''' Author: Egrt Date: 2022-03-19 10:23:48 LastEditors: Egrt LastEditTime: 2022-03-21 00:05:27 FilePath: \Luuu\app.py ''' import gradio as gr from huggingface_hub import hf_hub_download filepath = hf_hub_download(repo_id="Egrt/Luuuu", filename="GDAL-3.4.1-cp38-cp38-manylinux_2_5_x86_64.whl") import os os.system('pip install {}'.format(filepath)) from zipfile import ZipFile from gis import GIS gis = GIS() # --------模型推理---------- # def inference(filepath): filename, file_list = gis.detect_image(filepath) with ZipFile("result.zip", "w") as zipObj: zipObj.write(file_list[0], "{}.tif".format(filename+'mask')) zipObj.write(file_list[1], "{}.tif".format(filename)) zipObj.write(file_list[2], "{}.pdf".format(filename)) zipObj.write(file_list[3], "{}.cpg".format(filename)) zipObj.write(file_list[4], "{}.dbf".format(filename)) zipObj.write(file_list[5], "{}.shx".format(filename)) zipObj.write(file_list[6], "{}.shp".format(filename)) zipObj.write(file_list[7], "{}.prj".format(filename)) return "result.zip" # --------网页信息---------- # title = "基于帧场学习的多边形建筑提取" description = "目前最先进图像分割模型通常以栅格形式输出分割,但地理信息系统中的应用通常需要矢量多边形。我们在遥感图像中提取建筑物的任务中,将帧场输出添加到深度分割模型中,将预测的帧场与地面实况轮廓对齐,帮助减少深度网络输出与下游任务中输出样式之间的差距。 @Luuuu🐋🐋" article = "

Polygonization-by-Frame-Field-Learning | Github Repo

" example_img_dir = 'images' 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('.png')] gr.Interface( inference, [gr.inputs.Image(type="filepath", label="待检测图片")], gr.outputs.File(label="检测结果"), title=title, description=description, article=article, enable_queue=True, examples=examples ).launch(debug=True)