Generating Sound with Neural Networks

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Generating Sound with Neural Networks

Learn how to generate sound from audio files 🎧 🎧 using Variational Autoencoders.

Sound Generation with Neural Networks - INTRO[edit]


Sound Generation with Deep Learning - Approaches and Challenges[edit]

0:00 Intro 0:33 Defining the sound generation task 1:17 Classification of sound generation systems 2:14 Types of generated sounds 3:41 Sound representations 4:07 Generation from raw audio 7:40 Challenges of raw audio generation 10:21 Generation from spectrograms 16:12 Advantages of generation from spectrograms 18:07 Challenges of generation from spectrograms 20:26 Can we generate sound with MFCCs? 21:26 DL architectures for sound generation 22:13 Inputs for generation 24:03 Details about the sound generative system we'll build 24:44 What's next?

Autoencoders Explained Easily[edit]


How to Implement Autoencoders in Python and Keras - The Encoder[edit]


How to Implement Autoencoders in Python and Keras - The Decoder[edit]


Building and Training an Autoencoder in Keras + TensorFlow + Python[edit]


Saving the Autoencoder in Keras[edit]


Generation with AutoEncoders: Results and Limitations[edit]


From Autoencoders to Variational Autoencoders: Improving the Encoder[edit]


From Autoencoders to Variational Autoencoders: Improving the Loss Function[edit]


How to implement a Variational AutoEncoder in Python and Keras[edit]


Preprocessing Audio Datasets for Machine Learning[edit]


Training a VAE with Speech Data in Keras[edit]


Generating Sound Digits with a Variational AutoEncoder[edit]