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import argparse
import logging
import torch
import torch.nn as nn
from torch import cuda
from torch.autograd import Variable
from torch.utils.data import DataLoader,Dataset
import torchvision
import torchvision.datasets as dset
import torchvision.transforms as transforms
import torchvision.utils
from PIL import Image
import torch.nn.functional as F
import matplotlib.pyplot as plt
import numpy as np
import random
from custom_transform import CustomResize
from custom_transform import CustomToTensor
from AD_Standard_CNN_Dataset import AD_Standard_CNN_Dataset
from cnn_3d_with_ae import CNN
logging.basicConfig(
format='%(asctime)s %(levelname)s: %(message)s',
datefmt='%Y-%m-%d %H:%M:%S', level=logging.INFO)
parser = argparse.ArgumentParser(description="Starter code for CNN .")
parser.add_argument("--epochs", default=20, type=int,
help="Epochs through the data. (default=20)")
parser.add_argument("--learning_rate", "-lr", default=1e-3, type=float,
help="Learning rate of the optimization. (default=0.01)")
parser.add_argument('--weight_decay', '--wd', default=1e-4, type=float,
metavar='W', help='weight decay (default: 1e-4)')
parser.add_argument("--batch_size", default=1, type=int,
help="Batch size for training. (default=1)")
parser.add_argument("--gpuid", default=[0], nargs='+', type=int,
help="ID of gpu device to use. Empty implies cpu usage.")
parser.add_argument("--autoencoder", default=True, type=bool,
help="Whether to use the parameters from pretrained autoencoder.")
parser.add_argument("--num_classes", default=2, type=int,
help="The number of classes, 2 or 3.")
parser.add_argument("--estop", default=1e-5, type=float,
help="Early stopping criteria on the development set. (default=1e-2)")
parser.add_argument("--noise", default=True, type=bool,
help="Whether to add gaussian noise to scans.")
# feel free to add more arguments as you need
def main(options):
# Path configuration
if options.num_classes == 2:
TRAINING_PATH = 'train_2C_new.txt'
TESTING_PATH = 'validation_2C_new.txt'
else:
TRAINING_PATH = 'train.txt'
TESTING_PATH = 'test.txt'
IMG_PATH = './NewWhole'
trg_size = (121, 145, 121)
# transformations = transforms.Compose([CustomResize("CNN", trg_size),
# CustomToTensor("CNN")
# ])
dset_train = AD_Standard_CNN_Dataset(IMG_PATH, TRAINING_PATH, noise=True)
dset_test = AD_Standard_CNN_Dataset(IMG_PATH, TESTING_PATH, noise=False)
# Use argument load to distinguish training and testing
train_loader = DataLoader(dset_train,
batch_size = options.batch_size,
shuffle = True,
num_workers = 4,
drop_last = True
)
test_loader = DataLoader(dset_test,
batch_size = options.batch_size,
shuffle = False,
num_workers = 4,
drop_last=True
)
use_cuda = (len(options.gpuid) >= 1)
# if options.gpuid:
# cuda.set_device(options.gpuid[0])
# Training process
model = CNN(options.num_classes)
if use_cuda > 0:
model = model.cuda()
else:
model.cpu()
if options.autoencoder:
pretrained_ae = torch.load("./autoencoder_pretrained_model39")
model.state_dict()['conv1.weight'] = pretrained_ae['encoder.weight'].view(410,1,7,7,7)
model.state_dict()['conv1.bias'] = pretrained_ae['encoder.bias']
for p in model.conv1.parameters():
p.requires_grad = False
criterion = torch.nn.NLLLoss()
lr = options.learning_rate
optimizer = torch.optim.Adam(filter(lambda x: x.requires_grad, model.parameters()), lr, weight_decay=options.weight_decay)
# main training loop
last_dev_loss = 1e-4
max_acc = 0
max_epoch = 0
f1 = open("cnn_autoencoder_loss_train", 'a')
f2 = open("cnn_autoencoder_loss_dev", 'a')
for epoch_i in range(options.epochs):
logging.info("At {0}-th epoch.".format(epoch_i))
train_loss = 0.0
correct_cnt = 0.0
for it, train_data in enumerate(train_loader):
data_dic = train_data
if use_cuda:
imgs, labels = Variable(data_dic['image']).cuda(), Variable(data_dic['label']).cuda()
else:
