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SimSwapPlus/test_scripts/tester_FastNST.py
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chenxuanhong 3783ef0e75 init
2022-01-10 15:03:58 +08:00

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Python

#!/usr/bin/env python3
# -*- coding:utf-8 -*-
#############################################################
# File: tester_commonn.py
# Created Date: Saturday July 3rd 2021
# Author: Chen Xuanhong
# Email: chenxuanhongzju@outlook.com
# Last Modified: Tuesday, 12th October 2021 8:22:37 pm
# Modified By: Chen Xuanhong
# Copyright (c) 2021 Shanghai Jiao Tong University
#############################################################
import os
import cv2
import time
import torch
from utilities.utilities import tensor2img
# from utilities.Reporter import Reporter
from tqdm import tqdm
class Tester(object):
def __init__(self, config, reporter):
self.config = config
# logger
self.reporter = reporter
#============build evaluation dataloader==============#
print("Prepare the test dataloader...")
dlModulename = config["test_dataloader"]
package = __import__("data_tools.test_dataloader_%s"%dlModulename, fromlist=True)
dataloaderClass = getattr(package, 'TestDataset')
dataloader = dataloaderClass(config["test_data_path"],
1,
["png","jpg"])
self.test_loader= dataloader
self.test_iter = len(dataloader)
# if len(dataloader)%config["batch_size"]>0:
# self.test_iter+=1
def __init_framework__(self):
'''
This function is designed to define the framework,
and print the framework information into the log file
'''
#===============build models================#
print("build models...")
# TODO [import models here]
model_config = self.config["model_configs"]
script_name = self.config["com_base"] + model_config["g_model"]["script"]
class_name = model_config["g_model"]["class_name"]
package = __import__(script_name, fromlist=True)
network_class = getattr(package, class_name)
# TODO replace below lines to define the model framework
self.network = network_class(**model_config["g_model"]["module_params"])
# print and recorde model structure
self.reporter.writeInfo("Model structure:")
self.reporter.writeModel(self.network.__str__())
# train in GPU
if self.config["cuda"] >=0:
self.network = self.network.cuda()
model_path = os.path.join(self.config["project_checkpoints"],
"epoch%d_%s.pth"%(self.config["checkpoint_epoch"],
self.config["checkpoint_names"]["generator_name"]))
self.network.load_state_dict(torch.load(model_path))
# self.network.load_state_dict(torch.load(pathwocao))
print('loaded trained backbone model epoch {}...!'.format(self.config["project_checkpoints"]))
def test(self):
# save_result = self.config["saveTestResult"]
save_dir = self.config["test_samples_path"]
ckp_epoch = self.config["checkpoint_epoch"]
version = self.config["version"]
batch_size = self.config["batch_size"]
win_size = self.config["model_configs"]["g_model"]["module_params"]["window_size"]
# models
self.__init_framework__()
total = len(self.test_loader)
print("total:", total)
# Start time
import datetime
print("Start to test at %s"%(datetime.datetime.now().strftime('%Y-%m-%d %H:%M:%S')))
print('Start =================================== test...')
start_time = time.time()
self.network.eval()
with torch.no_grad():
for _ in tqdm(range(total)):
contents, img_names = self.test_loader()
B, C, H, W = contents.shape
crop_h = H - H%32
crop_w = W - W%32
crop_s = min(crop_h, crop_w)
contents = contents[:,:,(H//2 - crop_s//2):(crop_s//2 + H//2),
(W//2 - crop_s//2):(crop_s//2 + W//2)]
if self.config["cuda"] >=0:
contents = contents.cuda()
res = self.network(contents, (crop_s, crop_s))
print("res shape:", res.shape)
res = tensor2img(res.cpu())
temp_img = res[0,:,:,:]
temp_img = cv2.cvtColor(temp_img, cv2.COLOR_RGB2BGR)
print(save_dir)
print(img_names[0])
cv2.imwrite(os.path.join(save_dir,'{}_version_{}_step{}.png'.format(
img_names[0], version, ckp_epoch)),temp_img)
elapsed = time.time() - start_time
elapsed = str(datetime.timedelta(seconds=elapsed))
print("Elapsed [{}]".format(elapsed))