RASMUS's picture
Create app.py
3e2d289
raw
history blame
14.6 kB
import os
os.system('git clone https://github.com/ggerganov/whisper.cpp.git')
os.system('make -C ./whisper.cpp')
os.system('bash ./whisper.cpp/models/download-ggml-model.sh small')
os.system('bash ./whisper.cpp/models/download-ggml-model.sh base')
os.system('bash ./whisper.cpp/models/download-ggml-model.sh medium')
os.system('bash ./whisper.cpp/models/download-ggml-model.sh base.en')
#os.system('./whisper.cpp/main -m whisper.cpp/models/ggml-base.en.bin -f whisper.cpp/samples/jfk.wav')
#print("SEURAAVAKSI SMALL TESTI")
#os.system('./whisper.cpp/main -m whisper.cpp/models/ggml-small.bin -f whisper.cpp/samples/jfk.wav')
#print("MOI")
import os
import gradio as gr
import os
from pathlib import Path
import pysrt
import pandas as pd
import re
import time
import os
from pytube import YouTube
from transformers import MarianMTModel, MarianTokenizer
import psutil
num_cores = psutil.cpu_count()
os.environ["OMP_NUM_THREADS"] = f"{num_cores}"
import torch
finnish_marian_nmt_model = "Helsinki-NLP/opus-mt-tc-big-en-fi"
finnish_tokenizer_marian = MarianTokenizer.from_pretrained(finnish_marian_nmt_model, max_length=40)
finnish_tokenizer_marian.max_new_tokens = 30
finnish_translation_model = MarianMTModel.from_pretrained(finnish_marian_nmt_model)
swedish_marian_nmt_model = "Helsinki-NLP/opus-mt-en-sv"
swedish_tokenizer_marian = MarianTokenizer.from_pretrained(swedish_marian_nmt_model, max_length=40)
swedish_tokenizer_marian.max_new_tokens = 30
swedish_translation_model = MarianMTModel.from_pretrained(swedish_marian_nmt_model)
danish_marian_nmt_model = "Helsinki-NLP/opus-mt-en-da"
danish_tokenizer_marian = MarianTokenizer.from_pretrained(danish_marian_nmt_model, max_length=40)
danish_tokenizer_marian.max_new_tokens = 30
danish_translation_model = MarianMTModel.from_pretrained(danish_marian_nmt_model)
translation_models = {
"Finnish": [finnish_tokenizer_marian, finnish_translation_model],
"Swedish": [swedish_tokenizer_marian, swedish_translation_model],
"Danish": [danish_tokenizer_marian, danish_translation_model]
}
whisper_models = ["base", "small", "medium", "base.en"]
source_languages = {
"Arabic": "ar",
"Asturian ":"st",
"Belarusian":"be",
"Bulgarian":"bg",
"Czech":"cs",
"Danish":"da",
"German":"de",
"Greeek":"el",
"English":"en",
"Estonian":"et",
"Finnish":"fi",
"Swedish": "sv",
"Spanish":"es",
"Let the model analyze": "Let the model analyze"
}
source_languages_2 = {
"English":"en",
}
transcribe_options = dict(beam_size=3, best_of=3, without_timestamps=False)
source_language_list = [key[0] for key in source_languages.items()]
source_language_list_2 = [key[0] for key in source_languages_2.items()]
translation_models_list = [key[0] for key in translation_models.items()]
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
print("DEVICE IS: ")
print(device)
videos_out_path = Path("./videos_out")
videos_out_path.mkdir(parents=True, exist_ok=True)
def get_youtube(video_url):
yt = YouTube(video_url)
abs_video_path = yt.streams.filter(progressive=True, file_extension='mp4').order_by('resolution').desc().first().download()
print("LADATATTU POLKUUN")
print(abs_video_path)
return abs_video_path
def speech_to_text(video_file_path, selected_source_lang, whisper_model):
"""
