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from typing import Iterator | |
from io import StringIO | |
import os | |
import pathlib | |
import tempfile | |
# External programs | |
import whisper | |
import ffmpeg | |
# UI | |
import gradio as gr | |
from src.download import ExceededMaximumDuration, download_url | |
from src.utils import slugify, write_srt, write_vtt | |
from src.vad import VadPeriodicTranscription, VadSileroTranscription | |
# Limitations (set to -1 to disable) | |
DEFAULT_INPUT_AUDIO_MAX_DURATION = 600 # seconds | |
# Whether or not to automatically delete all uploaded files, to save disk space | |
DELETE_UPLOADED_FILES = True | |
# Gradio seems to truncate files without keeping the extension, so we need to truncate the file prefix ourself | |
MAX_FILE_PREFIX_LENGTH = 17 | |
LANGUAGES = [ | |
"English", "Chinese", "German", "Spanish", "Russian", "Korean", | |
"French", "Japanese", "Portuguese", "Turkish", "Polish", "Catalan", | |
"Dutch", "Arabic", "Swedish", "Italian", "Indonesian", "Hindi", | |
"Finnish", "Vietnamese", "Hebrew", "Ukrainian", "Greek", "Malay", | |
"Czech", "Romanian", "Danish", "Hungarian", "Tamil", "Norwegian", | |
"Thai", "Urdu", "Croatian", "Bulgarian", "Lithuanian", "Latin", | |
"Maori", "Malayalam", "Welsh", "Slovak", "Telugu", "Persian", | |
"Latvian", "Bengali", "Serbian", "Azerbaijani", "Slovenian", | |
"Kannada", "Estonian", "Macedonian", "Breton", "Basque", "Icelandic", | |
"Armenian", "Nepali", "Mongolian", "Bosnian", "Kazakh", "Albanian", | |
"Swahili", "Galician", "Marathi", "Punjabi", "Sinhala", "Khmer", | |
"Shona", "Yoruba", "Somali", "Afrikaans", "Occitan", "Georgian", | |
"Belarusian", "Tajik", "Sindhi", "Gujarati", "Amharic", "Yiddish", | |
"Lao", "Uzbek", "Faroese", "Haitian Creole", "Pashto", "Turkmen", | |
"Nynorsk", "Maltese", "Sanskrit", "Luxembourgish", "Myanmar", "Tibetan", | |
"Tagalog", "Malagasy", "Assamese", "Tatar", "Hawaiian", "Lingala", | |
"Hausa", "Bashkir", "Javanese", "Sundanese" | |
] | |
class WhisperTranscriber: | |
def __init__(self, inputAudioMaxDuration: float = DEFAULT_INPUT_AUDIO_MAX_DURATION, deleteUploadedFiles: bool = DELETE_UPLOADED_FILES): | |
self.model_cache = dict() | |
self.vad_model = None | |
self.inputAudioMaxDuration = inputAudioMaxDuration | |
self.deleteUploadedFiles = deleteUploadedFiles | |
def transcribe_webui(self, modelName, languageName, urlData, uploadFile, microphoneData, task, vad, vadMergeWindow, vadMaxMergeSize, vadPadding): | |
try: | |
source, sourceName = self.__get_source(urlData, uploadFile, microphoneData) | |
try: | |
selectedLanguage = languageName.lower() if len(languageName) > 0 else None | |
selectedModel = modelName if modelName is not None else "base" | |
model = self.model_cache.get(selectedModel, None) | |
if not model: | |
model = whisper.load_model(selectedModel) | |
self.model_cache[selectedModel] = model | |
# Execute whisper | |
result = self.transcribe_file(model, source, selectedLanguage, task, vad, vadMergeWindow, vadMaxMergeSize, vadPadding) | |
# Write result | |
downloadDirectory = tempfile.mkdtemp() | |
filePrefix = slugify(sourceName, allow_unicode=True) | |
download, text, vtt = self.write_result(result, filePrefix, downloadDirectory) | |
return download, text, vtt | |
finally: | |
# Cleanup source | |
if self.deleteUploadedFiles: | |
print("Deleting source file " + source) | |
os.remove(source) | |
except ExceededMaximumDuration as e: | |
return [], ("[ERROR]: Maximum remote video length is " + str(e.maxDuration) + "s, file was " + str(e.videoDuration) + "s"), "[ERROR]" | |
def transcribe_file(self, model: whisper.Whisper, audio_path: str, language: str, task: str = None, vad: str = None, | |
vadMergeWindow: float = 5, vadMaxMergeSize: float = 150, vadPadding: float = 1, **decodeOptions: dict): | |
# Callable for processing an audio file | |
whisperCallable = lambda audio : model.transcribe(audio, language=language, task=task, **decodeOptions) | |
# The results | |
if (vad == 'silero-vad'): | |
# Use Silero VAD and include gaps | |
if (self.vad_model is None): | |
self.vad_model = VadSileroTranscription() | |
process_gaps = VadSileroTranscription(transcribe_non_speech = True, | |
max_silent_period=vadMergeWindow, max_merge_size=vadMaxMergeSize, | |
segment_padding_left=vadPadding, segment_padding_right=vadPadding, copy=self.vad_model) | |
result = process_gaps.transcribe(audio_path, whisperCallable) | |
elif (vad == 'silero-vad-skip-gaps'): | |
# Use Silero VAD | |
if (self.vad_model is None): | |
self.vad_model = VadSileroTranscription() | |
skip_gaps = VadSileroTranscription(transcribe_non_speech = False, | |
max_silent_period=vadMergeWindow, max_merge_size=vadMaxMergeSize, | |
segment_padding_left=vadPadding, segment_padding_right=vadPadding, copy=self.vad_model) | |
result = skip_gaps.transcribe(audio_path, whisperCallable) | |
elif (vad == 'periodic-vad'): | |
