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import streamlit as st |
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from transformers import pipeline |
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def img2text(img): |
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image_to_text_model = pipeline("image-to-text", |
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model="nlpconnect/vit-gpt2-image-captioning") |
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text = image_to_text_model(img)[0]["generated_text"] |
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return text |
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def text2story(text): |
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text_generation_model = pipeline("text-generation", |
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model="openai-community/gpt2") |
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story_text = f"Once upon a time in a land far, far away, {text}" |
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generated_story = text_generation_model(story_text, |
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max_length=100, |
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num_return_sequences=1) |
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return generated_story[0]['generated_text'] |
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def text2audio(story_text): |
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text_to_speech_model = pipeline("text-to-speech", model="facebook/mms-tts-eng") |
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speech_output = text_to_speech_model(story_text) |
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return speech_output |
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st.set_page_config(page_title="Your Image to Audio Story", |
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page_icon="*") |
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st.header("Turn Your Image to Audio Story") |
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uploaded_file = st.file_uploader("Select an Image...", type=["jpg", "png", "jpeg"]) |
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if uploaded_file is not None: |
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print(uploaded_file) |
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bytes_data = uploaded_file.getvalue() |
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with open(uploaded_file.name, "wb") as file: |
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file.write(bytes_data) |
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st.image(uploaded_file, caption="Uploaded Image", use_container_width=True) |
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st.text('Processing img2text...') |
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scenario = img2text(uploaded_file.name) |
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st.write(scenario) |
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st.text('Generating a story...') |
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generated_story = text2story(scenario) |
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st.write(generated_story) |
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st.text('Generating audio data...') |
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audio_data = text2audio(generated_story) |
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if st.button("Play Audio"): |
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st.audio(audio_data['audio'], |
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format="audio/wav", |
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start_time=0, |
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sample_rate=audio_data['sampling_rate']) |