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dla's Introduction

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Deep Learning for Audio (DLA)

  • Lecture and seminar materials for each week are in ./week* folders, see README.md for materials and instructions
  • Any technical issues, ideas, bugs in course materials, contribution ideas - add an issue
  • The current version of the course is conducted in autumn 2021 at the CS Faculty of HSE

Syllabus

  • week01 Introduction to Digital Signal Processing

    • Lecture: Introduction to Course
    • Seminar: Intro in pytorch
  • week02 Introduction to Digital Signal Processing

    • Lecture: Signals, Fourier transform, Spectrograms, MelScale, MFCC and etc
    • Seminar: torchaudio, spoken digit classification
  • week03 Automatic Speech Recognition (ASR) I

    • Lecture: Metrics, Attention, CTC, LAS, BeamSearch
    • Seminar: Audio augmentations, CTC decoding, CTC BeamSearch
  • week04 Automatic Speech Recognition (ASR) II

    • Lecture: RNN-T, LM-fusion, BPE
    • Seminar: W&B tutorial, homework barebones overview
  • week05 Speaker verification and identification

    • Lecture: Metric Learning: Cosine, Contrastive, Triplet Losses. Angular Softmax. ArcFace
    • Seminar: Q&A about homework
  • week06 Key-word spottind (KWS)

    • Lecture: (DNN, CNN, RNN+Attention) based KWS, SVDF, Orthogonality Regularization and other Tricks
    • Seminar: Implementation of CNN+Attention+RNN KWS model
  • week07 Text to Speech (TTS)

    • Lecture: Tacotron, DeepVoice, GST, FastSpeech, AdaSpeech, Attention Tricks
    • Seminar: TTS in torchaudio
  • week08 Neural Vocoders

    • Lecture: WaveNet, Parallel WaveGAN
    • Seminar: Implementation of WaveNet
  • week09 Advanced TTS and Vocoders

    • Lecture: Introduction into generative models. ParallelWaveNet, WaveGlow, WaveFlow, MelGAN, HiFiGAN, VITS
  • week10 Voice Conversion

    • Lecture: AutoVC, ConVoice, CycleGAN-VC, StarGAN-VC, Blow, NVC, MOSNet
    • Seminar: Q&A about homework
  • week11 Self-supervision in Audio and Speech

    • Lecture:
    • Seminar: Reading Group

Homeworks

  • ASR Implementation of ASR model

  • KWS Implementation of KWS model

  • TTS Implementation of TTS model

  • NV Implementation of Neural Vocoder Model

Contributors & course staff

Course materials and teaching performed by

dla's People

Contributors

demo-99 avatar markovka17 avatar raccooncoder avatar wrathofgrapes avatar

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