Audio Signal Processing for Machine Learning: Difference between revisions

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= Audio Signal Processing for Machine Learning =
= Audio Signal Processing for Machine Learning =
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= Sound and Waveforms =
= Sound and Waveforms =
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= Intensity, Loudness, and Timbre =
= Intensity, Loudness, and Timbre =
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= Understanding Audio Signals for Machine Learning =
= Understanding Audio Signals for Machine Learning =
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= Types of Audio Features for Machine Learning =
= Types of Audio Features for Machine Learning =
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= How to Extract Audio Features =
= How to Extract Audio Features =
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= Understanding Time Domain Audio Features =
= Understanding Time Domain Audio Features =
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= Extracting the amplitude envelope feature from scratch in Python =
= Extracting the amplitude envelope feature from scratch in Python =
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= How to Extract Root-Mean Square Energy and Zero-Crossing Rate from Audio =
= How to Extract Root-Mean Square Energy and Zero-Crossing Rate from Audio =
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= Demystifying the Fourier Transform: The Intuition =
= Demystifying the Fourier Transform: The Intuition =
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= Complex Numbers for Audio Signal Processing =
= Complex Numbers for Audio Signal Processing =
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= Defining the Fourier Transform with Complex Numbers =
= Defining the Fourier Transform with Complex Numbers =
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KxRmbtJWUzI


= Discrete Fourier Transform Explained Easily =
= Discrete Fourier Transform Explained Easily =
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= How to Extract the Fourier Transform with Python =
= How to Extract the Fourier Transform with Python =
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= Short-Time Fourier Transform Explained Easily =
= Short-Time Fourier Transform Explained Easily =
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= How to Extract Spectrograms from Audio with Python =
= How to Extract Spectrograms from Audio with Python =
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= Mel Spectrograms Explained Easily =
= Mel Spectrograms Explained Easily =
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= Extracting Mel Spectrograms with Python =
= Extracting Mel Spectrograms with Python =
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= Mel-Frequency Cepstral Coefficients Explained Easily =
= Mel-Frequency Cepstral Coefficients Explained Easily =
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= Extracting Mel-Frequency Cepstral Coefficients with Python =
= Extracting Mel-Frequency Cepstral Coefficients with Python =
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= Frequency-Domain Audio Features =
= Frequency-Domain Audio Features =
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= Implementing Band Energy Ratio in Python from Scratch =
= Implementing Band Energy Ratio in Python from Scratch =
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= Extracting Spectral Centroid and Bandwidth with Python and Librosa =
= Extracting Spectral Centroid and Bandwidth with Python and Librosa =
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Revision as of 21:58, 29 August 2021

Audio Signal Processing for Machine Learning 23 videos Master key audio signal processing concepts. Learn how to process raw audio data to power your audio-driven AI applications.


Audio Signal Processing for Machine Learning[edit]

Sound and Waveforms[edit]


Intensity, Loudness, and Timbre[edit]


Understanding Audio Signals for Machine Learning[edit]


Types of Audio Features for Machine Learning[edit]


How to Extract Audio Features[edit]


Understanding Time Domain Audio Features[edit]


Extracting the amplitude envelope feature from scratch in Python[edit]


How to Extract Root-Mean Square Energy and Zero-Crossing Rate from Audio[edit]

EycaSbIRx-0

Demystifying the Fourier Transform: The Intuition[edit]


Complex Numbers for Audio Signal Processing[edit]


Defining the Fourier Transform with Complex Numbers[edit]

KxRmbtJWUzI


Discrete Fourier Transform Explained Easily[edit]


How to Extract the Fourier Transform with Python[edit]


Short-Time Fourier Transform Explained Easily[edit]


How to Extract Spectrograms from Audio with Python[edit]


Mel Spectrograms Explained Easily[edit]


Extracting Mel Spectrograms with Python[edit]


Mel-Frequency Cepstral Coefficients Explained Easily[edit]


Extracting Mel-Frequency Cepstral Coefficients with Python[edit]


Frequency-Domain Audio Features[edit]


Implementing Band Energy Ratio in Python from Scratch[edit]


Extracting Spectral Centroid and Bandwidth with Python and Librosa[edit]