Voice-Changer / app_multi.py
kevinwang676's picture
Update app_multi.py
1387bb0
raw
history blame
26.2 kB
from typing import Union
from argparse import ArgumentParser
from pathlib import Path
import subprocess
import librosa
import os
import time
import random
import matplotlib.pyplot as plt
import numpy as np
from PIL import Image, ImageDraw, ImageFont
from moviepy.editor import *
from moviepy.video.io.VideoFileClip import VideoFileClip
import asyncio
import json
import hashlib
from os import path, getenv
from pydub import AudioSegment
import gradio as gr
import torch
import edge_tts
from datetime import datetime
from scipy.io.wavfile import write
import config
import util
from infer_pack.models import (
SynthesizerTrnMs768NSFsid,
SynthesizerTrnMs768NSFsid_nono
)
from vc_infer_pipeline import VC
# Reference: https://huggingface.co/spaces/zomehwh/rvc-models/blob/main/app.py#L21 # noqa
in_hf_space = getenv('SYSTEM') == 'spaces'
high_quality = True
# Argument parsing
arg_parser = ArgumentParser()
arg_parser.add_argument(
'--hubert',
default=getenv('RVC_HUBERT', 'hubert_base.pt'),
help='path to hubert base model (default: hubert_base.pt)'
)
arg_parser.add_argument(
'--config',
default=getenv('RVC_MULTI_CFG', 'multi_config.json'),
help='path to config file (default: multi_config.json)'
)
arg_parser.add_argument(
'--api',
action='store_true',
help='enable api endpoint'
)
arg_parser.add_argument(
'--cache-examples',
action='store_true',
help='enable example caching, please remember delete gradio_cached_examples folder when example config has been modified' # noqa
)
args = arg_parser.parse_args()
app_css = '''
#model_info img {
max-width: 100px;
max-height: 100px;
float: right;
}
#model_info p {
margin: unset;
}
'''
app = gr.Blocks(
theme=gr.themes.Soft(primary_hue="orange", secondary_hue="slate"),
css=app_css,
analytics_enabled=False
)
# Load hubert model
hubert_model = util.load_hubert_model(config.device, args.hubert)
hubert_model.eval()
# Load models
multi_cfg = json.load(open(args.config, 'r'))
loaded_models = []
for model_name in multi_cfg.get('models'):
print(f'Loading model: {model_name}')
# Load model info
model_info = json.load(
open(path.join('model', model_name, 'config.json'), 'r')
)
# Load RVC checkpoint
cpt = torch.load(
path.join('model', model_name, model_info['model']),
map_location='cpu'
)
tgt_sr = cpt['config'][-1]
cpt['config'][-3] = cpt['weight']['emb_g.weight'].shape[0] # n_spk
if_f0 = cpt.get('f0', 1)
net_g: Union[SynthesizerTrnMs768NSFsid, SynthesizerTrnMs768NSFsid_nono]
if if_f0 == 1:
net_g = SynthesizerTrnMs768NSFsid(
*cpt['config'],
is_half=util.is_half(config.device)
)
else:
net_g = SynthesizerTrnMs768NSFsid_nono(*cpt['config'])
