import math from typing import Tuple import torch import torchaudio from torch import Tensor __all__ = [ "get_mel_banks", "inverse_mel_scale", "inverse_mel_scale_scalar", "mel_scale", "mel_scale_scalar", "spectrogram", "fbank", "mfcc", "vtln_warp_freq", "vtln_warp_mel_freq", ] # numeric_limits::epsilon() 1.1920928955078125e-07 EPSILON = torch.tensor(torch.finfo(torch.float).eps) # 1 milliseconds = 0.001 seconds MILLISECONDS_TO_SECONDS = 0.001 # window types HAMMING = "hamming" HANNING = "hanning" POVEY = "povey" RECTANGULAR = "rectangular" BLACKMAN = "blackman" WINDOWS = [HAMMING, HANNING, POVEY, RECTANGULAR, BLACKMAN] def _get_epsilon(device, dtype): return EPSILON.to(device=device, dtype=dtype) def _next_power_of_2(x: int) -> int: r"""Returns the smallest power of 2 that is greater than x""" return 1 if x == 0 else 2 ** (x - 1).bit_length() def _get_strided(waveform: Tensor, window_size: int, window_shift: int, snip_edges: bool) -> Tensor: r"""Given a waveform (1D tensor of size ``num_samples``), it returns a 2D tensor (m, ``window_size``) representing how the window is shifted along the waveform. Each row is a frame. Args: waveform (Tensor): Tensor of size ``num_samples`` window_size (int): Frame length window_shift (int): Frame shift snip_edges (bool): If True, end effects will be handled by outputting only frames that completely fit in the file, and the number of frames depends on the frame_length. If False, the number of frames depends only on the frame_shift, and we reflect the data at the ends. Returns: Tensor: 2D tensor of size (m, ``window_size``) where each row is a frame """ assert waveform.dim() == 1 num_samples = waveform.size(0) strides = (window_shift * waveform.stride(0), waveform.stride(0)) if snip_edges: if num_samples < window_size: return torch.empty((0, 0), dtype=waveform.dtype, device=waveform.device) else: m = 1 + (num_samples - window_size) // window_shift else: reversed_waveform = torch.flip(waveform, [0]) m = (num_samples + (window_shift // 2)) // window_shift pad = window_size // 2 - window_shift // 2 pad_right = reversed_waveform if pad > 0: # torch.nn.functional.pad returns [2,1,0,1,2] for 'reflect' # but we want [2, 1, 0, 0, 1, 2] pad_left = reversed_waveform[-pad:] waveform = torch.cat((pad_left, waveform, pad_right), dim=0) else: # pad is negative so we want to trim the waveform at the front waveform = torch.cat((waveform[-pad:], pad_right), dim=0) sizes = (m, window_size) return waveform.as_strided(sizes, strides) def _feature_window_function( window_type: str, window_size: int, blackman_coeff: float, device: torch.device, dtype: int, ) -> Tensor: r"""Returns a window function with the given type and size""" if window_type == HANNING: return torch.hann_window(window_size, periodic=False, device=device, dtype=dtype) elif window_type == HAMMING: return torch.hamming_window(window_size, periodic=False, alpha=0.54, beta=0.46, device=device, dtype=dtype) elif window_type == POVEY: # like hanning but goes to zero at edges return torch.hann_window(window_size, periodic=False, device=device, dtype=dtype).pow(0.85) elif window_type == RECTANGULAR: return torch.ones(window_size, device=device, dtype=dtype) elif window_type == BLACKMAN: a = 2 * math.pi / (window_size - 1) window_function = torch.arange(window_size, device=device, dtype=dtype) # can't use torch.blackman_window as they use different coefficients return ( blackman_coeff - 0.5 * torch.cos(a * window_function) + (0.5 - blackman_coeff) * torch.cos(2 * a * window_function) ).to(device=device, dtype=dtype) else: raise Exception("Invalid window type " + window_type) def _get_log_energy(strided_input: Tensor, epsilon: Tensor, energy_floor: float) -> Tensor: r"""Returns the log energy of size (m) for a strided_input (m,*)""" device, dtype = strided_input.device, strided_input.dtype log_energy = torch.max(strided_input.pow(2).sum(1), epsilon).log() # size (m) if energy_floor == 0.0: return log_energy return torch.max(log_energy, torch.tensor(math.log(energy_floor), device=device, dtype=dtype)) def _get_waveform_and_window_properties( waveform: Tensor, channel: int, sample_frequency: float, frame_shift: float, frame_length: float, round_to_power_of_two: bool, preemphasis_coefficient: float, ) -> Tuple[Tensor, int, int, int]: r"""Gets the waveform and window properties""" channel = max(channel, 0) assert channel < waveform.size(0), "Invalid channel {} for size {}".format(channel, waveform.size(0)) waveform = waveform[channel, :] # size (n) window_shift = int(sample_frequency * frame_shift * MILLISECONDS_TO_SECONDS) window_size = int(sample_frequency * frame_length * MILLISECONDS_TO_SECONDS) padded_window_size = _next_power_of_2(window_size) if round_to_power_of_two else window_size assert 2 <= window_size <= len(waveform), "choose a window size {} that is [2, {}]".format( window_size, len(waveform) ) assert 0 < window_shift, "`window_shift` must be greater than 0" assert padded_window_size % 2 == 0, ( "the padded `window_size` must be divisible by two." " use `round_to_power_of_two` or change `frame_length`" ) assert 0.0 <= preemphasis_coefficient <= 1.0, "`preemphasis_coefficient` must be between [0,1]" assert sample_frequency > 0, "`sample_frequency` must be greater than zero" return waveform, window_shift, window_size, padded_window_size def _get_window( waveform: Tensor, padded_window_size: int, window_size: int, window_shift: int, window_type: str, blackman_coeff: float, snip_edges: bool, raw_energy: bool, energy_floor: float, dither: float, remove_dc_offset: bool, preemphasis_coefficient: float, ) -> Tuple[Tensor, Tensor]: r"""Gets a window and its log energy Returns: (Tensor, Tensor): strided_input of size (m, ``padded_window_size``) and signal_log_energy of size (m) """ device, dtype = waveform.device, waveform.dtype epsilon = _get_epsilon(device, dtype) # size (m, window_size) strided_input = _get_strided(waveform, window_size, window_shift, snip_edges) if dither != 0.0: rand_gauss = torch.randn(strided_input.shape, device=device, dtype=dtype) strided_input = strided_input + rand_gauss * dither if remove_dc_offset: # Subtract each row/frame by its mean row_means = torch.mean(strided_input, dim=1).unsqueeze(1) # size (m, 1) strided_input = strided_input - row_means if raw_energy: # Compute the log energy of each row/frame before applying preemphasis and # window function signal_log_energy = _get_log_energy(strided_input, epsilon, energy_floor) # size (m) if preemphasis_coefficient != 0.0: # strided_input[i,j] -= preemphasis_coefficient * strided_input[i, max(0, j-1)] for all i,j offset_strided_input = torch.nn.functional.pad(strided_input.unsqueeze(0), (1, 0), mode="replicate").squeeze( 0 ) # size (m, window_size + 1) strided_input = strided_input - preemphasis_coefficient * offset_strided_input[:, :-1] # Apply window_function to each row/frame window_function = _feature_window_function(window_type, window_size, blackman_coeff, device, dtype).unsqueeze( 0 ) # size (1, window_size) strided_input = strided_input * window_function # size (m, window_size) # Pad columns with zero until we reach size (m, padded_window_size) if padded_window_size != window_size: padding_right = padded_window_size - window_size strided_input = torch.nn.functional.pad( strided_input.unsqueeze(0), (0, padding_right), mode="constant", value=0 ).squeeze(0) # Compute energy after window function (not the raw one) if not raw_energy: signal_log_energy = _get_log_energy(strided_input, epsilon, energy_floor) # size (m) return strided_input, signal_log_energy def _subtract_column_mean(tensor: Tensor, subtract_mean: bool) -> Tensor: # subtracts the column mean of the tensor size (m, n) if subtract_mean=True # it returns size (m, n) if subtract_mean: col_means = torch.mean(tensor, dim=0).unsqueeze(0) tensor = tensor - col_means return tensor def spectrogram( waveform: Tensor, blackman_coeff: float = 0.42, channel: int = -1, dither: float = 0.0, energy_floor: float = 1.0, frame_length: float = 25.0, frame_shift: float = 10.0, min_duration: float = 0.0, preemphasis_coefficient: float = 0.97, raw_energy: bool = True, remove_dc_offset: bool = True, round_to_power_of_two: bool = True, sample_frequency: float = 16000.0, snip_edges: bool = True, subtract_mean: bool = False, window_type: str = POVEY, ) -> Tensor: r"""Create a spectrogram from a raw audio signal. This matches the input/output of Kaldi's compute-spectrogram-feats. Args: waveform (Tensor): Tensor of audio of size (c, n) where c is in the range [0,2) blackman_coeff (float, optional): Constant coefficient for generalized Blackman window. (Default: ``0.42``) channel (int, optional): Channel to extract (-1 -> expect mono, 0 -> left, 1 -> right) (Default: ``-1``) dither (float, optional): Dithering constant (0.0 means no dither). If you turn this off, you should set the energy_floor option, e.g. to 1.0 or 0.1 (Default: ``0.0``) energy_floor (float, optional): Floor on energy (absolute, not relative) in Spectrogram computation. Caution: this floor is applied to the zeroth component, representing the total signal energy. The floor on the individual spectrogram elements is fixed at std::numeric_limits::epsilon(). (Default: ``1.0``) frame_length (float, optional): Frame length in milliseconds (Default: ``25.0``) frame_shift (float, optional): Frame shift in milliseconds (Default: ``10.0``) min_duration (float, optional): Minimum duration of segments to process (in seconds). (Default: ``0.0``) preemphasis_coefficient (float, optional): Coefficient for use in signal preemphasis (Default: ``0.97``) raw_energy (bool, optional): If True, compute energy before preemphasis and windowing (Default: ``True``) remove_dc_offset (bool, optional): Subtract mean from waveform on each frame (Default: ``True``) round_to_power_of_two (bool, optional): If True, round window size to power of two by zero-padding input to FFT. (Default: ``True``) sample_frequency (float, optional): Waveform data sample frequency (must match the waveform file, if specified there) (Default: ``16000.0``) snip_edges (bool, optional): If True, end effects will be handled by outputting only frames that completely fit in the file, and the number of frames depends on the frame_length. If False, the number of frames depends only on the frame_shift, and we reflect the data at the ends. (Default: ``True``) subtract_mean (bool, optional): Subtract mean of each feature file [CMS]; not recommended to do it this way. (Default: ``False``) window_type (str, optional): Type of window ('hamming'|'hanning'|'povey'|'rectangular'|'blackman') (Default: ``'povey'``) Returns: Tensor: A spectrogram identical to what Kaldi would output. The shape is (m, ``padded_window_size // 2 + 1``) where m is calculated in _get_strided """ device, dtype = waveform.device, waveform.dtype epsilon = _get_epsilon(device, dtype) waveform, window_shift, window_size, padded_window_size = _get_waveform_and_window_properties( waveform, channel, sample_frequency, frame_shift, frame_length, round_to_power_of_two, preemphasis_coefficient ) if len(waveform) < min_duration * sample_frequency: # signal is too short return torch.empty(0) strided_input, signal_log_energy = _get_window( waveform, padded_window_size, window_size, window_shift, window_type, blackman_coeff, snip_edges, raw_energy, energy_floor, dither, remove_dc_offset, preemphasis_coefficient, ) # size (m, padded_window_size // 2 + 1, 2) fft = torch.fft.rfft(strided_input) # Convert the FFT into a power spectrum power_spectrum = torch.max(fft.abs().pow(2.0), epsilon).log() # size (m, padded_window_size // 2 + 1) power_spectrum[:, 0] = signal_log_energy power_spectrum = _subtract_column_mean(power_spectrum, subtract_mean) return power_spectrum def inverse_mel_scale_scalar(mel_freq: float) -> float: return 700.0 * (math.exp(mel_freq / 1127.0) - 1.0) def inverse_mel_scale(mel_freq: Tensor) -> Tensor: return 700.0 * ((mel_freq / 1127.0).exp() - 1.0) def mel_scale_scalar(freq: float) -> float: return 1127.0 * math.log(1.0 + freq / 700.0) def mel_scale(freq: Tensor) -> Tensor: return 1127.0 * (1.0 + freq / 700.0).log() def vtln_warp_freq( vtln_low_cutoff: float, vtln_high_cutoff: