jacobs
Herman Kamper
276
12
0
24 Jun 2021
Unsupervised Automatic Speech Recognition: A Review
Unsupervised Automatic Speech Recognition: A ReviewSpeech Communication (Speech Commun.), 2021
Hanan Aldarmaki
Asad Ullah
Nazar Zaki
VLMSSL
180
70
0
09 Jun 2021
Acoustic word embeddings for zero-resource languages using
  self-supervised contrastive learning and multilingual adaptation
Acoustic word embeddings for zero-resource languages using self-supervised contrastive learning and multilingual adaptationSpoken Language Technology Workshop (SLT), 2021
C. Jacobs
Yevgen Matusevych
Herman Kamper
265
25
0
19 Mar 2021
A phonetic model of non-native spoken word processing
A phonetic model of non-native spoken word processingConference of the European Chapter of the Association for Computational Linguistics (EACL), 2021
Yevgen Matusevych
Herman Kamper
Thomas Schatz
Naomi H Feldman
Sharon Goldwater
307
8
0
27 Jan 2021
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
267
22
0
02 Jun 2020
Improved Speech Representations with Multi-Target Autoregressive
  Predictive Coding
Improved Speech Representations with Multi-Target Autoregressive Predictive CodingAnnual Meeting of the Association for Computational Linguistics (ACL), 2020
Yu-An Chung
James R. Glass
SSL
282
57
0
11 Apr 2020
Analyzing autoencoder-based acoustic word embeddings
Analyzing autoencoder-based acoustic word embeddings
Yevgen Matusevych
Herman Kamper
Sharon Goldwater
250
12
0
03 Apr 2020
Multilingual acoustic word embedding models for processing zero-resource
  languages
Multilingual acoustic word embedding models for processing zero-resource languagesIEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP), 2020
Herman Kamper
Yevgen Matusevych
Sharon Goldwater
330
25
0
06 Feb 2020
AIPNet: Generative Adversarial Pre-training of Accent-invariant Networks
  for End-to-end Speech Recognition
AIPNet: Generative Adversarial Pre-training of Accent-invariant Networks for End-to-end Speech RecognitionIEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP), 2019
Yi-Chen Chen
Zhaojun Yang
Ching-Feng Yeh
Mahaveer Jain
M. Seltzer
184
37
0
27 Nov 2019
Generative Pre-Training for Speech with Autoregressive Predictive Coding
Generative Pre-Training for Speech with Autoregressive Predictive CodingIEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP), 2019
Yu-An Chung
James R. Glass
SSL
437
183
0
23 Oct 2019
Semantic query-by-example speech search using visual grounding
Semantic query-by-example speech search using visual grounding
Herman Kamper
Aristotelis Anastassiou
Karen Livescu
167
31
0
15 Apr 2019
Completely Unsupervised Speech Recognition By A Generative Adversarial
  Network Harmonized With Iteratively Refined Hidden Markov Models
Completely Unsupervised Speech Recognition By A Generative Adversarial Network Harmonized With Iteratively Refined Hidden Markov Models
Kuan-Yu Chen
Che-Ping Tsai
Da-Rong Liu
Hung-yi Lee
Lin-Shan Lee
GAN
318
26
0
08 Apr 2019
Acoustically Grounded Word Embeddings for Improved Acoustics-to-Word
  Speech Recognition
Acoustically Grounded Word Embeddings for Improved Acoustics-to-Word Speech Recognition
Shane Settle
Kartik Audhkhasi
Karen Livescu
M. Picheny
234
35
0
29 Mar 2019
Improved Audio Embeddings by Adjacency-Based Clustering with
  Applications in Spoken Term Detection
Improved Audio Embeddings by Adjacency-Based Clustering with Applications in Spoken Term Detection
Sung-Feng Huang
Yi-Chen Chen
Hung-yi Lee
Lin-Shan Lee
AI4TS
283
5
0
07 Nov 2018
Truly unsupervised acoustic word embeddings using weak top-down
  constraints in encoder-decoder models
Truly unsupervised acoustic word embeddings using weak top-down constraints in encoder-decoder models
Herman Kamper
SSL
255
71
0
01 Nov 2018
Almost-unsupervised Speech Recognition with Close-to-zero Resource Based
  on Phonetic Structures Learned from Very Small Unpaired Speech and Text Data
Almost-unsupervised Speech Recognition with Close-to-zero Resource Based on Phonetic Structures Learned from Very Small Unpaired Speech and Text Data
Yi-Chen Chen
Chia-Hao Shen
Sung-Feng Huang
Hung-yi Lee
Lin-Shan Lee
227
17
0
30 Oct 2018
1
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