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import gradio as gr
import whisper
import os
from transformers import M2M100ForConditionalGeneration, M2M100Tokenizer
from docx import Document
from fpdf import FPDF
from pptx import Presentation
import subprocess
import shlex
import yt_dlp
# Load the Whisper model (smaller model for faster transcription)
model = whisper.load_model("tiny")
# Load M2M100 translation model for different languages
def load_translation_model(target_language):
lang_codes = {
"fa": "fa", # Persian (Farsi)
"es": "es", # Spanish
"fr": "fr", # French
"de": "de", # German
"it": "it", # Italian
"pt": "pt", # Portuguese
"ar": "ar", # Arabic
"zh": "zh", # Chinese
"hi": "hi", # Hindi
"ja": "ja", # Japanese
"ko": "ko", # Korean
"ru": "ru", # Russian
}
target_lang_code = lang_codes.get(target_language)
if not target_lang_code:
raise ValueError(f"Translation model for {target_language} not supported")
tokenizer = M2M100Tokenizer.from_pretrained("facebook/m2m100_418M")
translation_model = M2M100ForConditionalGeneration.from_pretrained("facebook/m2m100_418M")
tokenizer.src_lang = "en"
tokenizer.tgt_lang = target_lang_code
return tokenizer, translation_model
def translate_text(text, tokenizer, model):
try:
inputs = tokenizer(text, return_tensors="pt", padding=True, truncation=True)
translated = model.generate(**inputs, forced_bos_token_id=tokenizer.get_lang_id(tokenizer.tgt_lang))
return tokenizer.decode(translated[0], skip_special_tokens=True)
except Exception as e:
raise RuntimeError(f"Error during translation: {e}")
# Helper function to format timestamps in SRT format
def format_timestamp(seconds):
milliseconds = int((seconds % 1) * 1000)
seconds = int(seconds)
hours = seconds // 3600
minutes = (seconds % 3600) // 60
seconds = seconds % 60
return f"{hours:02}:{minutes:02}:{seconds:02},{milliseconds:03}"
# Corrected write_srt function
def write_srt(transcription, output_file, tokenizer=None, translation_model=None):
with open(output_file, "w") as f:
for i, segment in enumerate(transcription['segments']):
start = segment['start']
end = segment['end']
text = segment['text']
if translation_model:
text = translate_text(text, tokenizer, translation_model)
start_time = format_timestamp(start)
end_time = format_timestamp(end)
f.write(f"{i + 1}\n")
f.write(f"{start_time} --> {end_time}\n")
f.write(f"{text.strip()}\n\n")
# Embedding subtitles into video (hardsub)
def embed_hardsub_in_video(video_file, srt_file, output_video):
command = f'ffmpeg -i "{video_file}" -vf "subtitles=\'{srt_file}\'" -c:v libx264 -crf 23 -preset medium "{output_video}"'
try:
process = subprocess.run(shlex.split(command), capture_output=True, text=True, timeout=300)
if process.returncode != 0:
raise RuntimeError(f"ffmpeg error: {process.stderr}")
except subprocess.TimeoutExpired:
raise RuntimeError("ffmpeg process timed out.")
