A map of vocoders
Inside one of the slide decks of NSF https://nii-yamagishilab.github.io/samples-nsf/index.html
Inside one of the slide decks of NSF https://nii-yamagishilab.github.io/samples-nsf/index.html
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https://www.youtube.com/watch?v=Q3gNj7XlArs
Daniel Povey describes how to get Conformer to converge faster, watch after 16th minute if you don’t care about intro to K2 and RNN-T. This is hands down the most down to earth hacker talk on neural nets I’ve seen in a long time.
Key takeaways:
- [fill me in when you stop rewatching]
Daniel Povey describes how to get Conformer to converge faster, watch after 16th minute if you don’t care about intro to K2 and RNN-T. This is hands down the most down to earth hacker talk on neural nets I’ve seen in a long time.
Key takeaways:
- [fill me in when you stop rewatching]
YouTube
Dan K2 #30 Daniel Povey BAAI 2022 Conference Full Version
powerpoint slides: https://shorturl.at/KMVY4
try latest k2 model here: https://huggingface.co/spaces/k2-fsa/automatic-speech-recognition
0:00 Intro
1:24 Progress in ASR with Next-Gen Kaldi
2:24 Next-gen Kaldi: what is it?
3:48 Next-gen Kaldi: who is the…
try latest k2 model here: https://huggingface.co/spaces/k2-fsa/automatic-speech-recognition
0:00 Intro
1:24 Progress in ASR with Next-Gen Kaldi
2:24 Next-gen Kaldi: what is it?
3:48 Next-gen Kaldi: who is the…
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kaldi nnet3 suprised me with some pretty detailed training diagnostics and sophisticated tricks early on, like weight averaging, LR scheduling, per-layer gradient statistics, etc. Icefall (recipes for k2) now has a similar diagnostics toolkit ported over using PyTorch hooks, see
https://github.com/k2-fsa/icefall/blob/c0101185d7be5e353db01dad326d530faa4ea718/icefall/diagnostics.py
The talk above describes what you can achieve if you get your diagnostics together
https://github.com/k2-fsa/icefall/blob/c0101185d7be5e353db01dad326d530faa4ea718/icefall/diagnostics.py
The talk above describes what you can achieve if you get your diagnostics together
GitHub
icefall/diagnostics.py at c0101185d7be5e353db01dad326d530faa4ea718 · k2-fsa/icefall
Contribute to k2-fsa/icefall development by creating an account on GitHub.
Vol Building AGI
https://www.youtube.com/watch?v=Q3gNj7XlArs Daniel Povey describes how to get Conformer to converge faster, watch after 16th minute if you don’t care about intro to K2 and RNN-T. This is hands down the most down to earth hacker talk on neural nets I’ve seen…
There is a blog post now https://medium.com/@nadirapovey/next-gen-kaldi-reworked-conformer-model-8a3828f364af
Medium
Next-gen Kaldi: Reworked Conformer Model
Blog was created from Daniel Povey’s speech at BAAI Conference on youtube.
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interspeech-tutorial.final_BR_anurag_ankit.pptx.pdf
15.5 MB
Happy Interspeech 2022 Tutorial Day!
First up, Learning from Weak Labels by Bhiksha Raj, Anurag Kumar, Ankit Shah
Slides and Code (MATLAB) in https://github.com/cmu-mlsp/Interspeech-Tutorial-2022-Learning_from_weak_labels
First up, Learning from Weak Labels by Bhiksha Raj, Anurag Kumar, Ankit Shah
Slides and Code (MATLAB) in https://github.com/cmu-mlsp/Interspeech-Tutorial-2022-Learning_from_weak_labels
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An afternoon tutorial is a by Xu Tan and Hung-yi Lee on Neural Speech Synthesis
Xu Tan has a massive survey paper on a Speech Synthesis, check out tts-tutorial on GitHub for more.
Hung-yi Lee has a very broad Machine Learning lectures channel in Mandarin with slides in English. A lot of lectures are about speech. https://www.youtube.com/c/HungyiLeeNTU
As an upgrade from this year’s ICASSP, it features a whole part devoted to Voice Conversion.
https://github.com/tts-tutorial/interspeech2022
Xu Tan has a massive survey paper on a Speech Synthesis, check out tts-tutorial on GitHub for more.
Hung-yi Lee has a very broad Machine Learning lectures channel in Mandarin with slides in English. A lot of lectures are about speech. https://www.youtube.com/c/HungyiLeeNTU
As an upgrade from this year’s ICASSP, it features a whole part devoted to Voice Conversion.
https://github.com/tts-tutorial/interspeech2022
GitHub
GitHub - tts-tutorial/interspeech2022
Contribute to tts-tutorial/interspeech2022 development by creating an account on GitHub.
