''' Author: Egrt Date: 2022-01-13 13:34:10 LastEditors: [egrt] LastEditTime: 2022-04-08 21:24:36 FilePath: \LicenseGAN\app.py ''' import os from PIL import Image from esrgan import ESRGAN import gradio as gr import os esrgan = ESRGAN() # --------模型推理---------- # def inference(img): lr_shape = [32, 56] img = img.resize((lr_shape[1], lr_shape[0]), Image.BICUBIC) r_image = esrgan.generate_1x1_image(img) return r_image # --------网页信息---------- # title = "车牌超分辨率重建" description = "使用生成对抗网络对低分辨率车牌图片进行八倍的超分辨率重建,能够有效的恢复出车牌号。 @西南科技大学智能控制与图像处理研究室" article = "

LicenseGAN: Image Restoration Using Swin Transformer | Github Repo

" example_img_dir = 'img' example_img_name = os.listdir(example_img_dir) examples=[[os.path.join(example_img_dir, image_path)] for image_path in example_img_name if image_path.endswith(('.jpg', '.png', '.tif'))] gr.Interface( inference, [gr.inputs.Image(type="pil", label="Input")], gr.outputs.Image(type="pil", label="Output"), title=title, description=description, article=article, enable_queue=True, examples=examples ).launch(debug=True)