import os os.system('python setup.py install --user') import argparse import csv import sys sys.path.append("/home/user/.local/lib/python3.8/site-packages/diffvg-0.0.1-py3.8-linux-x86_64.egg") print(sys.path) from pathlib import Path import gradio as gr import torch import yaml from PIL import Image from subprocess import call import torch import cv2 import matplotlib.pyplot as plt import random import argparse import math import errno from tqdm import tqdm import yaml from easydict import EasyDict as edict def run_cmd(command): try: print(command) call(command, shell=True) except KeyboardInterrupt: print("Process interrupted") sys.exit(1) # run_cmd("gcc --version") # run_cmd("pwd") # run_cmd("ls") # run_cmd("git submodule update --init --recursive") # run_cmd("python setup.py install --user") # run_cmd("pip3 list") # import pydiffvg # # print("Sccuessfuly import diffvg ") # run_cmd("pwd") # run_cmd("ls") # run_cmd("git submodule update --init --recursive") # run_cmd("python setup.py install --user") # run_cmd("python main.py --config config/base.yaml --experiment experiment_5x1 --signature smile --target figures/smile.png --log_dir log/") from main import main_func def parse_args(): parser = argparse.ArgumentParser() parser.add_argument('--debug', action='store_true', default=False) parser.add_argument("--config", default="config/base.yaml", type=str) parser.add_argument("--experiment", type=str) parser.add_argument("--seed", type=int) parser.add_argument("--target", type=str, help="target image path") parser.add_argument('--log_dir', metavar='DIR', default="log/debug") parser.add_argument('--initial', type=str, default="random", choices=['random', 'circle']) parser.add_argument('--signature', default="demo", nargs='+', type=str) parser.add_argument('--seginit', nargs='+', type=str) parser.add_argument("--num_segments", type=int, default=4) # parser.add_argument("--num_paths", type=str, default="1,1,1") # parser.add_argument("--num_iter", type=int, default=500) # parser.add_argument('--free', action='store_true') # Please ensure that image resolution is divisible by pool_size; otherwise the performance would drop a lot. # parser.add_argument('--pool_size', type=int, default=40, help="the pooled image size for next path initialization") # parser.add_argument('--save_loss', action='store_true') # parser.add_argument('--save_init', action='store_true') # parser.add_argument('--save_image', action='store_true') # parser.add_argument('--save_video', action='store_true') # parser.add_argument('--print_weight', action='store_true') # parser.add_argument('--circle_init_radius', type=float) cfg = edict() args = parser.parse_args() cfg.debug = args.debug cfg.config = args.config cfg.experiment = args.experiment cfg.seed = args.seed cfg.target = args.target cfg.log_dir = args.log_dir cfg.initial = args.initial cfg.signature = args.signature # set cfg num_segments in command cfg.num_segments = args.num_segments if args.seginit is not None: cfg.seginit = edict() cfg.seginit.type = args.seginit[0] if cfg.seginit.type == 'circle': cfg.seginit.radius = float(args.seginit[1]) return cfg def app_experiment_change(experiment_id): if experiment_id == "add [1, 1, 1, 1, 1] total 5 paths": return "experiment_5x1" elif experiment_id == "add [1, 1, 1, 1, 1, 1, 1, 1] total 8 paths": return "experiment_8x1" elif experiment_id == "add [1,2,4,8,16,32, ...] total 128 paths": return "experiment_exp2_128" elif experiment_id == "add [1,2,4,8,16,32, ...] total 256 paths": return "experiment_exp2_256" cfg_arg = parse_args() def run_live(img, experiment_id, cfg_arg=cfg_arg): experiment = app_experiment_change(experiment_id) cfg_arg.target = img cfg_arg.experiment = experiment img, text = main_func(img, experiment_id, cfg_arg=cfg_arg) return img, text # ROOT_PATH = sys.path[0] # 根目录 # # 模型路径 # model_path = "ultralytics/yolov5" # # 模型名称临时变量 # model_name_tmp = "" # # 设备临时变量 # device_tmp = "" # # 文件后缀 # suffix_list = [".csv", ".yaml"] # def parse_args(known=False): # parser = argparse.ArgumentParser(description="Gradio LIVE") # parser.add_argument( # "--model_name", "-mn", default="yolov5s", type=str, help="model