Pytorch implementation of neural homomorphic vocoder
Project description
neural-homomorphic-vocoder
A neural vocoder based on source-filter model called neural homomorphic vocoder
Install
pip install neural-homomorphic-vocoder
Usage
Usage for NeuralHomomorphicVocoder class
- Input
- z: Gaussian noise
- x: mel-filterbank
- cf0: continuous f0
- uv: u/v symbol
import torch
from nhv import NeuralHomomorphicVocoder
net = NeuralHomomorphicVocoder(
fs=24000, # sampling frequency
fft_size=1024, # size for impuluse responce of LTV
hop_size=256, # hop size in each mel-filterbank frame
in_channels=80, # input channels (i.e., dimension of mel-filterbank)
conv_channels=256, # channel size of LTV filter
ccep_size=222, # output ccep size of LTV filter
out_channels=1, # output size of network
kernel_size=3, # kernel size of LTV filter
dilation_size=1, # dilation size of LTV filter
group_size=8, # group size of LTV filter
fmin=80, # min freq. for melspc
fmax=7600, # max freq. for melspc (recommend to use full-band)
roll_size=24, # frame size to get median to estimate logspc from melspc
n_ltv_layers=3, # # layers for LTV ccep generator
n_postfilter_layers=4, # # layers for output postfilter
n_ltv_postfilter_layers=1, # # layers for LTV postfilter (if ddsconv)
harmonic_amp=0.1, # amplitude of sinusoidals
noise_std=0.03 # standard deviation of Gaussian noise
use_causal=False, # use causal conv LTV filter
use_reference_mag=False, # use reference logspc calculated from melspc
use_tanh=False, # apply tanh to output else linear
use_uvmask=False, # apply uv-based mask to harmonic
use_weight_norm=True, # apply weight norm to conv1d layer
conv_type="original" # LTV generator network type ["original", "ddsconv"]
postfilter_type=None, # postfilter network type ["None", "normal", "ddsconv"]
ltv_postfilter_type=None, # LTV postfilter network type \
# ["None", "normal", "ddsconv"]
ltv_postfilter_kernel_size=128 # kernel_size for LTV postfilter
scaler_file=None # path to .pkl for internal scaling of melspc
# (dict["mlfb"] = sklearn.preprocessing.StandardScaler)
conv_type = "original"
postfilter_type = "ddsconv"
ltv_postfilter_type = "conv"
ltv_postfilter_kernel_size = 128
scaler_file = None
)
B, T, D = 3, 100, in_channels # batch_size, n_frames, n_mels
z = torch.randn(B, 1, T * hop_size)
x = torch.randn(B, T, D)
cf0 = torch.randn(B, T, 1)
uv = torch.randn(B, T, 1)
y = net(z, torch.cat([x, cf0, uv], dim=-1)) # z: (B, 1, T * hop_size), c: (B, D+2, T)
y = net._forward(z, x, cf0, uv)
y = net.inference(c) # for evaluation
Features
- Train using kan-bayashi/ParallelWaveGAN with continuous F0 and uv symbols
- Support depth-wise separable convolution
- Support incremental inference
References
@article{liu20,
title={Neural Homomorphic Vocoder},
author={Z.~Liu and K.~Chen and K.~Yu},
journal={Proc. Interspeech 2020},
pages={240--244},
year={2020}
}
Project details
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Close
Hashes for neural-homomorphic-vocoder-0.0.13.tar.gz
Algorithm | Hash digest | |
---|---|---|
SHA256 | d84ff4e9756b580eb88ae94259d141960550f10d278a8843cab805889e042754 |
|
MD5 | d2888d5393f94af9acb85953827d6e26 |
|
BLAKE2b-256 | 8564708c47694412ba2330da902574aa1c3f0178389b7d28c8a6c4dc4dde7100 |
Close
Hashes for neural_homomorphic_vocoder-0.0.13-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | efca0827a6ed9498326400e2d303a7b7480e07f5c168ea843b4746c12ec150d5 |
|
MD5 | 69a67a9fd9764bdea04a72713b6c54c6 |
|
BLAKE2b-256 | 7454c54011c4d484a6ff4e0885106b1b24e5b70b711609cd89bc257bdec92bfb |