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| import numpy as np |
| import torch |
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| def gaussian_normalize_mel_channel(mel, mu, sigma): |
| """ |
| Shift to Standorm Normal Distribution |
| |
| Args: |
| mel: (n_mels, frame_len) |
| mu: (n_mels,), mean value |
| sigma: (n_mels,), sd value |
| Return: |
| Tensor like mel |
| """ |
| mu = np.expand_dims(mu, -1) |
| sigma = np.expand_dims(sigma, -1) |
| return (mel - mu) / sigma |
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| def de_gaussian_normalize_mel_channel(mel, mu, sigma): |
| """ |
| |
| Args: |
| mel: (n_mels, frame_len) |
| mu: (n_mels,), mean value |
| sigma: (n_mels,), sd value |
| Return: |
| Tensor like mel |
| """ |
| mu = np.expand_dims(mu, -1) |
| sigma = np.expand_dims(sigma, -1) |
| return sigma * mel + mu |
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| def decompress(audio_compressed, bits): |
| mu = 2**bits - 1 |
| audio = np.sign(audio_compressed) / mu * ((1 + mu) ** np.abs(audio_compressed) - 1) |
| return audio |
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| def compress(audio, bits): |
| mu = 2**bits - 1 |
| audio_compressed = np.sign(audio) * np.log(1 + mu * np.abs(audio)) / np.log(mu + 1) |
| return audio_compressed |
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| def label_to_audio(quant, bits): |
| classes = 2**bits |
| audio = 2 * quant / (classes - 1.0) - 1.0 |
| return audio |
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| def audio_to_label(audio, bits): |
| """Normalized audio data tensor to digit array |
| |
| Args: |
| audio (tensor): audio data |
| bits (int): data bits |
| |
| Returns: |
| array<int>: digit array of audio data |
| """ |
| classes = 2**bits |
| |
| bins = np.linspace(-1, 1, classes) |
| |
| quant = np.digitize(audio, bins) - 1 |
| return quant |
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| def label_to_onehot(x, bits): |
| """Converts a class vector (integers) to binary class matrix. |
| Args: |
| x: class vector to be converted into a matrix |
| (integers from 0 to num_classes). |
| num_classes: total number of classes. |
| Returns: |
| A binary matrix representation of the input. The classes axis |
| is placed last. |
| """ |
| classes = 2**bits |
|
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| result = torch.zeros((x.shape[0], classes), dtype=torch.float32) |
| for i in range(x.shape[0]): |
| result[i, x[i]] = 1 |
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| output_shape = x.shape + (classes,) |
| output = torch.reshape(result, output_shape) |
| return output |
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