except Exception as e:
raise RuntimeError(f"Error running ffmpeg: {e}")
# Helper function to write Word documents
def write_word(transcription, output_file, tokenizer=None, translation_model=None, target_language=None):
doc = Document()
rtl = target_language == "fa"
for i, segment in enumerate(transcription['segments']):
text = segment['text']
if translation_model:
text = translate_text(text, tokenizer, translation_model)
para = doc.add_paragraph(f"{i + 1}. {text.strip()}")
if rtl:
para.paragraph_format.right_to_left = True
doc.save(output_file)
# Helper function to reverse text for RTL
def reverse_text_for_rtl(text):
return ' '.join([word[::-1] for word in text.split()])
# Helper function to write PDF documents
def write_pdf(transcription, output_file, tokenizer=None, translation_model=None):
pdf = FPDF()
pdf.add_page()
font_path = "/home/user/app/B-NAZANIN.TTF"
pdf.add_font('B-NAZANIN', '', font_path, uni=True)
pdf.set_font('B-NAZANIN', size=12)
for i, segment in enumerate(transcription['segments']):
text = segment['text']
if translation_model:
text = translate_text(text, tokenizer, translation_model)
reversed_text = reverse_text_for_rtl(text)
pdf.multi_cell(0, 10, f"{i + 1}. {reversed_text.strip()}", align='L')
pdf.output(output_file)
# Helper function to write PowerPoint slides
def write_ppt(transcription, output_file, tokenizer=None, translation_model=None):
ppt = Presentation()
for i, segment in enumerate(transcription['segments']):
text = segment['text']
if translation_model:
text = translate_text(text, tokenizer, translation_model)
slide = ppt.slides.add_slide(ppt.slide_layouts[5])
title = slide.shapes.title
title.text = f"{i + 1}. {text.strip()}"
ppt.save(output_file)
# Function to download YouTube video
def download_youtube_video(url):
ydl_opts = {
'format': 'mp4',
'outtmpl': 'downloaded_video.mp4',
}
with yt_dlp.YoutubeDL(ydl_opts) as ydl:
ydl.download([url])
return 'downloaded_video.mp4'
# Transcribing video and generating output
def transcribe_video(video_file, video_url, language, target_language, output_format):
if video_url:
video_file_path = download_youtube_video(video_url)
else:
video_file_path = video_file.name
result = model.transcribe(video_file_path, language=language)
video_name = os.path.splitext(video_file_path)[0]
if target_language != "en":
try:
tokenizer, translation_model = load_translation_model(target_language)
except Exception as e:
raise RuntimeError(f"Error loading translation model: {e}")
else:
tokenizer, translation_model = None, None
srt_file = f"{video_name}.srt"
write_srt(result, srt_file, tokenizer, translation_model)
if output_format == "SRT":
return srt_file
elif output_format == "Video with Hardsub":
output_video = f"{video_name}_with_subtitles.mp4"
try:
embed_hardsub_in_video(video_file_path, srt_file, output_video)
return output_video
except Exception as e:
raise RuntimeError(f"Error embedding subtitles in video: {e}")
elif output_format == "Word":
word_file = f"{video_name}.docx"
write_word(result, word_file, tokenizer, translation_model, target_language)
return word_file
elif output_format == "PDF":
pdf_file = f"{video_name}.pdf"
write_pdf(result, pdf_file, tokenizer, translation_model)
return pdf_file
elif output_format == "PowerPoint":
ppt_file = f"{video_name}.pptx"
write_ppt(result, ppt_file, tokenizer, translation_model)
return ppt_file
# Gradio interface with YouTube URL
iface = gr.Interface(
fn=transcribe_video,
inputs=[
gr.File(label="Upload Video File (or leave empty for YouTube link)"), # Removed 'optional=True'
gr.Textbox(label="YouTube Video URL (optional)", placeholder="https://www.youtube.com/watch?v=..."),
gr.Dropdown(label="Select Original Video Language", choices=["en", "es", "fr", "de", "it", "pt"], value="en"),
gr.Dropdown(label="Select Subtitle Translation Language", choices=["en", "fa", "es", "de", "fr", "it", "pt"], value="fa"),
gr.Radio(label="Choose Output Format", choices=["SRT", "Video with Hardsub", "Word", "PDF", "PowerPoint"], value="Video with Hardsub")
],
outputs=gr.File(label="Download File"),
title="Video Subtitle Generator with Translation & Multi-Format Output (Supports YouTube)",
description=(
"This tool allows you to generate subtitles from a video file or YouTube link using Whisper, "
"translate the subtitles into multiple languages using M2M100, and export them "
"in various formats including SRT, hardcoded subtitles in video, Word, PDF, or PowerPoint."
),
theme="compact",
live=False
)
if __name__ == "__main__":
iface.launch()
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