Caution
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Glossary¶
- time series¶
Typically an audio signal, denoted by
y
, and represented as a one-dimensional numpy.ndarray of floating-point values.y[t]
corresponds to amplitude of the waveform at samplet
.- sampling rate¶
The (positive integer) number of samples per second of a time series. This is denoted by an integer variable
sr
.- frame¶
A short slice of a time series used for analysis purposes. This usually corresponds to a single column of a spectrogram matrix.
- window¶
A vector or function used to weight samples within a frame when computing a spectrogram.
- frame length¶
The (positive integer) number of samples in an analysis window (or frame). This is denoted by an integer variable
n_fft
.- hop length¶
The number of samples between successive frames, e.g., the columns of a spectrogram. This is denoted as a positive integer
hop_length
.- window length¶
The length (width) of the window function (e.g., Hann window). Note that this can be smaller than the frame length used in a short-time Fourier transform. Typically denoted as a positive integer variable
win_length
.- spectrogram¶
A matrix
S
where the rows index frequency bins, and the columns index frames (time). Spectrograms can be either real-valued or complex-valued. By convention, real-valued spectrograms are denoted as numpy.ndarraysS
, while complex-valued STFT matrices are denoted asD
.- onset (strength) envelope¶
An onset envelope
onset_env[t]
measures the strength of note onsets at framet
. Typically stored as a one-dimensional numpy.ndarray of floating-point valuesonset_envelope
.- chroma¶
Also known as pitch class profile (PCP). Chroma representations measure the amount of relative energy in each pitch class (e.g., the 12 notes in the chromatic scale) at a given frame/time.