float, low_freq: float, high_freq: float, vtln_warp_factor: float, freq: Tensor, ) -> Tensor: r"""This computes a VTLN warping function that is not the same as HTK's one, but has similar inputs (this function has the advantage of never producing empty bins). This function computes a warp function F(freq), defined between low_freq and high_freq inclusive, with the following properties: F(low_freq) == low_freq F(high_freq) == high_freq The function is continuous and piecewise linear with two inflection points. The lower inflection point (measured in terms of the unwarped frequency) is at frequency l, determined as described below. The higher inflection point is at a frequency h, determined as described below. If l <= f <= h, then F(f) = f/vtln_warp_factor. If the higher inflection point (measured in terms of the unwarped frequency) is at h, then max(h, F(h)) == vtln_high_cutoff. Since (by the last point) F(h) == h/vtln_warp_factor, then max(h, h/vtln_warp_factor) == vtln_high_cutoff, so h = vtln_high_cutoff / max(1, 1/vtln_warp_factor). = vtln_high_cutoff * min(1, vtln_warp_factor). If the lower inflection point (measured in terms of the unwarped frequency) is at l, then min(l, F(l)) == vtln_low_cutoff This implies that l = vtln_low_cutoff / min(1, 1/vtln_warp_factor) = vtln_low_cutoff * max(1, vtln_warp_factor) Args: vtln_low_cutoff (float): Lower frequency cutoffs for VTLN vtln_high_cutoff (float): Upper frequency cutoffs for VTLN low_freq (float): Lower frequency cutoffs in mel computation high_freq (float): Upper frequency cutoffs in mel computation vtln_warp_factor (float): Vtln warp factor freq (Tensor): given frequency in Hz Returns: Tensor: Freq after vtln warp """ assert vtln_low_cutoff > low_freq, "be sure to set the vtln_low option higher than low_freq" assert vtln_high_cutoff < high_freq, "be sure to set the vtln_high option lower than high_freq [or negative]" l = vtln_low_cutoff * max(1.0, vtln_warp_factor) h = vtln_high_cutoff * min(1.0, vtln_warp_factor) scale = 1.0 / vtln_warp_factor Fl = scale * l # F(l) Fh = scale * h # F(h) assert l > low_freq and h < high_freq # slope of left part of the 3-piece linear function scale_left = (Fl - low_freq) / (l - low_freq) # [slope of center part is just "scale"] # slope of right part of the 3-piece linear function scale_right = (high_freq - Fh) / (high_freq - h) res = torch.empty_like(freq) outside_low_high_freq = torch.lt(freq, low_freq) | torch.gt(freq, high_freq) # freq < low_freq || freq > high_freq before_l = torch.lt(freq, l) # freq < l before_h = torch.lt(freq, h) # freq < h after_h = torch.ge(freq, h) # freq >= h # order of operations matter here (since there is overlapping frequency regions) res[after_h] = high_freq + scale_right * (freq[after_h] - high_freq) res[before_h] = scale * freq[before_h] res[before_l] = low_freq + scale_left * (freq[before_l] - low_freq) res[outside_low_high_freq] = freq[outside_low_high_freq] return res def vtln_warp_mel_freq( vtln_low_cutoff: float, vtln_high_cutoff: float, low_freq, high_freq: float, vtln_warp_factor: float, mel_freq: Tensor, ) -> Tensor: r""" Args: vtln_low_cutoff (float): Lower frequency cutoffs for VTLN vtln_high_cutoff (float): Upper frequency cutoffs for VTLN low_freq (float): Lower frequency cutoffs in mel computation high_freq (float): Upper frequency cutoffs in mel computation vtln_warp_factor (float): Vtln warp factor mel_freq (Tensor): Given frequency in Mel Returns: Tensor: ``mel_freq`` after vtln warp """ return mel_scale( vtln_warp_freq( vtln_low_cutoff, vtln_high_cutoff, low_freq, high_freq, vtln_warp_factor, inverse_mel_scale(mel_freq) ) ) def get_mel_banks( num_bins: int, window_length_padded: int, sample_freq: float, low_freq: float, high_freq: float, vtln_low: float, vtln_high: float, vtln_warp_factor: float, ) -> Tuple[Tensor, Tensor]: """ Returns: (Tensor, Tensor): The tuple consists of ``bins`` (which is melbank of size (``num_bins``, ``num_fft_bins``)) and ``center_freqs`` (which is center frequencies of bins of size (``num_bins``)). """ assert