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import os
import shutil
from huggingface_hub import snapshot_download
import gradio as gr
from gradio_client import Client, handle_file
from mutagen.mp3 import MP3
from pydub import AudioSegment
from PIL import Image
import ffmpeg
os.chdir(os.path.dirname(os.path.abspath(__file__)))
from scripts.inference import inference_process
import argparse
import uuid
is_shared_ui = True if "fffiloni/tts-hallo-talking-portrait" in os.environ['SPACE_ID'] else False
hallo_dir = snapshot_download(repo_id="fudan-generative-ai/hallo", local_dir="pretrained_models")
AUDIO_MAX_DURATION = 50000
#############
# UTILITIES #
#############
def is_mp3(file_path):
try:
audio = MP3(file_path)
return True
except Exception as e:
return False
def convert_mp3_to_wav(mp3_file_path, wav_file_path):
# Load the MP3 file
audio = AudioSegment.from_mp3(mp3_file_path)
# Export as WAV file
audio.export(wav_file_path, format="wav")
return wav_file_path
def trim_audio(file_path, output_path, max_duration):
# Load the audio file
audio = AudioSegment.from_wav(file_path)
# Check the length of the audio in milliseconds
audio_length = len(audio)
# If the audio is longer than the maximum duration, trim it
if audio_length > max_duration:
trimmed_audio = audio[:max_duration]
else:
trimmed_audio = audio
# Export the trimmed audio to a new file
trimmed_audio.export(output_path, format="wav")
return output_path
def add_silence_to_wav(wav_file_path, duration_s=1):
# Load the WAV file
audio = AudioSegment.from_wav(wav_file_path)
# Create 1 second of silence
silence = AudioSegment.silent(duration=duration_s * 1000) # duration is in milliseconds
# Add silence to the end of the audio file
audio_with_silence = audio + silence
# Export the modified audio
audio_with_silence.export(wav_file_path, format="wav")
return wav_file_path
def check_mp3(file_path):
if is_mp3(file_path):
unique_id = uuid.uuid4()
wav_file_path = f"{os.path.splitext(file_path)[0]}-{unique_id}.wav"
converted_audio = convert_mp3_to_wav(file_path, wav_file_path)
print(f"File converted to {wav_file_path}")
return converted_audio, gr.update(value=converted_audio, visible=True)
else:
print("The file is not an MP3 file.")
return file_path, gr.update(value=file_path, visible=True)
def check_and_convert_webp_to_png(input_path, output_path):
try:
# Open the image file
with Image.open(input_path) as img:
# Check if the image is in WebP format
if img.format == 'WEBP':
# Convert and save as PNG
img.save(output_path, 'PNG')
print(f"Converted {input_path} to {output_path}")
return output_path
else:
print(f"The file {input_path} is not in WebP format.")
return input_path
except IOError:
print(f"Cannot open {input_path}. The file might not exist or is not an image.")
def convert_user_uploded_webp(input_path):
# convert to png if necessary
input_file = input_path
unique_id = uuid.uuid4()
output_file = f"converted_to_png_portrait-{unique_id}.png"
ready_png = check_and_convert_webp_to_png(input_file, output_file)
print(f"PORTRAIT PNG FILE: {ready_png}")
return ready_png
def clear_audio_elms():
return gr.update(value=None, visible=False)
def change_video_codec(input_file, output_file, codec='libx264', audio_codec='aac'):
try:
(
ffmpeg
.input(input_file)
.output(output_file, vcodec=codec, acodec=audio_codec)
.run(overwrite_output=True)
)
print(f'Successfully changed codec of {input_file} and saved as {output_file}')
except ffmpeg.Error as e:
print(f'Error occurred: {e.stderr.decode()}')
#######################################################
# Gradio APIs for optional image and voice generation #
#######################################################
def generate_portrait(prompt_image):
if prompt_image is None or prompt_image == "":
raise gr.Error("Can't generate a portrait without a prompt !")
try:
client = Client("ByteDance/SDXL-Lightning")
except:
raise gr.Error(f"ByteDance/SDXL-Lightning space's api might not be ready, please wait, or upload an image instead.")
result = client.predict(
prompt = prompt_image,
ckpt = "4-Step",
api_name = "/generate_image"
)
print(result)
# convert to png if necessary
input_file = result
unique_id = uuid.uuid4()
output_file = f"converted_to_png_portrait-{unique_id}.png"
ready_png = check_and_convert_webp_to_png(input_file, output_file)
print(f"PORTRAIT PNG FILE: {ready_png}")
return ready_png
def generate_voice_with_parler(prompt_audio, voice_description):
if prompt_audio is None or prompt_audio == "" :
raise gr.Error(f"Can't generate a voice without text to synthetize !")