# Youtube with translated subtitles using OpenAI Whisper and Opus-MT models.
# Currently supports only English audio
This space allows you to:
1. Download youtube video with a given url
2. Watch it in the first video component
3. Run automatic speech recognition on the video using Whisper
4. Translate the recognized transcriptions to Finnish, Swedish, Danish
5. Burn the translations to the original video and watch the video in the 2nd video component
Speech Recognition is based on OpenAI Whisper https://github.com/openai/whisper
"""
if(video_file_path == None):
raise ValueError("Error no video input")
print(video_file_path)
try:
_,file_ending = os.path.splitext(f'{video_file_path}')
print(f'file enging is {file_ending}')
print("starting conversion to wav")
os.system(f'ffmpeg -i "{video_file_path}" -ar 16000 -ac 1 -c:a pcm_s16le "{video_file_path.replace(file_ending, ".wav")}"')
print("conversion to wav ready")
print("starting whisper c++")
srt_path = str(video_file_path.replace(file_ending, ".wav")) + ".srt"
os.system(f'rm -f {srt_path}')
if selected_source_lang == "Let the model analyze":
os.system(f'./whisper.cpp/main "{video_file_path.replace(file_ending, ".wav")}" -t 4 -m ./whisper.cpp/models/ggml-{whisper_model}.bin -osrt')
else:
os.system(f'./whisper.cpp/main "{video_file_path.replace(file_ending, ".wav")}" -t 4 -l {source_languages.get(selected_source_lang)} -m ./whisper.cpp/models/ggml-{whisper_model}.bin -osrt')
print("starting whisper done with whisper")
except Exception as e:
raise RuntimeError("Error converting video to audio")
try:
df = pd.DataFrame(columns = ['start','end','text'])
srt_path = str(video_file_path.replace(file_ending, ".wav")) + ".srt"
subs = pysrt.open(srt_path)
objects = []
for sub in subs:
start_hours = str(str(sub.start.hours) + "00")[0:2] if len(str(sub.start.hours)) == 2 else str("0" + str(sub.start.hours) + "00")[0:2]
end_hours = str(str(sub.end.hours) + "00")[0:2] if len(str(sub.end.hours)) == 2 else str("0" + str(sub.end.hours) + "00")[0:2]
start_minutes = str(str(sub.start.minutes) + "00")[0:2] if len(str(sub.start.minutes)) == 2 else str("0" + str(sub.start.minutes) + "00")[0:2]
end_minutes = str(str(sub.end.minutes) + "00")[0:2] if len(str(sub.end.minutes)) == 2 else str("0" + str(sub.end.minutes) + "00")[0:2]
start_seconds = str(str(sub.start.seconds) + "00")[0:2] if len(str(sub.start.seconds)) == 2 else str("0" + str(sub.start.seconds) + "00")[0:2]
end_seconds = str(str(sub.end.seconds) + "00")[0:2] if len(str(sub.end.seconds)) == 2 else str("0" + str(sub.end.seconds) + "00")[0:2]
start_millis = str(str(sub.start.milliseconds) + "000")[0:3]
end_millis = str(str(sub.end.milliseconds) + "000")[0:3]
objects.append([sub.text, f'{start_hours}:{start_minutes}:{start_seconds}.{start_millis}', f'{end_hours}:{end_minutes}:{end_seconds}.{end_millis}'])
for object in objects:
srt_to_df = {
'start': [object[1]],
'end': [object[2]],
'text': [object[0]]
}
df = pd.concat([df, pd.DataFrame(srt_to_df)])
return df
except Exception as e:
raise RuntimeError("Error Running inference with local model", e)
def translate_transcriptions(df, selected_translation_lang_2, selected_source_lang_2):
print("IN TRANSLATE")
if selected_translation_lang_2 is None:
selected_translation_lang_2 = 'Finnish'
df.reset_index(inplace=True)
print("Getting models")
tokenizer_marian = translation_models.get(selected_translation_lang_2)[0]
translation_model = translation_models.get(selected_translation_lang_2)[1]
print("start_translation")
translations = []
print(df.head())
if selected_translation_lang_2 != selected_source_lang_2:
print("TRASNLATING")
sentences = list(df['text'])
sentences = [stringi.replace('[','').replace(']','') for stringi in sentences]
translations = translation_model.generate(**tokenizer_marian(sentences, return_tensors="pt", padding=True, truncation=True))
print(translations)
df['translation'] = translations
else:
df['translation'] = df['text']
print("translations done")
return (df)
def create_srt_and_burn(df, video_in):
print("Starting creation of video wit srt")
print("video in path is:")
print(video_in)
with open('testi.srt','w', encoding="utf-8") as file:
for i in range(len(df)):
file.write(str(i+1))
file.write('\n')
start = df.iloc[i]['start']
file.write(f"{start}")
stop = df.iloc[i]['end']
file.write(' --> ')
file.write(f"{stop}")
file.write('\n')
file.writelines(df.iloc[i]['translation'])
if int(i) != len(df)-1:
file.write('\n\n')
print("SRT DONE")
try:
file1 = open('./testi.srt', 'r', encoding="utf-8")
Lines = file1.readlines()
count = 0
# Strips the newline character
for line in Lines:
count += 1
print("{}".format(line))
print(type(video_in))
print(video_in)
