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import streamlit as st |
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import moviepy.editor as mp |
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import speech_recognition as sr |
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from pydub import AudioSegment |
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import tempfile |
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import os |
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import io |
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# Function to convert video to audio |
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def video_to_audio(video_file): |
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# Load the video using moviepy |
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video = mp.VideoFileClip(video_file) |
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# Extract audio |
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audio = video.audio |
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temp_audio_path = tempfile.mktemp(suffix=".mp3") |
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# Write the audio to a file |
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audio.write_audiofile(temp_audio_path) |
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return temp_audio_path |
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# Function to convert MP3 audio to WAV |
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def convert_mp3_to_wav(mp3_file): |
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# Load the MP3 file using pydub |
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audio = AudioSegment.from_mp3(mp3_file) |
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# Create a temporary WAV file |
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temp_wav_path = tempfile.mktemp(suffix=".wav") |
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# Export the audio to the temporary WAV file |
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audio.export(temp_wav_path, format="wav") |
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return temp_wav_path |
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# Function to transcribe audio to text |
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def transcribe_audio(audio_file): |
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# Initialize recognizer |
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recognizer = sr.Recognizer() |
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# Load the audio file using speech_recognition |
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audio = sr.AudioFile(audio_file) |
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with audio as source: |
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audio_data = recognizer.record(source) |
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try: |
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# Transcribe the audio data to text using Google Web Speech API |
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text = recognizer.recognize_google(audio_data) |
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return text |
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except sr.UnknownValueError: |
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return "Audio could not be understood." |
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except sr.RequestError: |
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return "Could not request results from Google Speech Recognition service." |
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# Streamlit app layout |
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st.title("Video and Audio to Text Transcription") |
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st.write("Upload a video or audio file to convert it to transcription.") |
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# Create tabs to separate video and audio uploads |
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tab = st.selectbox("Select the type of file to upload", ["Video", "Audio"]) |
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if tab == "Video": |
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# File uploader for video |
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uploaded_video = st.file_uploader("Upload Video", type=["mp4", "mov", "avi"]) |
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if uploaded_video is not None: |
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# Save the uploaded video file temporarily |
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with tempfile.NamedTemporaryFile(delete=False) as tmp_video: |
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tmp_video.write(uploaded_video.read()) |
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tmp_video_path = tmp_video.name |
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# Add an "Analyze Video" button |
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if st.button("Analyze Video"): |
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with st.spinner("Processing video... Please wait."): |
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# Convert video to audio |
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audio_file = video_to_audio(tmp_video_path) |
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# Convert the extracted MP3 audio to WAV |
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wav_audio_file = convert_mp3_to_wav(audio_file) |
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# Transcribe audio to text |
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transcription = transcribe_audio(wav_audio_file) |
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# Show the transcription |
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st.text_area("Transcription", transcription, height=300) |
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# Store transcription and audio file in session state |
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st.session_state.transcription = transcription |
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# Store the audio file as a BytesIO object in memory |
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with open(wav_audio_file, "rb") as f: |
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audio_data = f.read() |
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st.session_state.wav_audio_file = io.BytesIO(audio_data) |
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# Cleanup temporary files |
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os.remove(tmp_video_path) |
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os.remove(audio_file) |
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# Check if transcription and audio file are stored in session state |
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if 'transcription' in st.session_state and 'wav_audio_file' in st.session_state: |
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# Provide the audio file to the user for download |
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st.audio(st.session_state.wav_audio_file, format='audio/wav') |
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# Add download buttons for the transcription and audio |
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# Downloadable transcription file |
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st.download_button( |
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label="Download Transcription", |
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data=st.session_state.transcription, |
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file_name="transcription.txt", |
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mime="text/plain" |
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) |
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# Downloadable audio file |
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st.download_button( |
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label="Download Audio", |
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data=st.session_state.wav_audio_file, |
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file_name="converted_audio.wav", |
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mime="audio/wav" |
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) |
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elif tab == "Audio": |
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# File uploader for audio |
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uploaded_audio = st.file_uploader("Upload Audio", type=["wav", "mp3"]) |
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if uploaded_audio is not None: |
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# Save the uploaded audio file temporarily |
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with tempfile.NamedTemporaryFile(delete=False) as tmp_audio: |
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tmp_audio.write(uploaded_audio.read()) |
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tmp_audio_path = tmp_audio.name |
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# Add an "Analyze Audio" button |
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if st.button("Analyze Audio"): |
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with st.spinner("Processing audio... Please wait."): |
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# Convert audio to WAV if it's in MP3 format |
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if uploaded_audio.type == "audio/mpeg": |
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wav_audio_file = convert_mp3_to_wav(tmp_audio_path) |
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else: |
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wav_audio_file = tmp_audio_path |
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# Transcribe audio to text |
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transcription = transcribe_audio(wav_audio_file) |
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# Show the transcription |
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st.text_area("Transcription", transcription, height=300) |
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# Store transcription in session state |
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st.session_state.transcription_audio = transcription |
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# Store the audio file as a BytesIO object in memory |
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with open(wav_audio_file, "rb") as f: |
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audio_data = f.read() |
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st.session_state.wav_audio_file_audio = io.BytesIO(audio_data) |
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# Cleanup temporary audio file |
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os.remove(tmp_audio_path) |
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# Check if transcription and audio file are stored in session state |
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if 'transcription_audio' in st.session_state and 'wav_audio_file_audio' in st.session_state: |
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# Provide the audio file to the user for download |
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st.audio(st.session_state.wav_audio_file_audio, format='audio/wav') |
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# Add download buttons for the transcription and audio |
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# Downloadable transcription file |
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st.download_button( |
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label="Download Transcription", |
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data=st.session_state.transcription_audio, |
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file_name="transcription_audio.txt", |
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mime="text/plain" |
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) |
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# Downloadable audio file |
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st.download_button( |
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label="Download Audio", |
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data=st.session_state.wav_audio_file_audio, |
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file_name="converted_audio_audio.wav", |
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mime="audio/wav" |
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) |
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