imgs, labels = Variable(data_dic['image']), Variable(data_dic['label'])
# add channel dimension: (batch_size, D, H ,W) to (batch_size, 1, D, H ,W)
# since 3D convolution requires 5D tensors
img_input = imgs#.unsqueeze(1)
integer_encoded = labels.data.cpu().numpy()
# target should be LongTensor in loss function
ground_truth = Variable(torch.from_numpy(integer_encoded)).long()
if use_cuda:
ground_truth = ground_truth.cuda()
train_output = model(img_input)
train_prob_predict = F.softmax(train_output, dim=1)
_, predict = train_prob_predict.topk(1)
loss = criterion(train_output, ground_truth)
train_loss += loss
correct_this_batch = (predict.squeeze(1) == ground_truth).sum().float()
correct_cnt += correct_this_batch
accuracy = float(correct_this_batch) / len(ground_truth)
logging.info("batch {0} training loss is : {1:.5f}".format(it, loss.data[0]))
logging.info("batch {0} training accuracy is : {1:.5f}".format(it, accuracy))
f1.write("batch {0} training loss is : {1:.5f}\n".format(it, loss.data[0]))
f1.write("batch {0} training accuracy is : {1:.5f}\n".format(it, loss.data[0]))
optimizer.zero_grad()
loss.backward()
optimizer.step()
train_avg_loss = train_loss / (len(dset_train) / options.batch_size)
train_avg_acu = float(correct_cnt) / len(dset_train)
logging.info("Average training loss is {0:.5f} at the end of epoch {1}".format(train_avg_loss.data[0], epoch_i))
logging.info("Average training accuracy is {0:.5f} at the end of epoch {1}".format(train_avg_acu, epoch_i))
# validation -- this is a crude esitmation because there might be some paddings at the end
dev_loss = 0.0
correct_cnt = 0.0
model.eval()
for it, test_data in enumerate(test_loader):
data_dic = test_data
if use_cuda:
imgs, labels = Variable(data_dic['image'], volatile=True).cuda(), Variable(data_dic['label'], volatile=True).cuda()
else:
imgs, labels = Variable(data_dic['image'], volatile=True), Variable(data_dic['label'], volatile=True)
img_input = imgs#.unsqueeze(1)
integer_encoded = labels.data.cpu().numpy()
ground_truth = Variable(torch.from_numpy(integer_encoded), volatile=True).long()
if use_cuda:
ground_truth = ground_truth.cuda()
test_output = model(img_input)
test_prob_predict = F.softmax(test_output, dim=1)
_, predict = test_prob_predict.topk(1)
loss = criterion(test_output, ground_truth)
dev_loss += loss
correct_this_batch = (predict.squeeze(1) == ground_truth).sum().float()
correct_cnt += (predict.squeeze(1) == ground_truth).sum()
accuracy = float(correct_this_batch) / len(ground_truth)
logging.info("batch {0} dev loss is : {1:.5f}".format(it, loss.data[0]))
logging.info("batch {0} dev accuracy is : {1:.5f}".format(it, accuracy))
f2.write("batch {0} dev loss is : {1:.5f}\n".format(it, loss.data[0]))
f2.write("batch {0} dev accuracy is : {1:.5f}\n".format(it, accuracy))
dev_avg_loss = dev_loss / (len(dset_test) / options.batch_size)
dev_avg_acu = float(correct_cnt) / len(dset_test)
logging.info("Average validation loss is {0:.5f} at the end of epoch {1}".format(dev_avg_loss.data[0], epoch_i))
logging.info("Average validation accuracy is {0:.5f} at the end of epoch {1}".format(dev_avg_acu, epoch_i))
if dev_avg_acu > max_acc:
max_acc = dev_avg_acu
max_epoch = epoch_i
#if (abs(dev_avg_loss.data[0] - last_dev_loss) <= options.estop) or ((epoch_i+1)%20==0):
if max_acc>=0.75:
torch.save(model.state_dict(), open("3DCNN_model_" + str(epoch_i) + '_' + str(max_acc), 'wb'))
last_dev_loss = dev_avg_loss.data[0]
logging.info("Maximum accuracy on dev set is {0:.5f} for now".format(max_acc))
logging.info("Maximum accuracy on dev set is {0:.5f} at the end of epoch {1}".format(max_acc, max_epoch))
f1.close()
f2.close()
if __name__ == "__main__":
ret = parser.parse_known_args()
options = ret[0]
if ret[1]:
logging.warning("unknown arguments: {0}".format(parser.parse_known_args()[1]))
main(options)
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