del net_g.enc_q
# According to original code, this thing seems necessary.
print(net_g.load_state_dict(cpt['weight'], strict=False))
net_g.eval().to(config.device)
net_g = net_g.half() if util.is_half(config.device) else net_g.float()
vc = VC(tgt_sr, config)
loaded_models.append(dict(
name=model_name,
metadata=model_info,
vc=vc,
net_g=net_g,
if_f0=if_f0,
target_sr=tgt_sr
))
print(f'Models loaded: {len(loaded_models)}')
# Edge TTS speakers
tts_speakers_list = asyncio.get_event_loop().run_until_complete(edge_tts.list_voices()) # noqa
# Make MV
def make_bars_image(height_values, index, new_height):
# Define the size of the image
width = 512
height = new_height
# Create a new image with a transparent background
image = Image.new('RGBA', (width, height), color=(0, 0, 0, 0))
# Get the image drawing context
draw = ImageDraw.Draw(image)
# Define the rectangle width and spacing
rect_width = 2
spacing = 2
# Define the list of height values for the rectangles
#height_values = [20, 40, 60, 80, 100, 80, 60, 40]
num_bars = len(height_values)
# Calculate the total width of the rectangles and the spacing
total_width = num_bars * rect_width + (num_bars - 1) * spacing
# Calculate the starting position for the first rectangle
start_x = int((width - total_width) / 2)
# Define the buffer size
buffer_size = 80
# Draw the rectangles from left to right
x = start_x
for i, height in enumerate(height_values):
# Define the rectangle coordinates
y0 = buffer_size
y1 = height + buffer_size
x0 = x
x1 = x + rect_width
# Draw the rectangle
draw.rectangle([x0, y0, x1, y1], fill='white')
# Move to the next rectangle position
if i < num_bars - 1:
x += rect_width + spacing
# Rotate the image by 180 degrees
image = image.rotate(180)
# Mirror the image
image = image.transpose(Image.FLIP_LEFT_RIGHT)
# Save the image
image.save('audio_bars_'+ str(index) + '.png')
return 'audio_bars_'+ str(index) + '.png'
def db_to_height(db_value):
# Scale the dB value to a range between 0 and 1
scaled_value = (db_value + 80) / 80
# Convert the scaled value to a height between 0 and 100
height = scaled_value * 50
return height
def infer(title, audio_in, image_in):
# Load the audio file
audio_path = audio_in
audio_data, sr = librosa.load(audio_path)
# Get the duration in seconds
duration = librosa.get_duration(y=audio_data, sr=sr)
# Extract the audio data for the desired time
start_time = 0 # start time in seconds
end_time = duration # end time in seconds
start_index = int(start_time * sr)
end_index = int(end_time * sr)
audio_data = audio_data[start_index:end_index]
# Compute the short-time Fourier transform
hop_length = 512
stft = librosa.stft(audio_data, hop_length=hop_length)
spectrogram = librosa.amplitude_to_db(np.abs(stft), ref=np.max)
# Get the frequency values
freqs = librosa.fft_frequencies(sr=sr, n_fft=stft.shape[0])
# Select the indices of the frequency values that correspond to the desired frequencies
n_freqs = 114
freq_indices = np.linspace(0, len(freqs) - 1, n_freqs, dtype=int)
# Extract the dB values for the desired frequencies
db_values = []
for i in range(spectrogram.shape[1]):
db_values.append(list(zip(freqs[freq_indices], spectrogram[freq_indices, i])))
# Print the dB values for the first time frame
print(db_values[0])
proportional_values = []
for frame in db_values:
proportional_frame = [db_to_height(db) for f, db in frame]
proportional_values.append(proportional_frame)
print(proportional_values[0])
print("AUDIO CHUNK: " + str(len(proportional_values)))
# Open the background image
background_image = Image.open(image_in)
# Resize the image while keeping its aspect ratio
bg_width, bg_height = background_image.size
aspect_ratio = bg_width / bg_height
new_width = 512
new_height = int(new_width / aspect_ratio)
resized_bg = background_image.resize((new_width, new_height))
# Apply black cache for better visibility of the white text
bg_cache = Image.open('black_cache.png')
resized_bg.paste(bg_cache, (0, resized_bg.height - bg_cache.height), mask=bg_cache)