num_bins > 3, "Must have at least 3 mel bins" assert window_length_padded % 2 == 0 num_fft_bins = window_length_padded / 2 nyquist = 0.5 * sample_freq if high_freq <= 0.0: high_freq += nyquist assert ( (0.0 <= low_freq < nyquist) and (0.0 < high_freq <= nyquist) and (low_freq < high_freq) ), "Bad values in options: low-freq {} and high-freq {} vs. nyquist {}".format(low_freq, high_freq, nyquist) # fft-bin width [think of it as Nyquist-freq / half-window-length] fft_bin_width = sample_freq / window_length_padded mel_low_freq = mel_scale_scalar(low_freq) mel_high_freq = mel_scale_scalar(high_freq) # divide by num_bins+1 in next line because of end-effects where the bins # spread out to the sides. mel_freq_delta = (mel_high_freq - mel_low_freq) / (num_bins + 1) if vtln_high < 0.0: vtln_high += nyquist assert vtln_warp_factor == 1.0 or ( (low_freq < vtln_low < high_freq) and (0.0 < vtln_high < high_freq) and (vtln_low < vtln_high) ), "Bad values in options: vtln-low {} and vtln-high {}, versus " "low-freq {} and high-freq {}".format( vtln_low, vtln_high, low_freq, high_freq ) bin = torch.arange(num_bins).unsqueeze(1) left_mel = mel_low_freq + bin * mel_freq_delta # size(num_bins, 1) center_mel = mel_low_freq + (bin + 1.0) * mel_freq_delta # size(num_bins, 1) right_mel = mel_low_freq + (bin + 2.0) * mel_freq_delta # size(num_bins, 1) if vtln_warp_factor != 1.0: left_mel = vtln_warp_mel_freq(vtln_low, vtln_high, low_freq, high_freq, vtln_warp_factor, left_mel) center_mel = vtln_warp_mel_freq(vtln_low, vtln_high, low_freq, high_freq, vtln_warp_factor, center_mel) right_mel = vtln_warp_mel_freq(vtln_low, vtln_high, low_freq, high_freq, vtln_warp_factor, right_mel) center_freqs = inverse_mel_scale(center_mel) # size (num_bins) # size(1, num_fft_bins) mel = mel_scale(fft_bin_width * torch.arange(num_fft_bins)).unsqueeze(0) # size (num_bins, num_fft_bins) up_slope = (mel - left_mel) / (center_mel - left_mel) down_slope = (right_mel - mel) / (right_mel - center_mel) if vtln_warp_factor == 1.0: # left_mel < center_mel < right_mel so we can min the two slopes and clamp negative values bins = torch.max(torch.zeros(1), torch.min(up_slope, down_slope)) else: # warping can move the order of left_mel, center_mel, right_mel anywhere bins = torch.zeros_like(up_slope) up_idx = torch.gt(mel, left_mel) & torch.le(mel, center_mel) # left_mel < mel <= center_mel down_idx = torch.gt(mel, center_mel) & torch.lt(mel, right_mel) # center_mel < mel < right_mel bins[up_idx] = up_slope[up_idx] bins[down_idx] = down_slope[down_idx] return bins, center_freqs def fbank( waveform: Tensor, blackman_coeff: float = 0.42, channel: int = -1, dither: float = 0.0, energy_floor: float = 1.0, frame_length: float = 25.0, frame_shift: float = 10.0, high_freq: float = 0.0, htk_compat: bool = False, low_freq: float = 20.0, min_duration: float = 0.0, num_mel_bins: int = 23, preemphasis_coefficient: float = 0.97, raw_energy: bool = True, remove_dc_offset: bool = True, round_to_power_of_two: bool = True, sample_frequency: float = 16000.0, snip_edges: bool = True, subtract_mean: bool = False, use_energy: bool = False, use_log_fbank: bool = True, use_power: bool = True, vtln_high: float = -500.0, vtln_low: float = 100.0, vtln_warp: float = 1.0, window_type: str = POVEY, ) -> Tensor: r"""Create a fbank from a raw audio signal. This matches the input/output of Kaldi's compute-fbank-feats. Args: waveform (Tensor): Tensor of audio of size (c, n) where c is in the range [0,2) blackman_coeff (float, optional): Constant coefficient for generalized Blackman window. (Default: ``0.42``) channel (int, optional): Channel to extract (-1 -> expect mono, 0 -> left, 1 -> right) (Default: ``-1``) dither (float, optional): Dithering constant (0.0 means no dither). If you turn this off, you should set the energy_floor option, e.g. to 1.0 or 0.1 (Default: ``0.0``) energy_floor (float, optional): Floor on energy (absolute, not relative) in Spectrogram computation. Caution: this floor is applied to the zeroth component, representing the total signal energy. The