Self-supervised Representation Learning for Speech Processing by Hung-yi Lee, Abdelrahman Mohamed, Shinji Watanabe, Tara Sainath, Karen Livescu, Shang-Wen Li, Shu-wen Yang, Katrin Kirchhoff
This tutorial looks like an upgrade from a preceding one at NAACL 2022. There is an abstract paper inside (13 pages) and a link to s3prl on GitHub.
https://aclanthology.org/2022.naacl-tutorials.2/
This tutorial looks like an upgrade from a preceding one at NAACL 2022. There is an abstract paper inside (13 pages) and a link to s3prl on GitHub.
https://aclanthology.org/2022.naacl-tutorials.2/
ACL Anthology
Self-supervised Representation Learning for Speech Processing
Hung-yi Lee, Abdelrahman Mohamed, Shinji Watanabe, Tara Sainath, Karen Livescu, Shang-Wen Li, Shu-wen Yang, Katrin Kirchhoff. Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language…
Vol Building AGI
Self-supervised Representation Learning for Speech Processing by Hung-yi Lee, Abdelrahman Mohamed, Shinji Watanabe, Tara Sainath, Karen Livescu, Shang-Wen Li, Shu-wen Yang, Katrin Kirchhoff This tutorial looks like an upgrade from a preceding one at NAACL…
SSL tutorial slides have been published:
https://docs.google.com/presentation/d/12W-L8EPQ3SfCPmgNcSm4B-_Psksqmvw_O6YD8CULelY/edit?resourcekey=0-ZBTF2RG_dHWNqq9q_w-eeg
source: https://twitter.com/HungyiLee2/status/1571511025475948549
https://docs.google.com/presentation/d/12W-L8EPQ3SfCPmgNcSm4B-_Psksqmvw_O6YD8CULelY/edit?resourcekey=0-ZBTF2RG_dHWNqq9q_w-eeg
source: https://twitter.com/HungyiLee2/status/1571511025475948549
Google Docs
INTERSPEECH 2022 SSL tutorial
Self-Supervised Representation Learning for Speech Processing Abdelrahman Mohamed Hung-yi Lee Shinji Watanabe Tara N. Sainath Karen Livescu Shang-Wen Li Shu-wen Yang Katrin Kirchhoff September 18, 2022 Google doc: https://docs.google.com/document/d/1Az_e…
Vol Building AGI
There is a blog post now https://medium.com/@nadirapovey/next-gen-kaldi-reworked-conformer-model-8a3828f364af
That model warmup trick is also known as ReZero when you gradually change alpha from 0 to 1
https://proceedings.mlr.press/v161/bachlechner21a/bachlechner21a.pdf
https://proceedings.mlr.press/v161/bachlechner21a/bachlechner21a.pdf
https://twitter.com/92hschoi/status/1593467656379990016
Disentangled self-supervised representations for timbre, language and pitch using contrastive and reconstruction objectives.
DEMAND noise is used for linguistic contrast, CQT cropping is used for pitch. No extra augmentation seems to be used for timbre. Global speaker encoder tokens are turned into time-dependent using cross-attention in the synthesizer.
10k hours of pretraining data on 10x 3090. Beats supervised YourTTS on some tasks.
Disentangled self-supervised representations for timbre, language and pitch using contrastive and reconstruction objectives.
DEMAND noise is used for linguistic contrast, CQT cropping is used for pitch. No extra augmentation seems to be used for timbre. Global speaker encoder tokens are turned into time-dependent using cross-attention in the synthesizer.
10k hours of pretraining data on 10x 3090. Beats supervised YourTTS on some tasks.
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Rotate the phase of each frequency bin to simulate one-to-many mapping. Useful augmentation for GAN vocoder training. Differentiable.
https://mindslab-ai.github.io/phaseaug/
https://mindslab-ai.github.io/phaseaug/
On augmentations for voice conversion:
> On the other hand, the use of more carefully designed augmentation techniques (such as timbre transformation with VoTrans and modifying prosody with NoisyF0) may be helpful in achieving more realistic target speaker identity and better audio quality
https://arxiv.org/abs/2212.13581
> On the other hand, the use of more carefully designed augmentation techniques (such as timbre transformation with VoTrans and modifying prosody with NoisyF0) may be helpful in achieving more realistic target speaker identity and better audio quality
https://arxiv.org/abs/2212.13581
New scaling laws paper for combining different modalities (e.g. speech and text) using Chinchilla style notation.
https://twitter.com/ArmenAgha/status/1613192899646324736
https://twitter.com/ArmenAgha/status/1613192899646324736