# Create a new ImageDraw object
draw = ImageDraw.Draw(resized_bg)
# Define the text to be added
text = title
font = ImageFont.truetype("Lato-Regular.ttf", 16)
text_color = (255, 255, 255) # white color
# Calculate the position of the text
text_width, text_height = draw.textsize(text, font=font)
x = 30
y = new_height - 70
# Draw the text on the image
draw.text((x, y), text, fill=text_color, font=font)
# Save the resized image
resized_bg.save('resized_background.jpg')
generated_frames = []
for i, frame in enumerate(proportional_values):
bars_img = make_bars_image(frame, i, new_height)
bars_img = Image.open(bars_img)
# Paste the audio bars image on top of the background image
fresh_bg = Image.open('resized_background.jpg')
fresh_bg.paste(bars_img, (0, 0), mask=bars_img)
# Save the image
fresh_bg.save('audio_bars_with_bg' + str(i) + '.jpg')
generated_frames.append('audio_bars_with_bg' + str(i) + '.jpg')
print(generated_frames)
# Create a video clip from the images
clip = ImageSequenceClip(generated_frames, fps=len(generated_frames)/(end_time-start_time))
audio_clip = AudioFileClip(audio_in)
clip = clip.set_audio(audio_clip)
# Set the output codec
codec = 'libx264'
audio_codec = 'aac'
# Save the video to a file
clip.write_videofile("my_video.mp4", codec=codec, audio_codec=audio_codec)
retimed_clip = VideoFileClip("my_video.mp4")
# Set the desired frame rate
new_fps = 25
# Create a new clip with the new frame rate
new_clip = retimed_clip.set_fps(new_fps)
# Save the new clip as a new video file
new_clip.write_videofile("my_video_retimed.mp4", codec=codec, audio_codec=audio_codec)
return "my_video_retimed.mp4"
# mix vocal and non-vocal
def mix(audio1, audio2):
sound1 = AudioSegment.from_file(audio1)
sound2 = AudioSegment.from_file(audio2)
length = len(sound1)
mixed = sound1[:length].overlay(sound2)
mixed.export("song.wav", format="wav")
return "song.wav"
# Bilibili
def youtube_downloader(
video_identifier,
start_time,
end_time,
output_filename="track.wav",
num_attempts=5,
url_base="",
quiet=False,
force=True,
):
output_path = Path(output_filename)
if output_path.exists():
if not force:
return output_path
else:
output_path.unlink()
quiet = "--quiet --no-warnings" if quiet else ""
command = f"""
yt-dlp {quiet} -x --audio-format wav -f bestaudio -o "{output_filename}" --download-sections "*{start_time}-{end_time}" "{url_base}{video_identifier}" # noqa: E501
""".strip()
attempts = 0
while True:
try:
_ = subprocess.check_output(command, shell=True, stderr=subprocess.STDOUT)
except subprocess.CalledProcessError:
attempts += 1
if attempts == num_attempts:
return None
else:
break
if output_path.exists():
return output_path
else:
return None
def audio_separated(audio_input, progress=gr.Progress()):
# start progress
progress(progress=0, desc="Starting...")
time.sleep(0.1)
# check file input
if audio_input is None:
# show progress
for i in progress.tqdm(range(100), desc="Please wait..."):
time.sleep(0.01)
return (None, None, 'Please input audio.')
# create filename
filename = str(random.randint(10000,99999))+datetime.now().strftime("%d%m%Y%H%M%S")
# progress
progress(progress=0.10, desc="Please wait...")
# make dir output
os.makedirs("output", exist_ok=True)
# progress
progress(progress=0.20, desc="Please wait...")
# write
if high_quality:
write(filename+".wav", audio_input[0], audio_input[1])
else:
write(filename+".mp3", audio_input[0], audio_input[1])
# progress
progress(progress=0.50, desc="Please wait...")
# demucs process
if high_quality:
command_demucs = "python3 -m demucs --two-stems=vocals -d cpu "+filename+".wav -o output"
else:
command_demucs = "python3 -m demucs --two-stems=vocals --mp3 --mp3-bitrate 128 -d cpu "+filename+".mp3 -o output"
os.system(command_demucs)
# progress
progress(progress=0.70, desc="Please wait...")
# remove file audio
if high_quality:
command_delete = "rm -v ./"+filename+".wav"
else:
command_delete = "rm -v ./"+filename+".mp3"
os.system(command_delete)
# progress
progress(progress=0.80, desc="Please wait...")
