athena.transform.feats.mfcc¶
This model extracts MFCC features per frame.
Module Contents¶
Classes¶
Mfcc |
Compute mfcc features of every frame in speech, return a float tensor |
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class
athena.transform.feats.mfcc.Mfcc(config: dict)¶ Bases:
athena.transform.feats.base_frontend.BaseFrontendCompute mfcc features of every frame in speech, return a float tensor with size (num_channels, num_frames, num_frequencies).
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classmethod
params(cls, config=None)¶ Set params. :param config: contains fourteen optional parameters.
window_length: Window length in seconds. (float, default = 0.025) frame_length: Hop length in seconds. (float, default = 0.010) snip_edges: If 1, the last frame (shorter than window_length) will
be cutoff. If 2, 1 // 2 frame_length data will be padded to data. (int, default = 1)- raw_energy: If 1, compute frame energy before preemphasis and
- windowing. If 2, compute frame energy after preemphasis and windowing. (int, default = 1)
- preEph_coeff: Coefficient for use in frame-signal preemphasis.
- (float, default = 0.97)
- window_type: Type of window (“hamm”|”hann”|”povey”|”rect”|”blac”|”tria”).
- (string, default = “povey”)
- remove_dc_offset: Subtract mean from waveform on each frame
- (bool, default = true)
- is_fbank: If true, compute power spetrum without frame energy. If
- false, using the frame energy instead of the square of the constant component of the signal. (bool, default = true)
- output_type: If 1, return power spectrum. If 2, return log-power
- spectrum. (int, default = 1)
- upper_frequency_limit: High cutoff frequency for mel bins (if < 0, offset from
- Nyquist) (float, default = 0)
lower_frequency_limit: Low cutoff frequency for mel bins (float, default = 20) filterbank_channel_count: Number of triangular mel-frequency bins.
(float, default = 23)- coefficient_count: Number of cepstra in MFCC computation.
- (int, default = 13)
- cepstral_lifter: Constant that controls scaling of MFCCs.
- (float, default = 22)
- use_energy:Use energy (not C0) in MFCC computation.
- (bool, default = True)
Returns: An object of class HParams, which is a set of hyperparameters as name-value pairs.
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call(self, audio_data, sample_rate)¶ Caculate mfcc features of audio data. :param audio_data: the audio signal from which to compute spectrum.
Should be an (1, N) tensor.Parameters: sample_rate – the sample rate of the signal we working with. Returns: A float tensor of size (num_channels, num_frames, num_frequencies) containing mfcc features of every frame in speech.
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dim(self)¶ dim
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classmethod