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import streamlit as st |
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import torch |
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import bitsandbytes |
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import accelerate |
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import scipy |
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from PIL import Image |
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import torch.nn as nn |
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from transformers import Blip2Processor, Blip2ForConditionalGeneration, InstructBlipProcessor, InstructBlipForConditionalGeneration |
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from my_model.object_detection import detect_and_draw_objects |
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from my_model.captioner.image_captioning import get_caption |
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from my_model.utilities import free_gpu_resources |
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def load_caption_model(): |
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st.write("Placeholder for load_caption_model function") |
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return None, None |
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def answer_question(image, question, model, processor): |
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return "Placeholder answer for the question" |
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def detect_and_draw_objects(image, model_name, threshold): |
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return image, "Detected objects" |
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def get_caption(image): |
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return "Generated caption for the image" |
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def free_gpu_resources(): |
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pass |
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sample_images = ["path/to/sample1.jpg", "path/to/sample2.jpg", "path/to/sample3.jpg"] |
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def main(): |
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st.sidebar.title("Navigation") |
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selection = st.sidebar.radio("Go to", ["Home", "Dataset Analysis", "Evaluation Results", "Run Inference", "Dissertation Report", "Object Detection"]) |
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if selection == "Home": |
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display_home() |
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elif selection == "Dissertation Report": |
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display_dissertation_report() |
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elif selection == "Evaluation Results": |
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display_evaluation_results() |
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elif selection == "Dataset Analysis": |
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display_dataset_analysis() |
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elif selection == "Run Inference": |
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run_inference() |
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elif selection == "Object Detection": |
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run_object_detection() |
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def run_inference(): |
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st.title("Run Inference") |
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image_qa_and_object_detection() |
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def image_qa_and_object_detection(): |
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st.subheader("Image-based Q&A") |
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image_qa_app() |
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st.subheader("Object Detection") |
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object_detection_app() |
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def image_qa_app(): |
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if 'images_qa_history' not in st.session_state: |
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st.session_state['images_qa_history'] = [] |
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if st.button('Clear All'): |
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st.session_state['images_qa_history'] = [] |
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st.experimental_rerun() |
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st.write("Or choose from sample images:") |
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for idx, sample_image_path in enumerate(sample_images): |
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if st.button(f"Use Sample Image {idx+1}", key=f"sample_{idx}"): |
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uploaded_image = Image.open(sample_image_path) |
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process_uploaded_image(uploaded_image) |
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uploaded_image = st.file_uploader("Upload an Image", type=["png", "jpg", "jpeg"]) |
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if uploaded_image is not None: |
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image = Image.open(uploaded_image) |
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process_uploaded_image(image) |
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def process_uploaded_image(image): |
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current_image_key = image.filename |
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def object_detection_app(): |
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pass |
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if __name__ == "__main__": |
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main() |
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