# progress
for i in progress.tqdm(range(80,100), desc="Please wait..."):
time.sleep(0.1)
if high_quality:
return "./output/htdemucs/"+filename+"/vocals.wav","./output/htdemucs/"+filename+"/no_vocals.wav","Successfully..."
else:
return "./output/htdemucs/"+filename+"/vocals.mp3","./output/htdemucs/"+filename+"/no_vocals.mp3","Successfully..."
# https://github.com/fumiama/Retrieval-based-Voice-Conversion-WebUI/blob/main/infer-web.py#L118 # noqa
def vc_func(
input_audio, model_index, pitch_adjust, f0_method, feat_ratio,
filter_radius, rms_mix_rate, resample_option
):
if input_audio is None:
return (None, 'Please provide input audio.')
if model_index is None:
return (None, 'Please select a model.')
model = loaded_models[model_index]
# Reference: so-vits
(audio_samp, audio_npy) = input_audio
# https://huggingface.co/spaces/zomehwh/rvc-models/blob/main/app.py#L49
# Can be change well, we will see
if (audio_npy.shape[0] / audio_samp) > 600 and in_hf_space:
return (None, 'Input audio is longer than 600 secs.')
# Bloody hell: https://stackoverflow.com/questions/26921836/
if audio_npy.dtype != np.float32: # :thonk:
audio_npy = (
audio_npy / np.iinfo(audio_npy.dtype).max
).astype(np.float32)
if len(audio_npy.shape) > 1:
audio_npy = librosa.to_mono(audio_npy.transpose(1, 0))
if audio_samp != 16000:
audio_npy = librosa.resample(
audio_npy,
orig_sr=audio_samp,
target_sr=16000
)
pitch_int = int(pitch_adjust)
resample = (
0 if resample_option == 'Disable resampling'
else int(resample_option)
)
times = [0, 0, 0]
checksum = hashlib.sha512()
checksum.update(audio_npy.tobytes())
output_audio = model['vc'].pipeline(
hubert_model,
model['net_g'],
model['metadata'].get('speaker_id', 0),
audio_npy,
checksum.hexdigest(),
times,
pitch_int,
f0_method,
path.join('model', model['name'], model['metadata']['feat_index']),
feat_ratio,
model['if_f0'],
filter_radius,
model['target_sr'],
resample,
rms_mix_rate,
'v2'
)
out_sr = (
resample if resample >= 16000 and model['target_sr'] != resample
else model['target_sr']
)
print(f'npy: {times[0]}s, f0: {times[1]}s, infer: {times[2]}s')
return ((out_sr, output_audio), 'Success')
async def edge_tts_vc_func(
input_text, model_index, tts_speaker, pitch_adjust, f0_method, feat_ratio,
filter_radius, rms_mix_rate, resample_option
):
if input_text is None:
return (None, 'Please provide TTS text.')
if tts_speaker is None:
return (None, 'Please select TTS speaker.')
if model_index is None:
return (None, 'Please select a model.')
speaker = tts_speakers_list[tts_speaker]['ShortName']
(tts_np, tts_sr) = await util.call_edge_tts(speaker, input_text)
return vc_func(
(tts_sr, tts_np),
model_index,
pitch_adjust,
f0_method,
feat_ratio,
filter_radius,
rms_mix_rate,
resample_option
)
def update_model_info(model_index):
if model_index is None:
return str(
'### Model info\n'
'Please select a model from dropdown above.'
