Implement audio data augmentation techniques in Python with this comprehensive tutorial video. Learn to enhance audio datasets by applying noise addition, time stretching, pitch scaling, polarity inversion, and random gain. Follow along as the instructor demonstrates each technique using libraries like librosa, providing step-by-step explanations and code examples. Gain practical skills to improve machine learning models for audio processing tasks and expand your audio data manipulation toolkit. Access the complete source code on GitHub to practice and further explore these powerful augmentation methods.
Overview
Syllabus
Intro
Setting the envinroment
Implementation plan
Noise addition
Time stretching
Pitch scaling
Polarity inversion
Random gain
Coming next
Taught by
Valerio Velardo - The Sound of AI