tts-service / rvc /infer /infer.py
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import os
import sys
import time
import torch
import librosa
import logging
import traceback
import numpy as np
import soundfile as sf
import noisereduce as nr
from pedalboard import (
Pedalboard,
)
from pedalboard_native import (
Chorus,
Distortion,
Reverb,
PitchShift,
Limiter,
Gain,
Bitcrush,
Clipping,
Compressor,
Delay,
)
now_dir = os.getcwd()
sys.path.append(now_dir)
from rvc.infer.pipeline import Pipeline as VC
from rvc.lib.utils import load_audio_infer, load_embedding
from rvc.lib.tools.split_audio import process_audio, merge_audio
from rvc.lib.algorithm.synthesizers import Synthesizer
from rvc.configs.config import Config
logging.getLogger("httpx").setLevel(logging.WARNING)
logging.getLogger("httpcore").setLevel(logging.WARNING)
logging.getLogger("faiss").setLevel(logging.WARNING)
logging.getLogger("faiss.loader").setLevel(logging.WARNING)
class VoiceConverter:
"""
A class for performing voice conversion using the Retrieval-Based Voice Conversion (RVC) method.
"""
def __init__(self):
"""
Initializes the VoiceConverter with default configuration, and sets up models and parameters.
"""
self.config = Config() # Load RVC configuration
self.hubert_model = (
None # Initialize the Hubert model (for embedding extraction)
)
self.last_embedder_model = None # Last used embedder model
self.tgt_sr = None # Target sampling rate for the output audio
self.net_g = None # Generator network for voice conversion
self.vc = None # Voice conversion pipeline instance
self.cpt = None # Checkpoint for loading model weights
self.version = None # Model version
self.use_f0 = None # Whether the model uses F0
self.loaded_model = None
def load_hubert(self, embedder_model: str, embedder_model_custom: str | None = None):
"""
Loads the HuBERT model for speaker embedding extraction.
Args:
embedder_model (str): Path to the pre-trained HuBERT model.
embedder_model_custom (str): Path to the custom HuBERT model.
"""
self.hubert_model = load_embedding(embedder_model, embedder_model_custom)
self.hubert_model.to(self.config.device)
self.hubert_model = (
self.hubert_model.half()
if self.config.is_half
else self.hubert_model.float()
)
self.hubert_model.eval()
@staticmethod
def remove_audio_noise(data, sr, reduction_strength=0.7):
"""
Removes noise from an audio file using the NoiseReduce library.
Args:
data (numpy.ndarray): The audio data as a NumPy array.
sr (int): The sample rate of the audio data.
reduction_strength (float): Strength of the noise reduction. Default is 0.7.
"""
try:
reduced_noise = nr.reduce_noise(
y=data, sr=sr, prop_decrease=reduction_strength
)
return reduced_noise
except Exception as error:
print(f"An error occurred removing audio noise: {error}")
return None
@staticmethod
def convert_audio_format(input_path, output_path, output_format):
"""
Converts an audio file to a specified output format.
Args:
input_path (str): Path to the input audio file.
output_path (str): Path to the output audio file.
output_format (str): Desired audio format (e.g., "WAV", "MP3").
"""
try:
if output_format != "WAV":
print(f"Converting audio to {output_format} format...")
