import gradio as gr from huggingface_hub import PyTorchModelHubMixin import torch import matplotlib.pyplot as plt import torchvision from networks_fastgan import MyGenerator import click import PIL from image_generator import generate_images def image_generation(model, number_of_images=1): img = generate_images(model) #return f"generating {number_of_images} images from {model}" return img if __name__ == "__main__": description = "This is a web demo of a projected GAN trained on photos of thirty paintings from the series of paintings Welcome home . The abstract expressionism and color field models were initially trained on images from their perspective art directions and then transfer learned to Hana's houses." inputs = gr.inputs.Radio(["Hana Hanak houses", "Hana Hanak houses - abstract expressionism", "Hana Hanak houses - color field"]) outputs = gr.outputs.Image(label="Generated Image", type="pil") #outputs = "text" title = "Projected GAN for painting generation v0.2" article = "

Official projected GAN github repo + paper

" gr.Interface(image_generation, inputs, outputs, title=title, article = article, description = description, analytics_enabled=False).launch(debug=True) app, local_url, share_url = iface.launch()