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import gradio as gr
import os
import random
import datetime
from utils import *
# file_url = "https://storage.googleapis.com/derendering_model/derendering_supp.zip"
# filename = "derendering_supp.zip"
# download_file(file_url, filename)
# unzip_file(filename)
print("Downloaded and unzipped the file.")
diagram = get_svg_content("derendering_supp/derender_diagram.svg")
org = get_svg_content("org/cor.svg")
org_content = f"""
{org}
"""
def demo(Dataset, Model, Output_Format):
if Model == "Small-i":
inkml_path = f"./derendering_supp/small-i_{Dataset}_inkml"
elif Model == "Small-p":
inkml_path = f"./derendering_supp/small-p_{Dataset}_inkml"
elif Model == "Large-i":
inkml_path = f"./derendering_supp/large-i_{Dataset}_inkml"
path = f"./derendering_supp/{Dataset}/images_sample"
samples = os.listdir(path)
# Randomly pick a sample
picked_samples = random.sample(samples, min(1, len(samples)))
query_modes = ["d+t", "r+d", "vanilla"]
plot_title = {"r+d": "Recognized: ", "d+t": "OCR Input: ", "vanilla": ""}
text_outputs = []
img_outputs = []
video_outputs = []
now = datetime.datetime.now()
now = now.strftime("%Y-%m-%d %H:%M:%S")
print(
now,
"Taking sample from dataset:",
Dataset,
"and model:",
Model,
"with output format:",
Output_Format,
)
for name in picked_samples:
img_path = os.path.join(path, name)
img = load_and_pad_img_dir(img_path)
for mode in query_modes:
example_id = name.strip(".png")
inkml_file = os.path.join(inkml_path, mode, example_id + ".inkml")
text_field = parse_inkml_annotations(inkml_file)["textField"]
output_text = f"{plot_title[mode]}{text_field}"
# Text output for three modes
# d+t: OCR recognition input to the model
# r+d: Recognition from the model
# vanilla: None
text_outputs.append(output_text)
ink = inkml_to_ink(inkml_file)
if Output_Format == "Image+Video":
video_filename = mode + ".mp4"
plot_ink_to_video(ink, video_filename, input_image=img)
video_outputs.append(video_filename)
else:
video_outputs.append(None)
fig, ax = plt.subplots()
ax.axis("off")
plot_ink(ink, ax, input_image=img)
buf = BytesIO()
fig.savefig(buf, format="png", bbox_inches="tight")
plt.close(fig)
buf.seek(0)
res = Image.open(buf)
img_outputs.append(res)
return (
img,
text_outputs[0],
img_outputs[0],
video_outputs[0],
text_outputs[1],
img_outputs[1],
video_outputs[1],
text_outputs[2],
img_outputs[2],
video_outputs[2],
)
with gr.Blocks() as app:
gr.HTML(org_content)
gr.Markdown(
f"""
# InkSight: Offline-to-Online Handwriting Conversion by Learning to Read and Write<br>
<div>{diagram}</div>
π This demo showcases the outputs of <b>Small-i</b>, <b>Small-p</b>, and <b>Large-i</b> on three public datasets (100 samples each).<br>
βΉοΈ Choose a model variant and dataset, then click 'Sample' to see an input with its corresponding outputs for all three inference types.<br>
π Choose the output format: Image or Image+Video. While showing only images are faster, videos can demonstrate the writing process of the inks.<br>
"""
)
with gr.Row():
dataset = gr.Dropdown(
["IMGUR5K", "IAM", "HierText"], label="Dataset", value="HierText"
)
model = gr.Dropdown(
["Small-i", "Large-i", "Small-p"],
label="InkSight Model Variant",
value="Small-i",
)
output_format = gr.Dropdown(
["Image", "Image+Video"], label="Output Format", value="Image"
)
im = gr.Image(label="Input Image")
with gr.Row():
d_t_img = gr.Image(label="Derender with Text")
r_d_img = gr.Image(label="Recognize and Derender")
vanilla_img = gr.Image(label="Vanilla")
with gr.Row():
d_t_text = gr.Textbox(
label="OCR recognition input to the model", interactive=False
)
r_d_text = gr.Textbox(label="Recognition from the model", interactive=False)
vanilla_text = gr.Textbox(label="Vanilla", interactive=False)
with gr.Row():
d_t_vid = gr.Video(label="Derender with Text", autoplay=True)
r_d_vid = gr.Video(label="Recognize and Derender", autoplay=True)
vanilla_vid = gr.Video(label="Vanilla", autoplay=True)
with gr.Row():
btn_sub = gr.Button("Sample")
btn_sub.click(
fn=demo,
inputs=[dataset, model, output_format],
outputs=[
im,
d_t_text,
d_t_img,
d_t_vid,
r_d_text,
r_d_img,
r_d_vid,
vanilla_text,
vanilla_img,
vanilla_vid,
],
)
app.launch()
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