ragavsachdeva's picture
Update app.py
8cbc30d verified
raw
history blame contribute delete
No virus
6.36 kB
import streamlit as st
from transformers import AutoModel
from PIL import Image
import torch
import numpy as np
import urllib.request
@st.cache_resource
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
@st.cache_data
def read_image_as_np_array(image_path):
if "http" in image_path:
image = Image.open(urllib.request.urlopen(image_path)).convert("L").convert("RGB")
else:
image = Image.open(image_path).convert("L").convert("RGB")
image = np.array(image)
return image
@st.cache_data
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
@st.cache_data
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()
st.markdown(""" <style> .title-container { background-color: #0d1117; padding: 20px; border-radius: 10px; margin: 20px; } .title { font-size: 2em; text-align: center; color: #fff; font-family: 'Comic Sans MS', cursive; text-transform: uppercase; letter-spacing: 0.1em; padding: 0.5em 0 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 not None:
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)