text stringlengths 0 93.6k |
|---|
city_receiveCash(m_ck) |
else: |
count_ck, count_u = [], [] |
if not ccfxj_help: |
print("您未配置助力的账号,\n助力账号名称:可填用户名 或 pin的值不要; \nenv 设置 export ccfxj_help=\"Curtinlv&用户2\" 多账号&分隔\n本次退出。") |
sys.exit(0) |
for ckname in ccfxj_help: |
try: |
ckNum = userNameList.index(ckname) |
except Exception as e: |
try: |
ckNum = userNameList.index(unquote(ckname)) |
except: |
print(f"请检查被助力账号【{ckname}】名称是否正确?提示:助力名字可填pt_pin的值、也可以填账号名。") |
continue |
userName = userNameList[ckNum] |
try: |
invid, poolMoney, cityCodeList, roundNumList = getInviteId(cookiesList[ckNum]) |
except: |
print(f"账号异常【{ckname}】,无法获取助力码,请手动分享~") |
continue |
msg(f"### 本次助力车头:{userName}") |
count_ck.append(cookiesList[ckNum]) |
count_u.append(ckname) |
z_cookiesList, z_userNameList = delckValue(z_cookiesList, z_userNameList) |
for ck,user in zip(z_cookiesList,z_userNameList): |
if userName == user: |
continue |
zhuli(ck, invid, user) |
city_receiveCash(cookiesList[ckNum]) |
msg("城城分现金当前余额:") |
msg("*"*40) |
if ccfxj_isOrder == "true": |
for ck,user in zip(cookiesList,userNameList): |
invid, poolMoney, cityCodeList, roundNumList = getInviteId(ck) |
msg(f"用户[{user}]\t待提现{poolMoney}") |
else: |
for ck,user in zip(count_ck,count_u): |
invid, poolMoney, cityCodeList, roundNumList = getInviteId(ck) |
msg(f"用户[{user}]\t待提现{poolMoney}") |
msg("*" * 40) |
msg("\n***************\n城城分现金入口:\n25:/¥81H1VBRi2hU6z%☆") |
if isNotice == "true": |
send(scriptName, msg_info) |
if __name__ == '__main__': |
start() |
# <FILESEP> |
''' SSMA: Self-Supervised Model Adaptation for Multimodal Semantic Segmentation |
Copyright (C) 2018 Abhinav Valada, Rohit Mohan and Wolfram Burgard |
This program is free software: you can redistribute it and/or modify |
it under the terms of the GNU General Public License as published by |
the Free Software Foundation, either version 3 of the License, or |
(at your option) any later version. |
This program is distributed in the hope that it will be useful, |
but WITHOUT ANY WARRANTY; without even the implied warranty of |
MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the |
GNU General Public License for more details.''' |
import argparse |
import datetime |
import importlib |
import os |
import numpy as np |
import tensorflow as tf |
import yaml |
from dataset.helper import * |
PARSER = argparse.ArgumentParser() |
PARSER.add_argument('-c', '--config', default='config/cityscapes_test.config') |
def test_func(config): |
os.environ['CUDA_VISIBLE_DEVICES'] = config['gpu_id'] |
module = importlib.import_module('models.' + config['model']) |
model_func = getattr(module, config['model']) |
data_list, iterator = get_test_data(config) |
model = model_func(num_classes=config['num_classes'], training=False) |
images_pl = tf.placeholder(tf.float32, [None, config['height'], config['width'], 3]) |
images1_pl = tf.placeholder(tf.float32, [None, config['height'], config['width'], 3]) |
model.build_graph(images_pl, images1_pl) |
config1 = tf.ConfigProto() |
config1.gpu_options.allow_growth = True |
sess = tf.Session(config=config1) |
sess.run(tf.global_variables_initializer()) |
import_variables = tf.get_collection(tf.GraphKeys.GLOBAL_VARIABLES) |
print 'total_variables_loaded:', len(import_variables) |
saver = tf.train.Saver(import_variables) |
saver.restore(sess, config['checkpoint']) |
sess.run(iterator.initializer) |
step = 0 |
total_num = 0 |
output_matrix = np.zeros([config['num_classes'], 3]) |
while 1: |
try: |
img, label, img1 = sess.run([data_list[0], data_list[1], data_list[2]]) |
feed_dict = {images_pl : img, images1_pl : img1} |
probabilities = sess.run([model.softmax], feed_dict=feed_dict) |
prediction = np.argmax(probabilities[0], 3) |
gt = np.argmax(label, 3) |
prediction[gt == 0] = 0 |
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