name" # ) # parser.add_argument( # "--model_cfg", # "-mc", # default="./model_config/model_name_p5_all.yaml", # type=str, # help="model config", # ) # parser.add_argument( # "--cls_name", # "-cls", # default="./cls_name/cls_name.yaml", # type=str, # help="cls name", # ) # parser.add_argument( # "--nms_conf", # "-conf", # default=0.5, # type=float, # help="model NMS confidence threshold", # ) # parser.add_argument( # "--nms_iou", "-iou", default=0.45, type=float, help="model NMS IoU threshold" # ) # # parser.add_argument( # "--label_dnt_show", # "-lds", # action="store_false", # default=True, # help="label show", # ) # parser.add_argument( # "--device", # "-dev", # default="cpu", # type=str, # help="cuda or cpu, hugging face only cpu", # ) # parser.add_argument( # "--inference_size", "-isz", default=640, type=int, help="model inference size" # ) # # args = parser.parse_known_args()[0] if known else parser.parse_args() # return args # # 模型加载 # def model_loading(model_name, device): # # # 加载本地模型 # model = torch.hub.load(model_path, model_name, force_reload=True, device=device) # # return model # # 检测信息 # def export_json(results, model, img_size): # # return [ # [ # { # "id": int(i), # "class": int(result[i][5]), # "class_name": model.model.names[int(result[i][5])], # "normalized_box": { # "x0": round(result[i][:4].tolist()[0], 6), # "y0": round(result[i][:4].tolist()[1], 6), # "x1": round(result[i][:4].tolist()[2], 6), # "y1": round(result[i][:4].tolist()[3], 6), # }, # "confidence": round(float(result[i][4]), 2), # "fps": round(1000 / float(results.t[1]), 2), # "width": img_size[0], # "height": img_size[1], # } # for i in range(len(result)) # ] # for result in results.xyxyn # ] # def yolo_det(img, experiment_id, device=None, model_name=None, inference_size=None, conf=None, iou=None, label_opt=None, model_cls=None): # # global model, model_name_tmp, device_tmp # # if model_name_tmp != model_name: # # 模型判断,避免反复加载 # model_name_tmp = model_name # model = model_loading(model_name_tmp, device) # elif device_tmp != device: # device_tmp = device # model = model_loading(model_name_tmp, device) # # # -----------模型调参----------- # model.conf = conf # NMS 置信度阈值 # model.iou = iou # NMS IOU阈值 # model.max_det = 1000 # 最大检测框数 # model.classes = model_cls # 模型类别 # # results = model(img, size=inference_size) # 检测 # results.render(labels=label_opt) # 渲染 # # det_img = Image.fromarray(results.imgs[0]) # 检测图片 # # det_json = export_json(results, model, img.size)[0] # 检测信息 # # return det_img, det_json # def run_cmd(command): # try: # print(command) # call(command, shell=True) # except KeyboardInterrupt: # print("Process interrupted") # sys.exit(1) # # run_cmd("gcc --version") # run_cmd("pwd") # run_cmd("ls") # run_cmd("git submodule update --init --recursive") # run_cmd("python setup.py install --user") # run_cmd("ls") # run_cmd("python main.py --config config/base.yaml --experiment experiment_5x1 --signature smile --target figures/smile.png --log_dir log/") # # yaml文件解析 # def yaml_parse(file_path): # return yaml.safe_load(open(file_path, "r", encoding="utf-8").read()) # # # # yaml csv 文件解析 # def yaml_csv(file_path, file_tag): # file_suffix = Path(file_path).suffix # if file_suffix == suffix_list[0]: # # 模型名称 # file_names = [i[0] for i in list(csv.reader(open(file_path)))] # csv版 # elif file_suffix == suffix_list[1]: # # 模型名称 # file_names = yaml_parse(file_path).get(file_tag) # yaml版 # else: # print(f"{file_path}格式不正确!程序退出!") # sys.exit() # # return file_names def main(args): gr.close_all() # -------------------Inputs------------------- inputs_img = gr.inputs.Image(type="pil", label="Input Image") experiment_id = gr.inputs.Radio( choices=[ "add [1, 1, 1, 1, 1] total 5 paths", "add [1, 1, 1, 1, 1, 1, 1, 1] total 8 paths", "add [1,2,4,8,16,32, ...] total 128 paths", "add [1,2,4,8,16,32, ...] total 256 paths"], type="value", default="add [1, 1, 1, 1, 1] total 5 paths", label="Path Adding Scheduler" ) # inputs inputs = [ inputs_img, # input image experiment_id, # path adding scheduler ] # outputs outputs = gr.outputs.Image(type="numpy", label="Vectorized Image") outputs02 = gr.outputs.JSON(label="检测信息") # title title = "LIVE: Towards Layer-wise Image Vectorization" # description description = "