# Very simple VAD - mark every 5 minutes as speech. This makes it less likely that Whisper enters an infinite loop, but | |
# it may create a break in the middle of a sentence, causing some artifacts. | |
periodic_vad = VadPeriodicTranscription(periodic_duration=vadMaxMergeSize) | |
result = periodic_vad.transcribe(audio_path, whisperCallable) | |
else: | |
# Default VAD | |
result = whisperCallable(audio_path) | |
return result | |
def write_result(self, result: dict, source_name: str, output_dir: str): | |
if not os.path.exists(output_dir): | |
os.makedirs(output_dir) | |
text = result["text"] | |
language = result["language"] | |
languageMaxLineWidth = self.__get_max_line_width(language) | |
print("Max line width " + str(languageMaxLineWidth)) | |
vtt = self.__get_subs(result["segments"], "vtt", languageMaxLineWidth) | |
srt = self.__get_subs(result["segments"], "srt", languageMaxLineWidth) | |
output_files = [] | |
output_files.append(self.__create_file(srt, output_dir, source_name + "-subs.srt")); | |
output_files.append(self.__create_file(vtt, output_dir, source_name + "-subs.vtt")); | |
output_files.append(self.__create_file(text, output_dir, source_name + "-transcript.txt")); | |
return output_files, text, vtt | |
def clear_cache(self): | |
self.model_cache = dict() | |
self.vad_model = None | |
def __get_source(self, urlData, uploadFile, microphoneData): | |
if urlData: | |
# Download from YouTube | |
source = download_url(urlData, self.inputAudioMaxDuration)[0] | |
else: | |
# File input | |
source = uploadFile if uploadFile is not None else microphoneData | |
if self.inputAudioMaxDuration > 0: | |
# Calculate audio length | |
audioDuration = ffmpeg.probe(source)["format"]["duration"] | |
if float(audioDuration) > self.inputAudioMaxDuration: | |
raise ExceededMaximumDuration(videoDuration=audioDuration, maxDuration=self.inputAudioMaxDuration, message="Video is too long") | |
file_path = pathlib.Path(source) | |
sourceName = file_path.stem[:MAX_FILE_PREFIX_LENGTH] + file_path.suffix | |
return source, sourceName | |
def __get_max_line_width(self, language: str) -> int: | |
if (language and language.lower() in ["japanese", "ja", "chinese", "zh"]): | |
# Chinese characters and kana are wider, so limit line length to 40 characters | |
return 40 | |
else: | |
# TODO: Add more languages | |
# 80 latin characters should fit on a 1080p/720p screen | |
return 80 | |
def __get_subs(self, segments: Iterator[dict], format: str, maxLineWidth: int) -> str: | |
segmentStream = StringIO() | |
if format == 'vtt': | |
write_vtt(segments, file=segmentStream, maxLineWidth=maxLineWidth) | |
elif format == 'srt': | |
write_srt(segments, file=segmentStream, maxLineWidth=maxLineWidth) | |
else: | |
raise Exception("Unknown format " + format) | |
segmentStream.seek(0) | |
return segmentStream.read() | |
def __create_file(self, text: str, directory: str, fileName: str) -> str: | |
# Write the text to a file | |
with open(os.path.join(directory, fileName), 'w+', encoding="utf-8") as file: | |
file.write(text) | |
return file.name | |
def create_ui(inputAudioMaxDuration, share=False, server_name: str = None): | |
ui = WhisperTranscriber(inputAudioMaxDuration) | |
ui_description = "Whisper is a general-purpose speech recognition model. It is trained on a large dataset of diverse " | |
ui_description += " audio and is also a multi-task model that can perform multilingual speech recognition " | |
ui_description += " as well as speech translation and language identification. " | |
ui_description += "\n\n\n\nFor longer audio files (>10 minutes), it is recommended that you select Silero VAD (Voice Activity Detector) in the VAD option." | |
if inputAudioMaxDuration > 0: | |
ui_description += "\n\n" + "Max audio file length: " + str(inputAudioMaxDuration) + " s" | |
ui_article = "Read the [documentation here](https://huggingface.co/spaces/aadnk/whisper-webui/blob/main/docs/options.md)" | |
demo = gr.Interface(fn=ui.transcribe_webui, description=ui_description, article=ui_article, inputs=[ | |
gr.Dropdown(choices=["tiny", "base", "small", "medium", "large"], value="medium", label="Model"), | |
gr.Dropdown(choices=sorted(LANGUAGES), label="Language"), | |
gr.Text(label="URL (YouTube, etc.)"), | |
gr.Audio(source="upload", type="filepath", label="Upload Audio"), | |
gr.Audio(source="microphone", type="filepath", label="Microphone Input"), | |
gr.Dropdown(choices=["transcribe", "translate"], label="Task"), | |
gr.Dropdown(choices=["none", "silero-vad", "silero-vad-skip-gaps", "periodic-vad"], label="VAD"), | |
gr.Number(label="VAD - Merge Window (s)", precision=0, value=5), | |
gr.Number(label="VAD - Max Merge Size (s)", precision=0, value=150), | |
gr.Number(label="VAD - Padding (s)", precision=None, value=1) | |
], outputs=[ | |
gr.File(label="Download"), | |
gr.Text(label="Transcription"), | |
gr.Text(label="Segments") | |
]) | |
demo.launch(share=share, server_name=server_name) | |
if __name__ == '__main__': | |
create_ui(DEFAULT_INPUT_AUDIO_MAX_DURATION) |