if voice_description is None or voice_description == "":
gr.Info(
"For better control, You may want to provide a voice character description next time.",
duration = 10,
visible = True
)
try:
client = Client("parler-tts/parler_tts_mini")
except:
raise gr.Error(f"parler-tts/parler_tts_mini space's api might not be ready, please wait, or upload an audio instead.")
result = client.predict(
text = prompt_audio,
description = voice_description,
api_name = "/gen_tts"
)
print(result)
return result, gr.update(value=result, visible=True)
def get_whisperspeech(prompt_audio_whisperspeech, audio_to_clone):
try:
client = Client("collabora/WhisperSpeech")
except:
raise gr.Error(f"collabora/WhisperSpeech space's api might not be ready, please wait, or upload an audio instead.")
result = client.predict(
multilingual_text = prompt_audio_whisperspeech,
speaker_audio = handle_file(audio_to_clone),
speaker_url = "",
cps = 14,
api_name = "/whisper_speech_demo"
)
print(result)
return result, gr.update(value=result, visible=True)
########################
# TALKING PORTRAIT GEN #
########################
def run_hallo(source_image, driving_audio, progress=gr.Progress(track_tqdm=True)):
unique_id = uuid.uuid4()
args = argparse.Namespace(
config = 'configs/inference/default.yaml',
source_image = source_image,
driving_audio = driving_audio,
output = f'output-{unique_id}.mp4',
pose_weight = 1.0,
face_weight = 1.0,
lip_weight = 1.0,
face_expand_ratio = 1.2,
checkpoint = None
)
inference_process(args)
return f'output-{unique_id}.mp4'
def generate_talking_portrait(portrait, voice, progress=gr.Progress(track_tqdm=True)):
if portrait is None:
raise gr.Error("Please provide a portrait to animate.")
if voice is None:
raise gr.Error("Please provide audio (4 seconds max).")
if is_shared_ui :
# Trim audio to AUDIO_MAX_DURATION for better shared experience with community
input_file = voice
unique_id = uuid.uuid4()
trimmed_output_file = f"-{unique_id}.wav"
trimmed_output_file = trim_audio(input_file, trimmed_output_file, AUDIO_MAX_DURATION)
voice = trimmed_output_file
# Add 1 second of silence at the end to avoid last word being cut by hallo
ready_audio = add_silence_to_wav(voice)
print(f"1 second of silence added to {voice}")
# Call hallo
talking_portrait_vid = run_hallo(portrait, ready_audio)
# Convert video to readable format
final_output_file = f"converted_{talking_portrait_vid}"
change_video_codec(talking_portrait_vid, final_output_file)
return final_output_file
css = '''
#col-container {
margin: 0 auto;
}
#column-names {
margin-top: 50px;
}
#main-group {
background-color: none;
}
.tabs {
background-color: unset;
}
#image-block {
flex: 1;
}
#video-block {
flex: 9;
}
#audio-block, #audio-clone-elm {
flex: 1;
}
div#audio-clone-elm > .audio-container > button {
height: 180px!important;
}
div#audio-clone-elm > .audio-container > button > .wrap {
font-size: 0.9em;
}
#text-synth, #voice-desc{
height: 130px;
}
#text-synth-wsp {
height: 120px;
}
#audio-column, #result-column {
display: flex;
}
#gen-voice-btn {
flex: 1;
}
#parler-tab, #whisperspeech-tab {
padding: 0;
}
#main-submit{
flex: 1;
}
#pro-tips {
margin-top: 50px;
}
div#warning-ready {
background-color: #ecfdf5;
padding: 0 16px 16px;
margin: 20px 0;
color: #030303!important;
}
div#warning-ready > .gr-prose > h2, div#warning-ready > .gr-prose > p {
color: #057857!important;
}
div#warning-duplicate {
background-color: #ebf5ff;
padding: 0 16px 16px;
margin: 20px 0;
color: #030303!important;
}
div#warning-duplicate > .gr-prose > h2, div#warning-duplicate > .gr-prose > p {
color: #0f4592!important;
}
div#warning-duplicate strong {
color: #0f4592;
}
p.actions {
display: flex;
align-items: center;
margin: 20px 0;
}
div#warning-duplicate .actions a {
display: inline-block;
margin-right: 10px;
}
.dark #warning-duplicate {
background-color: #0c0c0c !important;
border: 1px solid white !important;
}
'''
with gr.Blocks(css=css) as demo:
with gr.Column(elem_id="col-container"):
gr.Markdown("""
# TTS x Hallo Talking Portrait Generator
This demo allows you to generate a talking portrait with the help of several open-source projects: SDXL Lightning | Parler TTS | WhisperSpeech | Hallo
To let the community try and enjoy this demo, video length is limited to 4 seconds audio maximum.
