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import streamlit as st | |
from transformers import AutoModel | |
from PIL import Image | |
import torch | |
import numpy as np | |
def load_model(): | |
model = AutoModel.from_pretrained("ragavsachdeva/magi", trust_remote_code=True) | |
device = "cuda" if torch.cuda.is_available() else "cpu" | |
model.to(device) | |
return model | |
def read_image_as_np_array(image_path): | |
with open(image_path, "rb") as file: | |
image = Image.open(file).convert("L").convert("RGB") | |
image = np.array(image) | |
return image | |
def predict_detections_and_associations( | |
image_path, | |
character_detection_threshold, | |
panel_detection_threshold, | |
text_detection_threshold, | |
character_character_matching_threshold, | |
text_character_matching_threshold, | |
): | |
image = read_image_as_np_array(image_path) | |
with torch.no_grad(): | |
result = model.predict_detections_and_associations( | |
[image], | |
character_detection_threshold=character_detection_threshold, | |
panel_detection_threshold=panel_detection_threshold, | |
text_detection_threshold=text_detection_threshold, | |
character_character_matching_threshold=character_character_matching_threshold, | |
text_character_matching_threshold=text_character_matching_threshold, | |
)[0] | |
return result | |
def predict_ocr( | |
image_path, | |
character_detection_threshold, | |
panel_detection_threshold, | |
text_detection_threshold, | |
character_character_matching_threshold, | |
text_character_matching_threshold, | |
): | |
if not generate_transcript: | |
return | |
image = read_image_as_np_array(image_path) | |
result = predict_detections_and_associations( | |
path_to_image, | |
character_detection_threshold, | |
panel_detection_threshold, | |
text_detection_threshold, | |
character_character_matching_threshold, | |
text_character_matching_threshold, | |
) | |
text_bboxes_for_all_images = [result["texts"]] | |
with torch.no_grad(): | |
ocr_results = model.predict_ocr([image], text_bboxes_for_all_images) | |
return ocr_results | |
model = load_model() | |
path_to_image = "/scratch/shared/beegfs/rs/comics/mangas/bakuman/1.0/p_00009.png" | |
st.markdown("<style>.title{font-size:2em;text-align:center;color:#fff;font-family:'Comic Sans MS',cursive;text-transform:uppercase;letter-spacing:.1em;padding:.5em 0 .2em;background:0 0}.title span{background:-webkit-linear-gradient(45deg,#6495ed,#4169e1);-webkit-background-clip:text;-webkit-text-fill-color:transparent}.subheading{font-size:1.5em;text-align:center;color:#ddd;font-family:'Comic Sans MS',cursive}.affil,.authors{font-size:1em;text-align:center;color:#ddd;font-family:'Comic Sans MS',cursive}.authors{padding-top:1em}</style><div class='title-container'> <div class='title'> The <span>Ma</span>n<span>g</span>a Wh<span>i</span>sperer </div> <div class='subheading'> Automatically Generating Transcriptions for Comics </div> <div class='authors'> Ragav Sachdeva and Andrew Zisserman </div> <div class='affil'> University of Oxford </div></div>", unsafe_allow_html=True) | |
path_to_image = st.file_uploader("Upload an image", type=["png", "jpg", "jpeg"]) | |
st.sidebar.markdown("**Mode**") | |
generate_detections_and_associations = st.sidebar.toggle("Generate detections and associations", True) | |
generate_transcript = st.sidebar.toggle("Generate transcript (slower)", False) | |
st.sidebar.markdown("**Hyperparameters**") | |
input_character_detection_threshold = st.sidebar.slider('Character detection threshold', 0.0, 1.0, 0.30, step=0.01) | |
input_panel_detection_threshold = st.sidebar.slider('Panel detection threshold', 0.0, 1.0, 0.2, step=0.01) | |
input_text_detection_threshold = st.sidebar.slider('Text detection threshold', 0.0, 1.0, 0.25, step=0.01) | |
input_character_character_matching_threshold = st.sidebar.slider('Character-character matching threshold', 0.0, 1.0, 0.7, step=0.01) | |
input_text_character_matching_threshold = st.sidebar.slider('Text-character matching threshold', 0.0, 1.0, 0.4, step=0.01) | |
if path_to_image is None: | |
st.stop() | |
image = read_image_as_np_array(path_to_image) | |
st.markdown("**Prediction**") | |
if generate_detections_and_associations or generate_transcript: | |
result = predict_detections_and_associations( | |
path_to_image, | |
input_character_detection_threshold, | |
input_panel_detection_threshold, | |
input_text_detection_threshold, | |
input_character_character_matching_threshold, | |
input_text_character_matching_threshold, | |
) | |
if generate_transcript: | |
ocr_results = predict_ocr( | |
path_to_image, | |
input_character_detection_threshold, | |
input_panel_detection_threshold, | |
input_text_detection_threshold, | |
input_character_character_matching_threshold, | |
input_text_character_matching_threshold, | |
) | |
if generate_detections_and_associations and generate_transcript: | |
col1, col2 = st.columns(2) | |
output = model.visualise_single_image_prediction(image, result) | |
col1.image(output) | |
text_bboxes_for_all_images = [result["texts"]] | |
ocr_results = model.predict_ocr([image], text_bboxes_for_all_images) | |
transcript = model.generate_transcript_for_single_image(result, ocr_results[0]) | |
col2.text(transcript) | |
elif generate_detections_and_associations: | |
output = model.visualise_single_image_prediction(image, result) | |
st.image(output) | |
elif generate_transcript: | |
transcript = model.generate_transcript_for_single_image(result, ocr_results[0]) | |
st.text(transcript) | |