floor on the individual spectrogram elements is fixed at std::numeric_limits::epsilon(). (Default: ``1.0``) frame_length (float, optional): Frame length in milliseconds (Default: ``25.0``) frame_shift (float, optional): Frame shift in milliseconds (Default: ``10.0``) high_freq (float, optional): High cutoff frequency for mel bins (if <= 0, offset from Nyquist) (Default: ``0.0``) htk_compat (bool, optional): If true, put energy last. Warning: not sufficient to get HTK compatible features (need to change other parameters). (Default: ``False``) low_freq (float, optional): Low cutoff frequency for mel bins (Default: ``20.0``) min_duration (float, optional): Minimum duration of segments to process (in seconds). (Default: ``0.0``) num_mel_bins (int, optional): Number of triangular mel-frequency bins (Default: ``23``) preemphasis_coefficient (float, optional): Coefficient for use in signal preemphasis (Default: ``0.97``) raw_energy (bool, optional): If True, compute energy before preemphasis and windowing (Default: ``True``) remove_dc_offset (bool, optional): Subtract mean from waveform on each frame (Default: ``True``) round_to_power_of_two (bool, optional): If True, round window size to power of two by zero-padding input to FFT. (Default: ``True``) sample_frequency (float, optional): Waveform data sample frequency (must match the waveform file, if specified there) (Default: ``16000.0``) snip_edges (bool, optional): If True, end effects will be handled by outputting only frames that completely fit in the file, and the number of frames depends on the frame_length. If False, the number of frames depends only on the frame_shift, and we reflect the data at the ends. (Default: ``True``) subtract_mean (bool, optional): Subtract mean of each feature file [CMS]; not recommended to do it this way. (Default: ``False``) use_energy (bool, optional): Add an extra dimension with energy to the FBANK output. (Default: ``False``) use_log_fbank (bool, optional):If true, produce log-filterbank, else produce linear. (Default: ``True``) use_power (bool, optional): If true, use power, else use magnitude. (Default: ``True``) vtln_high (float, optional): High inflection point in piecewise linear VTLN warping function (if negative, offset from high-mel-freq (Default: ``-500.0``) vtln_low (float, optional): Low inflection point in piecewise linear VTLN warping function (Default: ``100.0``) vtln_warp (float, optional): Vtln warp factor (only applicable if vtln_map not specified) (Default: ``1.0``) window_type (str, optional): Type of window ('hamming'|'hanning'|'povey'|'rectangular'|'blackman') (Default: ``'povey'``) Returns: Tensor: A fbank identical to what Kaldi would output. The shape is (m, ``num_mel_bins + use_energy``) where m is calculated in _get_strided """ device, dtype = waveform.device, waveform.dtype waveform, window_shift, window_size, padded_window_size = _get_waveform_and_window_properties( waveform, channel, sample_frequency, frame_shift, frame_length, round_to_power_of_two, preemphasis_coefficient ) if len(waveform) < min_duration * sample_frequency: # signal is too short return torch.empty(0, device=device, dtype=dtype) # strided_input, size (m, padded_window_size) and signal_log_energy, size (m) strided_input, signal_log_energy = _get_window( waveform, padded_window_size, window_size, window_shift, window_type, blackman_coeff, snip_edges, raw_energy, energy_floor, dither, remove_dc_offset, preemphasis_coefficient, ) # size (m, padded_window_size // 2 + 1) spectrum = torch.fft.rfft(strided_input).abs() if use_power: spectrum = spectrum.pow(2.0) # size (num_mel_bins, padded_window_size // 2) mel_energies, _ = get_mel_banks( num_mel_bins, padded_window_size, sample_frequency, low_freq, high_freq, vtln_low, vtln_high, vtln_warp ) mel_energies = mel_energies.to(device=device, dtype=dtype) # pad right column with zeros and add dimension, size (num_mel_bins, padded_window_size // 2 + 1) mel_energies = torch.nn.functional.pad(mel_energies, (0, 1), mode="constant", value=0) # sum with mel fiterbanks