Spaces:
Running
on
Zero
Running
on
Zero
File size: 5,686 Bytes
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import os
import time
import datetime
from tqdm import tqdm
import spaces
import torch
import torch.optim as optim
import gradio as gr
from utils import preprocess_img, preprocess_img_from_path, postprocess_img
from vgg19 import VGG_19
if torch.cuda.is_available(): device = 'cuda'
elif torch.backends.mps.is_available(): device = 'mps'
else: device = 'cpu'
print('DEVICE:', device)
model = VGG_19().to(device)
for param in model.parameters():
param.requires_grad = False
style_files = os.listdir('./style_images')
style_options = {' '.join(style_file.split('.')[0].split('_')): f'./style_images/{style_file}' for style_file in style_files}
@spaces.GPU(duration=20)
def inference(content_image, style_image, style_strength, output_quality, progress=gr.Progress(track_tqdm=True)):
yield None
print('-'*15)
print('DATETIME:', datetime.datetime.now())
print('STYLE:', style_image)
img_size = 1024 if output_quality else 512
content_img, original_size = preprocess_img(content_image, img_size)
content_img = content_img.to(device)
style_img = preprocess_img_from_path(style_options[style_image], img_size)[0].to(device)
print('CONTENT IMG SIZE:', original_size)
print('STYLE STRENGTH:', style_strength)
print('HIGH QUALITY:', output_quality)
iters = 50
# learning rate determined by input
lr = 0.001 + (0.099 / 99) * (style_strength - 1)
alpha = 1
beta = 1
st = time.time()
generated_img = content_img.clone().requires_grad_(True)
optimizer = optim.Adam([generated_img], lr=lr)
for _ in tqdm(range(iters), desc='The magic is happening ✨'):
generated_features = model(generated_img)
content_features = model(content_img)
style_features = model(style_img)
content_loss = 0
style_loss = 0
for generated_feature, content_feature, style_feature in zip(generated_features, content_features, style_features):
batch_size, n_feature_maps, height, width = generated_feature.size()
content_loss += (torch.mean((generated_feature - content_feature) ** 2))
G = torch.mm((generated_feature.view(batch_size * n_feature_maps, height * width)), (generated_feature.view(batch_size * n_feature_maps, height * width)).t())
A = torch.mm((style_feature.view(batch_size * n_feature_maps, height * width)), (style_feature.view(batch_size * n_feature_maps, height * width)).t())
E_l = ((G - A) ** 2)
w_l = 1/5
style_loss += torch.mean(w_l * E_l)
total_loss = alpha * content_loss + beta * style_loss
optimizer.zero_grad()
total_loss.backward()
optimizer.step()
et = time.time()
print('TIME TAKEN:', et-st)
yield postprocess_img(generated_img, original_size)
def set_slider(value):
return gr.update(value=value)
css = """
#container {
margin: 0 auto;
max-width: 550px;
}
"""
with gr.Blocks(css=css) as demo:
gr.HTML("<h1 style='text-align: center; padding: 10px'>🖼️ Neural Style Transfer</h1>")
with gr.Column(elem_id='container'):
content_and_output = gr.Image(show_label=False, type='pil', sources=['upload'], format='jpg', show_download_button=False)
style_dropdown = gr.Radio(choices=list(style_options.keys()), label='Style', value='Starry Night', type='value')
with gr.Accordion('Adjustments', open=False):
with gr.Group():
style_strength_slider = gr.Slider(label='Style Strength', minimum=1, maximum=100, step=1, value=50)
with gr.Row():
low_button = gr.Button('Low').click(fn=lambda: set_slider(10), outputs=[style_strength_slider])
medium_button = gr.Button('Medium').click(fn=lambda: set_slider(50), outputs=[style_strength_slider])
high_button = gr.Button('High').click(fn=lambda: set_slider(100), outputs=[style_strength_slider])
with gr.Group():
output_quality = gr.Checkbox(label='More Realistic', info='Note: If unchecked, the resulting image will have a more artistic flair.', value=True)
submit_button = gr.Button('Submit', variant='primary')
download_button = gr.DownloadButton(label='Download Image', visible=False)
def save_generated_image(img):
output_path = 'generated.jpg'
img.save(output_path)
return output_path
submit_button.click(
fn=inference,
inputs=[content_and_output, style_dropdown, style_strength_slider, output_quality],
outputs=[content_and_output]
).then(
fn=save_generated_image,
inputs=[content_and_output],
outputs=[download_button]
).then(
fn=lambda _: gr.update(visible=True),
inputs=[],
outputs=[download_button]
)
content_and_output.change(
fn=lambda _: gr.update(visible=False),
inputs=[content_and_output],
outputs=[download_button]
)
examples = gr.Examples(
examples=[
['./content_images/TajMahal.jpg', 'Starry Night', 75, True],
['./content_images/GoldenRetriever.jpg', 'Lego Bricks', 50, True],
['./content_images/SeaTurtle.jpg', 'Mosaic', 100, True]
],
inputs=[content_and_output, style_dropdown, style_strength_slider, output_quality]
)
# disable queue
demo.queue = False
demo.config['queue'] = False
demo.launch(show_api=False) |