audio, sample_rate = librosa.load(input_path, sr=None)
common_sample_rates = [
8000,
11025,
12000,
16000,
22050,
24000,
32000,
44100,
48000,
]
target_sr = min(common_sample_rates, key=lambda x: abs(x - sample_rate))
audio = librosa.resample(
audio, orig_sr=sample_rate, target_sr=target_sr
)
sf.write(output_path, audio, target_sr, format=output_format.lower())
return output_path
except Exception as error:
print(f"An error occurred converting the audio format: {error}")
@staticmethod
def post_process_audio(
audio_input,
sample_rate,
**kwargs,
):
board = Pedalboard()
if kwargs.get("reverb", False):
reverb = Reverb(
room_size=kwargs.get("reverb_room_size", 0.5),
damping=kwargs.get("reverb_damping", 0.5),
wet_level=kwargs.get("reverb_wet_level", 0.33),
dry_level=kwargs.get("reverb_dry_level", 0.4),
width=kwargs.get("reverb_width", 1.0),
freeze_mode=kwargs.get("reverb_freeze_mode", 0),
)
board.append(reverb)
if kwargs.get("pitch_shift", False):
pitch_shift = PitchShift(semitones=kwargs.get("pitch_shift_semitones", 0))
board.append(pitch_shift)
if kwargs.get("limiter", False):
limiter = Limiter(
threshold_db=kwargs.get("limiter_threshold", -6),
release_ms=kwargs.get("limiter_release", 0.05),
)
board.append(limiter)
if kwargs.get("gain", False):
gain = Gain(gain_db=kwargs.get("gain_db", 0))
board.append(gain)
if kwargs.get("distortion", False):
distortion = Distortion(drive_db=kwargs.get("distortion_gain", 25))
board.append(distortion)
if kwargs.get("chorus", False):
chorus = Chorus(
rate_hz=kwargs.get("chorus_rate", 1.0),
depth=kwargs.get("chorus_depth", 0.25),
centre_delay_ms=kwargs.get("chorus_delay", 7),
feedback=kwargs.get("chorus_feedback", 0.0),
mix=kwargs.get("chorus_mix", 0.5),
)
board.append(chorus)
if kwargs.get("bitcrush", False):
bitcrush = Bitcrush(bit_depth=kwargs.get("bitcrush_bit_depth", 8))
board.append(bitcrush)
if kwargs.get("clipping", False):
clipping = Clipping(threshold_db=kwargs.get("clipping_threshold", 0))
board.append(clipping)
if kwargs.get("compressor", False):
compressor = Compressor(
threshold_db=kwargs.get("compressor_threshold", 0),
ratio=kwargs.get("compressor_ratio", 1),
attack_ms=kwargs.get("compressor_attack", 1.0),
release_ms=kwargs.get("compressor_release", 100),
)
board.append(compressor)
if kwargs.get("delay", False):
delay = Delay(
delay_seconds=kwargs.get("delay_seconds", 0.5),
feedback=kwargs.get("delay_feedback", 0.0),
mix=kwargs.get("delay_mix", 0.5),
)
board.append(delay)
return board(audio_input, sample_rate)
def convert_audio(
self,
audio_input_path: str,
audio_output_path: str,
model_path: str,
index_path: str,
pitch: int = 0,
f0_file: str | None = None,
f0_method: str = "rmvpe",
index_rate: float = 0.75,
volume_envelope: float = 1,
protect: float = 0.5,
hop_length: int = 128,
split_audio: bool = False,
f0_autotune: bool = False,
f0_autotune_strength: float = 1,
filter_radius: int = 3,
embedder_model: str = "contentvec",
embedder_model_custom: str | None = None,
clean_audio: bool = False,
clean_strength: float = 0.5,
export_format: str = "WAV",
upscale_audio: bool = False,
post_process: bool = False,
resample_sr: int = 0,
sid: int = 0,
**kwargs,
):
"""
Performs voice conversion on the input audio.
Args:
pitch (int): Key for F0 up-sampling.
filter_radius (int): Radius for filtering.
index_rate (float): Rate for index matching.
volume_envelope (int): RMS mix rate.
protect (float): Protection rate for certain audio segments.
hop_length (int): Hop length for audio processing.
f0_method (str): Method for F0 extraction.
audio_input_path (str): Path to the input audio file.
audio_output_path (str): Path to the output audio file.
model_path (str): Path to the voice conversion model.
index_path (str): Path to the index file.
split_audio (bool): Whether to split the audio for processing.
f0_autotune (bool): Whether to use F0 autotune.
clean_audio (bool): Whether to clean the audio.
clean_strength (float): Strength of the audio cleaning.
export_format (str): Format for exporting the audio.
upscale_audio (bool): Whether to upscale the audio.
f0_file (str): Path to the F0 file.
embedder_model (str): Path to the embedder model.
embedder_model_custom (str): Path to the custom embedder model.
resample_sr (int, optional): Resample sampling rate. Default is 0.
sid (int, optional): Speaker ID. Default is 0.
**kwargs: Additional keyword arguments.
"""
self.get_vc(model_path, sid)
try:
start_time = time.time()
print(f"Converting audio '{audio_input_path}'...")
if upscale_audio == True:
from audio_upscaler import upscale
upscale(audio_input_path, audio_input_path)
audio = load_audio_infer(
audio_input_path,
16000,
**kwargs,
)
audio_max = np.abs(audio).max() / 0.95
if audio_max > 1:
audio /= audio_max
if not self.hubert_model or embedder_model != self.last_embedder_model:
self.load_hubert(embedder_model, embedder_model_custom)
self.last_embedder_model = embedder_model
file_index = (
index_path.strip()
.strip('"')
.strip("\n")
.strip('"')
.strip()
.replace("trained", "added")
)
if self.tgt_sr != resample_sr >= 16000:
self.tgt_sr = resample_sr
if split_audio:
chunks, intervals = process_audio(audio, 16000)
print(f"Audio split into {len(chunks)} chunks for processing.")
