import gradio as gr from PIL import Image import torch model_dir = "hub/animegan2-pytorch-main" model_dir_weight = "hub/checkpoints/face_paint_512_v1.pt" model2 = torch.hub.load( model_dir, "generator", pretrained=True, progress=False, source="local" ) model1 = torch.load(model_dir_weight) face2paint = torch.hub.load( model_dir, 'face2paint', size=512,side_by_side=False, source="local" ) def inference(img, ver): if ver == 'version 2 (🔺 robustness,🔻 stylization)': out = face2paint(model2, img) else: out = face2paint(model1, img) return out title = "AnimeGANv2" description = "Gradio Demo for AnimeGanv2 Face Portrait. To use it, simply upload your image, or click one of the examples to load them. Read more at the links below. Please use a cropped portrait picture for best results similar to the examples below." article = "

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" examples=[['pictures/groot.jpeg','version 2 (🔺 robustness,🔻 stylization)'],['pictures/gongyoo.jpeg','version 1 (🔺 stylization, 🔻 robustness)']] demo = gr.Interface( fn=inference, inputs=[gr.inputs.Image(type="pil"),gr.inputs.Radio(['version 1 (🔺 stylization, 🔻 robustness)','version 2 (🔺 robustness,🔻 stylization)'], type="value", default='version 2 (🔺 robustness,🔻 stylization)', label='version')], outputs=gr.outputs.Image(type="pil"), title=title, description=description, article=article, examples=examples) demo.launch(server_name="0.0.0.0")