Vol Building AGI
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Past topics: speech synthesis, transformers, LSTM, recurrence
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Turns out the 80fps vs 200fps frame rate issue was addressed in the original Tacotron 2 paper.

https://arxiv.org/abs/1712.05884
LJSpeech is a noisy dataset! Compare a single utterance from LJ and HiFi-TTS speaker 92_clean
Vol Building AGI
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The sample above was actually preprocessed (at least downsampled to 16khz), here’s the original one, the noise at the silence interval is audible
Channel name was changed to «Vol Trying Synthesis»
Thanks Taras for sharing the Deep Creativity course, I’ve been stuck watching a lecture on music synthesis.

The topic of using proper strong inductive biases to achieve realistic output seems to be much more explored there: it seems like vocoder community has just started using DWT (FreGAN), PQMF (Avocodo, RAVE) and antialiasing and quality for parameter efficiency while DDSP has a much larger pool of building blocks for upsampling.

https://youtu.be/oiPWOTr44qQ
https://github.com/TariqAHassan/HiFiHybrid

Anti-aliased multi-periodicity composition backported to HiFi-GAN

The Snake1d activation replaces more common Leaky ReLU (snake a x = x + sin^2(ax)/a where a is trainable) to arbitrarily change the frequency of the input. It is anti-aliased by applying low pass filtering (blurring) after upsampling and downsampling operations.

However trying to replace transposed convoluions with their antialiased counterparts causes mode collapse in the BigVGAN. Maybe it won’t in Diff? :)
A map of vocoders

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]
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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
interspeech-tutorial.final_BR_anurag_ankit.pptx.pdf
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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
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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
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/
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