Duplicate this space to skip the queue and get unlimited video duration. 4-5 seconds of audio will take ~5 minutes per inference, please be patient.
""")
with gr.Row(elem_id="column-names"):
gr.Markdown("## 1. Load Portrait")
gr.Markdown("## 2. Load Voice")
gr.Markdown("## 3. Result")
with gr.Group(elem_id="main-group"):
with gr.Row():
with gr.Column():
portrait = gr.Image(
sources = ["upload"],
type = "filepath",
format = "png",
elem_id = "image-block"
)
prompt_image = gr.Textbox(
label = "Generate image",
lines = 2,
max_lines = 2
)
gen_image_btn = gr.Button("Generate portrait (optional)")
with gr.Column(elem_id="audio-column"):
voice = gr.Audio(
type = "filepath",
elem_id = "audio-block"
)
preprocess_audio_file = gr.File(visible=False)
with gr.Tab("Parler TTS", elem_id="parler-tab"):
prompt_audio = gr.Textbox(
label = "Text to synthetize",
lines = 3,
max_lines = 3,
elem_id = "text-synth"
)
voice_description = gr.Textbox(
label = "Voice description",
lines = 3,
max_lines = 3,
elem_id = "voice-desc"
)
gen_voice_btn = gr.Button("Generate voice (optional)")
with gr.Tab("WhisperSpeech", elem_id="whisperspeech-tab"):
prompt_audio_whisperspeech = gr.Textbox(
label = "Text to synthetize",
lines = 2,
max_lines = 2,
elem_id = "text-synth-wsp"
)
audio_to_clone = gr.Audio(
label = "Voice to clone",
type = "filepath",
elem_id = "audio-clone-elm"
)
gen_wsp_voice_btn = gr.Button("Generate voice clone (optional)")
with gr.Column(elem_id="result-column"):
result = gr.Video(
elem_id="video-block"
)
submit_btn = gr.Button("Go talking Portrait !", elem_id="main-submit")
with gr.Row(elem_id="pro-tips"):
gr.Markdown("""
# Hallo Pro Tips:
Hallo has a few simple requirements for input data:
For the source image:
1. It should be cropped into squares.
2. The face should be the main focus, making up 50%-70% of the image.
3. The face should be facing forward, with a rotation angle of less than 30° (no side profiles).
For the driving audio:
1. It must be in WAV format.
2. It must be in English since our training datasets are only in this language.
3. Ensure the vocals are clear; background music is acceptable.
""")
gr.Markdown("""
# TTS Pro Tips:
For Parler TTS:
- Include the term "very clear audio" to generate the highest quality audio, and "very noisy audio" for high levels of background noise
- Punctuation can be used to control the prosody of the generations, e.g. use commas to add small breaks in speech
- The remaining speech features (gender, speaking rate, pitch and reverberation) can be controlled directly through the prompt
For WhisperSpeech:
WhisperSpeech is able to quickly clone a voice from an audio sample.
- Upload a voice sample in the WhisperSpeech tab
- Add text to synthetize, hit Generate voice clone button
""")
portrait.upload(
fn = convert_user_uploded_webp,
inputs = [portrait],
outputs = [portrait],
queue = False,
show_api = False
)
voice.upload(
fn = check_mp3,
inputs = [voice],
outputs = [voice, preprocess_audio_file],
queue = False,
show_api = False
)
voice.clear(
fn = clear_audio_elms,
inputs = None,
outputs = [preprocess_audio_file],
queue = False,
show_api = False
)
gen_image_btn.click(
fn = generate_portrait,
inputs = [prompt_image],
outputs = [portrait],
queue = False,
show_api = False
)
gen_voice_btn.click(
fn = generate_voice_with_parler,
inputs = [prompt_audio, voice_description],
outputs = [voice, preprocess_audio_file],
queue = False,
show_api = False
)
gen_wsp_voice_btn.click(
fn = get_whisperspeech,
inputs = [prompt_audio_whisperspeech, audio_to_clone],
outputs = [voice, preprocess_audio_file],
queue = False,
show_api = False
)
submit_btn.click(
fn = generate_talking_portrait,
inputs = [portrait, voice],
outputs = [result],
show_api = False
)
demo.queue(max_size=2).launch(show_error=True, show_api=False)