else:
chunks = []
chunks.append(audio)
converted_chunks = []
for c in chunks:
if self.vc is None:
raise Exception("Voice conversion model not loaded.")
audio_opt = self.vc.pipeline(
model=self.hubert_model,
net_g=self.net_g,
sid=sid,
audio=c,
pitch=pitch,
f0_method=f0_method,
file_index=file_index,
index_rate=index_rate,
pitch_guidance=self.use_f0,
filter_radius=filter_radius,
volume_envelope=volume_envelope,
version=self.version,
protect=protect,
hop_length=hop_length,
f0_autotune=f0_autotune,
f0_autotune_strength=f0_autotune_strength,
f0_file=f0_file,
)
converted_chunks.append(audio_opt)
if split_audio:
print(f"Converted audio chunk {len(converted_chunks)}")
if split_audio:
audio_opt = merge_audio(converted_chunks, intervals, 16000, self.tgt_sr)
else:
audio_opt = converted_chunks[0]
if clean_audio:
cleaned_audio = self.remove_audio_noise(
audio_opt, self.tgt_sr, clean_strength
)
if cleaned_audio is not None:
audio_opt = cleaned_audio
if post_process:
audio_opt = self.post_process_audio(
audio_input=audio_opt,
sample_rate=self.tgt_sr,
**kwargs,
)
sf.write(audio_output_path, audio_opt, self.tgt_sr, format="WAV")
output_path_format = audio_output_path.replace(
".wav", f".{export_format.lower()}"
)
audio_output_path = self.convert_audio_format(
audio_output_path, output_path_format, export_format
)
elapsed_time = time.time() - start_time
print(
f"Conversion completed at '{audio_output_path}' in {elapsed_time:.2f} seconds."
)
except Exception as error:
print(f"An error occurred during audio conversion: {error}")
print(traceback.format_exc())
def get_vc(self, weight_root, sid):
"""
Loads the voice conversion model and sets up the pipeline.
Args:
weight_root (str): Path to the model weights.
sid (int): Speaker ID.
"""
if sid == "" or sid == []:
self.cleanup_model()
if torch.cuda.is_available():
torch.cuda.empty_cache()
if not self.loaded_model or self.loaded_model != weight_root:
self.load_model(weight_root)
if self.cpt is not None:
self.setup_network()
self.setup_vc_instance()
self.loaded_model = weight_root
def cleanup_model(self):
"""
Cleans up the model and releases resources.
"""
if self.hubert_model is not None:
del self.net_g, self.vc, self.hubert_model, self.tgt_sr
self.hubert_model = self.net_g = self.vc = self.tgt_sr = None
if torch.cuda.is_available():
torch.cuda.empty_cache()
del self.net_g, self.cpt
if torch.cuda.is_available():
torch.cuda.empty_cache()
self.cpt = None
def load_model(self, weight_root):
"""
Loads the model weights from the specified path.
Args:
weight_root (str): Path to the model weights.
"""
self.cpt = (
torch.load(weight_root, map_location="cpu")
if os.path.isfile(weight_root)
else None
)
def setup_network(self):
"""
Sets up the network configuration based on the loaded checkpoint.
"""
if self.cpt is not None:
self.tgt_sr = self.cpt["config"][-1]
self.cpt["config"][-3] = self.cpt["weight"]["emb_g.weight"].shape[0]
self.use_f0 = self.cpt.get("f0", 1)
self.version = self.cpt.get("version", "v1")
self.text_enc_hidden_dim = 768 if self.version == "v2" else 256
self.net_g = Synthesizer(
*self.cpt["config"],
use_f0=self.use_f0,
text_enc_hidden_dim=self.text_enc_hidden_dim,
is_half=self.config.is_half,
)
del self.net_g.enc_q
self.net_g.load_state_dict(self.cpt["weight"], strict=False)
self.net_g.eval().to(self.config.device)
self.net_g = (
self.net_g.half() if self.config.is_half else self.net_g.float()
)
def setup_vc_instance(self):
"""
Sets up the voice conversion pipeline instance based on the target sampling rate and configuration.
"""
if self.cpt is not None:
self.vc = VC(self.tgt_sr, self.config)