over the power spectrum, size (m, num_mel_bins) mel_energies = torch.mm(spectrum, mel_energies.T) if use_log_fbank: # avoid log of zero (which should be prevented anyway by dithering) mel_energies = torch.max(mel_energies, _get_epsilon(device, dtype)).log() # if use_energy then add it as the last column for htk_compat == true else first column if use_energy: signal_log_energy = signal_log_energy.unsqueeze(1) # size (m, 1) # returns size (m, num_mel_bins + 1) if htk_compat: mel_energies = torch.cat((mel_energies, signal_log_energy), dim=1) else: mel_energies = torch.cat((signal_log_energy, mel_energies), dim=1) mel_energies = _subtract_column_mean(mel_energies, subtract_mean) return mel_energies def _get_dct_matrix(num_ceps: int, num_mel_bins: int) -> Tensor: # returns a dct matrix of size (num_mel_bins, num_ceps) # size (num_mel_bins, num_mel_bins) dct_matrix = torchaudio.functional.create_dct(num_mel_bins, num_mel_bins, "ortho") # kaldi expects the first cepstral to be weighted sum of factor sqrt(1/num_mel_bins) # this would be the first column in the dct_matrix for torchaudio as it expects a # right multiply (which would be the first column of the kaldi's dct_matrix as kaldi # expects a left multiply e.g. dct_matrix * vector). dct_matrix[:, 0] = math.sqrt(1 / float(num_mel_bins)) dct_matrix = dct_matrix[:, :num_ceps] return dct_matrix def _get_lifter_coeffs(num_ceps: int, cepstral_lifter: float) -> Tensor: # returns size (num_ceps) # Compute liftering coefficients (scaling on cepstral coeffs) # coeffs are numbered slightly differently from HTK: the zeroth index is C0, which is not affected. i = torch.arange(num_ceps) return 1.0 + 0.5 * cepstral_lifter * torch.sin(math.pi * i / cepstral_lifter) def mfcc( waveform: Tensor, blackman_coeff: float = 0.42, cepstral_lifter: float = 22.0, channel: int = -1, dither: float = 0.0, energy_floor: float = 1.0, frame_length: float = 25.0, frame_shift: float = 10.0, high_freq: float = 0.0, htk_compat: bool = False, low_freq: float = 20.0, num_ceps: int = 13, min_duration: float = 0.0, num_mel_bins: int = 23, preemphasis_coefficient: float = 0.97, raw_energy: bool = True, remove_dc_offset: bool = True, round_to_power_of_two: bool = True, sample_frequency: float = 16000.0, snip_edges: bool = True, subtract_mean: bool = False, use_energy: bool = False, vtln_high: float = -500.0, vtln_low: float = 100.0, vtln_warp: float = 1.0, window_type: str = POVEY, ) -> Tensor: r"""Create a mfcc from a raw audio signal. This matches the input/output of Kaldi's compute-mfcc-feats. Args: waveform (Tensor): Tensor of audio of size (c, n) where c is in the range [0,2) blackman_coeff (float, optional): Constant coefficient for generalized Blackman window. (Default: ``0.42``) cepstral_lifter (float, optional): Constant that controls scaling of MFCCs (Default: ``22.0``) channel (int, optional): Channel to extract (-1 -> expect mono, 0 -> left, 1 -> right) (Default: ``-1``) dither (float, optional): Dithering constant (0.0 means no dither). If you turn this off, you should set the energy_floor option, e.g. to 1.0 or 0.1 (Default: ``0.0``) energy_floor (float, optional): Floor on energy (absolute, not relative) in Spectrogram computation. Caution: this floor is applied to the zeroth component, representing the total signal energy. The floor on the individual spectrogram elements is fixed at std::numeric_limits::epsilon(). (Default: ``1.0``) frame_length (float, optional): Frame length in milliseconds (Default: ``25.0``) frame_shift (float, optional): Frame shift in milliseconds (Default: ``10.0``) high_freq (float, optional): High cutoff frequency for mel bins (if <= 0, offset from Nyquist) (Default: ``0.0``) htk_compat (bool, optional): If true, put energy last. Warning: not sufficient to get HTK compatible features (need to change other parameters). (Default: ``False``) low_freq (float, optional): Low cutoff frequency for mel bins (Default: ``20.0``) num_ceps (int, optional): Number of cepstra in MFCC computation (including C0) (Default: ``13``) min_duration (float, optional): Minimum duration of segments to process (in seconds). (Default: ``0.0``) num_mel_bins (int, optional): Number of triangular mel-frequency bins (Default: ``23``) preemphasis_coefficient (float, optional): Coefficient for use in signal preemphasis (Default: ``0.97``) raw_energy (bool, optional): If True, compute energy before preemphasis and windowing (Default: ``True``) remove_dc_offset (bool, optional): Subtract mean from waveform on each frame (Default: ``True``) round_to_power_of_two (bool, optional): If True, round window size to power of two by zero-padding input to FFT. (Default: ``True``) sample_frequency (float, optional): Waveform data sample frequency (must match the waveform file, if specified there) (Default: ``16000.0``) snip_edges (bool, optional): If True, end effects will be handled by outputting only frames that completely fit in the file, and the number of frames depends on the frame_length. If False, the number of frames depends only on the frame_shift, and we reflect the data at the ends. (Default: ``True``) subtract_mean (bool, optional): Subtract mean of each feature file [CMS]; not recommended to do it this way. (Default: ``False``) use_energy (bool, optional): Add an extra dimension with energy to the FBANK output. (Default: ``False``) vtln_high (float, optional): High inflection point in piecewise linear VTLN warping function (if negative, offset from high-mel-freq (Default: ``-500.0``) vtln_low (float, optional): Low inflection point in piecewise linear VTLN warping function (Default: ``100.0``) vtln_warp (float, optional): Vtln warp factor (only applicable if vtln_map not specified) (Default: ``1.0``) window_type (str, optional): Type of window ('hamming'|'hanning'|'povey'|'rectangular'|'blackman') (Default: ``"povey"``) Returns: Tensor: A mfcc identical to what Kaldi would output. The shape is (m, ``num_ceps``) where m is calculated in _get_strided """ assert num_ceps <= num_mel_bins, "num_ceps cannot be larger than num_mel_bins: %d vs %d" % (num_ceps, num_mel_bins) device, dtype = waveform.device, waveform.dtype # The mel_energies should not be squared (use_power=True), not have mean subtracted # (subtract_mean=False), and use log (use_log_fbank=True). # size (m, num_mel_bins + use_energy) feature = fbank( waveform=waveform, blackman_coeff=blackman_coeff, channel=channel, dither=dither, energy_floor=energy_floor, frame_length=frame_length, frame_shift=frame_shift, high_freq=high_freq, htk_compat=htk_compat, low_freq=low_freq, min_duration=min_duration, num_mel_bins=num_mel_bins, preemphasis_coefficient=preemphasis_coefficient, raw_energy=raw_energy, remove_dc_offset=remove_dc_offset, round_to_power_of_two=round_to_power_of_two, sample_frequency=sample_frequency, snip_edges=snip_edges, subtract_mean=False, use_energy=use_energy, use_log_fbank=True, use_power=True, vtln_high=vtln_high, vtln_low=vtln_low, vtln_warp=vtln_warp, window_type=window_type, ) if use_energy: # size (m) signal_log_energy = feature[:, num_mel_bins if htk_compat else 0] # offset is 0 if htk_compat==True else 1 mel_offset = int(not htk_compat) feature = feature[:, mel_offset : (num_mel_bins + mel_offset)] # size (num_mel_bins, num_ceps) dct_matrix = _get_dct_matrix(num_ceps, num_mel_bins).to(dtype=dtype, device=device) # size (m, num_ceps) feature = feature.matmul(dct_matrix) if cepstral_lifter != 0.0: # size (1, num_ceps) lifter_coeffs = _get_lifter_coeffs(num_ceps, cepstral_lifter).unsqueeze(0) feature *= lifter_coeffs.to(device=device, dtype=dtype) # if use_energy then replace the last column for htk_compat == true else first column if use_energy: feature[:, 0] = signal_log_energy if htk_compat: energy = feature[:, 0].unsqueeze(1) # size (m, 1) feature = feature[:, 1:] # size (m, num_ceps - 1) if not use_energy: # scale on C0 (actually removing a scale we previously added that's # part of one common definition of the cosine transform.) energy *= math.sqrt(2) feature = torch.cat((feature, energy), dim=1) feature = _subtract_column_mean(feature, subtract_mean) return feature