video_out = video_in.replace('.mp4', '_out.mp4')
print("video_out_path")
print(video_out)
command = 'ffmpeg -i "{}" -y -vf subtitles=./testi.srt "{}"'.format(video_in, video_out)
print(command)
os.system(command)
return video_out
except Exception as e:
print(e)
return video_out
# ---- Gradio Layout -----
video_in = gr.Video(label="Video file", mirror_webcam=False)
youtube_url_in = gr.Textbox(label="Youtube url", lines=1, interactive=True)
video_out = gr.Video(label="Video Out", mirror_webcam=False)
df_init = pd.DataFrame(columns=['start','end','text'])
df_init_2 = pd.DataFrame(columns=['start','end','text','translation'])
selected_translation_lang = gr.Dropdown(choices=translation_models_list, type="value", value="English", label="In which language you want the transcriptions?", interactive=True)
selected_source_lang = gr.Dropdown(choices=source_language_list, type="value", value="Let the model analyze", label="Spoken language in video", interactive=True)
selected_source_lang_2 = gr.Dropdown(choices=source_language_list_2, type="value", value="English", label="Spoken language in video", interactive=True)
selected_translation_lang_2 = gr.Dropdown(choices=translation_models_list, type="value", value="English", label="In which language you want the transcriptions?", interactive=True)
selected_whisper_model = gr.Dropdown(choices=whisper_models, type="value", value="base", label="Selected Whisper model", interactive=True)
transcription_df = gr.DataFrame(value=df_init,label="Transcription dataframe", row_count=(0, "dynamic"), max_rows = 10, wrap=True, overflow_row_behaviour='paginate')
transcription_and_translation_df = gr.DataFrame(value=df_init_2,label="Transcription and translation dataframe", max_rows = 10, wrap=True, overflow_row_behaviour='paginate')
demo = gr.Blocks(css='''
#cut_btn, #reset_btn { align-self:stretch; }
#\\31 3 { max-width: 540px; }
.output-markdown {max-width: 65ch !important;}
''')
demo.encrypt = False
with demo:
transcription_var = gr.Variable()
with gr.Row():
with gr.Column():
gr.Markdown('''
### This space allows you to:
##### 1. Download youtube video with a given URL
##### 2. Watch it in the first video component
##### 3. Run automatic speech recognition on the video using Whisper (Please remember to select translation language)
##### 4. Translate the recognized transcriptions to Finnish, Swedish, Danish
##### 5. Burn the translations to the original video and watch the video in the 2nd video component
''')
with gr.Column():
gr.Markdown('''
### 1. Insert Youtube URL below (Some examples below which I suggest to use for first tests)
##### 1. https://www.youtube.com/watch?v=nlMuHtV82q8&ab_channel=NothingforSale24
##### 2. https://www.youtube.com/watch?v=JzPfMbG1vrE&ab_channel=ExplainerVideosByLauren
##### 3. https://www.youtube.com/watch?v=S68vvV0kod8&ab_channel=Pearl-CohnTelevision
''')
with gr.Row():
with gr.Column():
youtube_url_in.render()
download_youtube_btn = gr.Button("Step 1. Download Youtube video")
download_youtube_btn.click(get_youtube, [youtube_url_in], [
video_in])
print(video_in)
with gr.Row():
with gr.Column():
video_in.render()
with gr.Column():
gr.Markdown('''
##### Here you can start the transcription and translation process.
##### Be aware that processing will last for a while (35 second video took around 20 seconds in my testing and might fail for longer videos)
''')
selected_source_lang.render()
selected_whisper_model.render()
transcribe_btn = gr.Button("Step 2. Transcribe audio")
transcribe_btn.click(speech_to_text, [video_in, selected_source_lang, selected_whisper_model], transcription_df)
with gr.Row():
gr.Markdown('''
##### Here you will get transcription output
##### ''')
with gr.Row():
with gr.Column():
transcription_df.render()
with gr.Row():
with gr.Column():
gr.Markdown('''
##### Here you will get translated transcriptions.
##### Please remember to select Spoken Language and wanted translation language
##### ''')
selected_source_lang_2.render()
selected_translation_lang_2.render()
translate_transcriptions_button = gr.Button("Step 3. Translate transcription")
translate_transcriptions_button.click(translate_transcriptions, [transcription_df, selected_translation_lang_2, selected_source_lang_2], transcription_and_translation_df)
transcription_and_translation_df.render()
with gr.Row():
with gr.Column():
gr.Markdown('''
##### Now press the Step 4. Button to create output video with translated transcriptions
##### ''')
translate_and_make_srt_btn = gr.Button("Step 4. Create and burn srt to video")
print(video_in)
translate_and_make_srt_btn.click(create_srt_and_burn, [transcription_and_translation_df,video_in], [
video_out])
video_out.render()
demo.launch()