)
model = loaded_models[model_index]
model_icon = model['metadata'].get('icon', '')
return str(
'### Model info\n'
'![model icon]({icon})'
'**{name}**\n\n'
'Author: {author}\n\n'
'Source: {source}\n\n'
'{note}'
).format(
name=model['metadata'].get('name'),
author=model['metadata'].get('author', 'Anonymous'),
source=model['metadata'].get('source', 'Unknown'),
note=model['metadata'].get('note', ''),
icon=(
model_icon
if model_icon.startswith(('http://', 'https://'))
else '/file/model/%s/%s' % (model['name'], model_icon)
)
)
def _example_vc(
input_audio, model_index, pitch_adjust, f0_method, feat_ratio,
filter_radius, rms_mix_rate, resample_option
):
(audio, message) = vc_func(
input_audio, model_index, pitch_adjust, f0_method, feat_ratio,
filter_radius, rms_mix_rate, resample_option
)
return (
audio,
message,
update_model_info(model_index)
)
async def _example_edge_tts(
input_text, model_index, tts_speaker, pitch_adjust, f0_method, feat_ratio,
filter_radius, rms_mix_rate, resample_option
):
(audio, message) = await edge_tts_vc_func(
input_text, model_index, tts_speaker, pitch_adjust, f0_method,
feat_ratio, filter_radius, rms_mix_rate, resample_option
)
return (
audio,
message,
update_model_info(model_index)
)
with app:
gr.HTML("<center>"
"<h1>🥳🎶🎡 - AI歌手,RVC歌声转换 + AI变声</h1>"
"</center>")
gr.Markdown("### <center>🦄 - 能够自动提取视频中的声音,并去除背景音;Powered by [RVC-Project](https://github.com/RVC-Project/Retrieval-based-Voice-Conversion-WebUI)</center>")
gr.Markdown("### <center>更多精彩应用,敬请关注[滔滔AI](http://www.talktalkai.com);滔滔AI,为爱滔滔!💕</center>")
with gr.Tab("🤗 - B站视频提取声音"):
with gr.Row():
with gr.Column():
ydl_url_input = gr.Textbox(label="B站视频网址(可直接填写相应的BV号)", value = "https://www.bilibili.com/video/BV...")
start = gr.Number(value=0, label="起始时间 (秒)")
end = gr.Number(value=15, label="结束时间 (秒)")
ydl_url_submit = gr.Button("提取声音文件吧", variant="primary")
as_audio_submit = gr.Button("去除背景音吧", variant="primary")
with gr.Column():
ydl_audio_output = gr.Audio(label="Audio from Bilibili")
as_audio_input = ydl_audio_output
as_audio_vocals = gr.Audio(label="歌曲人声部分")
as_audio_no_vocals = gr.Audio(label="Music only", type="filepath", visible=False)
as_audio_message = gr.Textbox(label="Message", visible=False)
ydl_url_submit.click(fn=youtube_downloader, inputs=[ydl_url_input, start, end], outputs=[ydl_audio_output])
as_audio_submit.click(fn=audio_separated, inputs=[as_audio_input], outputs=[as_audio_vocals, as_audio_no_vocals, as_audio_message], show_progress=True, queue=True)
with gr.Row():
with gr.Column():
with gr.Tab('🎶 - 歌声转换'):
input_audio = as_audio_vocals
vc_convert_btn = gr.Button('进行歌声转换吧!', variant='primary')
full_song = gr.Button("加入歌曲伴奏吧!", variant="primary")
new_song = gr.Audio(label="AI歌手+伴奏", type="filepath")
with gr.Tab('🎙️ - 文本转语音'):
tts_input = gr.Textbox(
label='请填写您想要转换的文本(中英皆可)',
lines=3
)
tts_speaker = gr.Dropdown(
[
'%s (%s)' % (
s['FriendlyName'],
s['Gender']
)
for s in tts_speakers_list
],
label='请选择一个相应语言的说话人',
type='index'
)
tts_convert_btn = gr.Button('进行AI变声吧', variant='primary')
with gr.Tab("📺 - 音乐视频"):
with gr.Row():
with gr.Column():
inp1 = gr.Textbox(label="为视频配上精彩的文案吧(选填;英文)")
inp2 = new_song
