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Showing content from https://docs.pytorch.org/docs/main/generated/torch.stft.html below:

torch.stft — PyTorch main documentation

Short-time Fourier transform (STFT).

Warning

From version 1.8.0, return_complex must always be given explicitly for real inputs and return_complex=False has been deprecated. Strongly prefer return_complex=True as in a future pytorch release, this function will only return complex tensors.

Note that torch.view_as_real() can be used to recover a real tensor with an extra last dimension for real and imaginary components.

Warning

From version 2.1, a warning will be provided if a window is not specified. In a future release, this attribute will be required. Not providing a window currently defaults to using a rectangular window, which may result in undesirable artifacts. Consider using tapered windows, such as torch.hann_window().

The STFT computes the Fourier transform of short overlapping windows of the input. This giving frequency components of the signal as they change over time. The interface of this function is modeled after (but not a drop-in replacement for) librosa stft function.

Ignoring the optional batch dimension, this method computes the following expression:

X [ ω , m ] = ∑ k = 0 win_length-1 window [ k ]  input [ m × hop_length + k ]   exp ⁡ ( − j 2 π ⋅ ω k n_fft ) , X[\omega, m] = \sum_{k = 0}^{\text{win\_length-1}}% \text{window}[k]\ \text{input}[m \times \text{hop\_length} + k]\ % \exp\left(- j \frac{2 \pi \cdot \omega k}{\text{n\_fft}}\right), X[ω,m]=k=0win_length-1window[k] input[m×hop_length+k] exp(jn_fft2πωk),

where m m m is the index of the sliding window, and ω \omega ω is the frequency 0 ≤ ω < n_fft 0 \leq \omega < \text{n\_fft} 0ω<n_fft for onesided=False, or 0 ≤ ω < ⌊ n_fft / 2 ⌋ + 1 0 \leq \omega < \lfloor \text{n\_fft} / 2 \rfloor + 1 0ω<n_fft/2+1 for onesided=True.

Returns either a complex tensor of size ( ∗ × N × T ) (* \times N \times T) (×N×T) if return_complex is true, or a real tensor of size ( ∗ × N × T × 2 ) (* \times N \times T \times 2) (×N×T×2). Where ∗ * is the optional batch size of input, N N N is the number of frequencies where STFT is applied and T T T is the total number of frames used.

Warning

This function changed signature at version 0.4.1. Calling with the previous signature may cause error or return incorrect result.

Parameters
Returns
A tensor containing the STFT result with shape (B?, N, T, C?) where
  • B? is an optional batch dimension from the input.

  • N is the number of frequency samples, (n_fft // 2) + 1 for onesided=True, or otherwise n_fft.

  • T is the number of frames, 1 + L // hop_length for center=True, or 1 + (L - n_fft) // hop_length otherwise.

  • C? is an optional length-2 dimension of real and imaginary components, present when return_complex=False.

Return type

Tensor


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