inp3 = gr.Image(source='upload', type='filepath', label="上传一张背景图片吧")
btn = gr.Button("生成您的专属音乐视频吧", variant="primary")
with gr.Column():
out1 = gr.Video(label='您的专属音乐视频')
btn.click(fn=infer, inputs=[inp1, inp2, inp3], outputs=[out1])
pitch_adjust = gr.Slider(
label='Pitch',
minimum=-24,
maximum=24,
step=1,
value=0
)
f0_method = gr.Radio(
label='f0 methods',
choices=['pm', 'rmvpe'],
value='rmvpe',
interactive=True
)
with gr.Accordion('更多设置', open=False):
feat_ratio = gr.Slider(
label='Feature ratio',
minimum=0,
maximum=1,
step=0.1,
value=0.6
)
filter_radius = gr.Slider(
label='Filter radius',
minimum=0,
maximum=7,
step=1,
value=3
)
rms_mix_rate = gr.Slider(
label='Volume envelope mix rate',
minimum=0,
maximum=1,
step=0.1,
value=1
)
resample_rate = gr.Dropdown(
[
'Disable resampling',
'16000',
'22050',
'44100',
'48000'
],
label='Resample rate',
value='Disable resampling'
)
with gr.Column():
# Model select
model_index = gr.Dropdown(
[
'%s - %s' % (
m['metadata'].get('source', 'Unknown'),
m['metadata'].get('name')
)
for m in loaded_models
],
label='请选择您的AI歌手(必选)',
type='index'
)
# Model info
with gr.Box():
model_info = gr.Markdown(
'### AI歌手信息\n'
'Please select a model from dropdown above.',
elem_id='model_info'
)
output_audio = gr.Audio(label='AI歌手(无伴奏)', type="filepath")
output_msg = gr.Textbox(label='Output message')
multi_examples = multi_cfg.get('examples')
if (
multi_examples and
multi_examples.get('vc') and multi_examples.get('tts_vc')
):
with gr.Accordion('Sweet sweet examples', open=False):
with gr.Row():
# VC Example
if multi_examples.get('vc'):
gr.Examples(
label='Audio conversion examples',
examples=multi_examples.get('vc'),
inputs=[
input_audio, model_index, pitch_adjust, f0_method,
feat_ratio
],
outputs=[output_audio, output_msg, model_info],
fn=_example_vc,
cache_examples=args.cache_examples,
run_on_click=args.cache_examples
)
# Edge TTS Example
if multi_examples.get('tts_vc'):
gr.Examples(
label='TTS conversion examples',
examples=multi_examples.get('tts_vc'),
inputs=[
tts_input, model_index, tts_speaker, pitch_adjust,
f0_method, feat_ratio
],
outputs=[output_audio, output_msg, model_info],
fn=_example_edge_tts,
cache_examples=args.cache_examples,
run_on_click=args.cache_examples
)
vc_convert_btn.click(
vc_func,
[
input_audio, model_index, pitch_adjust, f0_method, feat_ratio,
filter_radius, rms_mix_rate, resample_rate
],
[output_audio, output_msg],
api_name='audio_conversion'
)
tts_convert_btn.click(
edge_tts_vc_func,
[
tts_input, model_index, tts_speaker, pitch_adjust, f0_method,
feat_ratio, filter_radius, rms_mix_rate, resample_rate
],
[output_audio, output_msg],
api_name='tts_conversion'
)
full_song.click(fn=mix, inputs=[output_audio, as_audio_no_vocals], outputs=[new_song])
model_index.change(
update_model_info,
inputs=[model_index],
outputs=[model_info],
show_progress=False,
queue=False
)
gr.Markdown("### <center>注意❗:请不要生成会对个人以及组织造成侵害的内容,此程序仅供科研、学习及个人娱乐使用。</center>")
gr.Markdown("### <center>🧸 - 如何使用此程序:填写视频网址和视频起止时间后,依次点击“提取声音文件吧”、“去除背景音吧”、“进行歌声转换吧!”、“加入歌曲伴奏吧!”四个按键即可。</center>")
gr.HTML('''
<div class="footer">
<p>🌊🏞️🎶 - 江水东流急,滔滔无尽声。 明·顾璘
</p>
</div>
''')
app.queue(
concurrency_count=1,
max_size=20,
api_open=args.api
).launch(show_error=True)