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patch_train.py
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patch_train.py
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import argparse
import os
from datetime import datetime
from os.path import join as pjoin
import itertools
import numpy as np
import torch
import torch.nn.functional as F
from sklearn.model_selection import train_test_split
from tensorboardX import SummaryWriter
from torch.utils import data
from tqdm import tqdm
import core.loss
import torchvision.utils as vutils
from core.augmentations import (
Compose, RandomHorizontallyFlip, RandomRotate, AddNoise)
from core.loader.data_loader import *
from core.metrics import runningScore
from core.models import get_model
from core.utils import np_to_tb
# Fix the random seeds:
torch.backends.cudnn.deterministic = True
torch.manual_seed(2019)
if torch.cuda.is_available(): torch.cuda.manual_seed_all(2019)
np.random.seed(seed=2019)
def split_train_val(args, per_val=0.1):
# create inline and crossline pacthes for training and validation:
loader_type = 'patch'
labels = np.load(pjoin('data', 'train', 'train_labels.npy'))
iline, xline, depth = labels.shape
# INLINE PATCHES: ------------------------------------------------
i_list = []
horz_locations = range(0, xline-args.stride, args.stride)
vert_locations = range(0, depth-args.stride, args.stride)
for i in range(iline):
# for every inline:
# images are references by top-left corner:
locations = [[j, k] for j in horz_locations for k in vert_locations]
patches_list = ['i_'+str(i)+'_'+str(j)+'_'+str(k)
for j, k in locations]
i_list.append(patches_list)
# flatten the list
i_list = list(itertools.chain(*i_list))
# XLINE PATCHES: ------------------------------------------------
x_list = []
horz_locations = range(0, iline-args.stride, args.stride)
vert_locations = range(0, depth-args.stride, args.stride)
for j in range(xline):
# for every xline:
# images are references by top-left corner:
locations = [[i, k] for i in horz_locations for k in vert_locations]
patches_list = ['x_'+str(i)+'_'+str(j)+'_'+str(k)
for i, k in locations]
x_list.append(patches_list)
# flatten the list
x_list = list(itertools.chain(*x_list))
list_train_val = i_list + x_list
# create train and test splits:
list_train, list_val = train_test_split(
list_train_val, test_size=per_val, shuffle=True)
# write to files to disK:
file_object = open(
pjoin('data', 'splits', loader_type + '_train_val.txt'), 'w')
file_object.write('\n'.join(list_train_val))
file_object.close()
file_object = open(
pjoin('data', 'splits', loader_type + '_train.txt'), 'w')
file_object.write('\n'.join(list_train))
file_object.close()
file_object = open(pjoin('data', 'splits', loader_type + '_val.txt'), 'w')
file_object.write('\n'.join(list_val))
file_object.close()
def train(args):
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
# Generate the train and validation sets for the model:
split_train_val(args, per_val=args.per_val)
current_time = datetime.now().strftime('%b%d_%H%M%S')
log_dir = os.path.join('runs', current_time +
"_{}".format(args.arch))
writer = SummaryWriter(log_dir=log_dir)
# Setup Augmentations
if args.aug:
data_aug = Compose(
[RandomRotate(10), RandomHorizontallyFlip(), AddNoise()])
else:
data_aug = None
train_set = patch_loader(is_transform=True,
split='train',
stride=args.stride,
patch_size=args.patch_size,
augmentations=data_aug)
# Without Augmentation:
val_set = patch_loader(is_transform=True,
split='val',
stride=args.stride,
patch_size=args.patch_size)
n_classes = train_set.n_classes
trainloader = data.DataLoader(train_set,
batch_size=args.batch_size,
num_workers=4,
shuffle=True)
valloader = data.DataLoader(val_set,
batch_size=args.batch_size,
num_workers=4)
# Setup Metrics
running_metrics = runningScore(n_classes)
running_metrics_val = runningScore(n_classes)
# Setup Model
if args.resume is not None:
if os.path.isfile(args.resume):
print("Loading model and optimizer from checkpoint '{}'".format(args.resume))
model = torch.load(args.resume)
else:
print("No checkpoint found at '{}'".format(args.resume))
else:
model = get_model(args.arch, args.pretrained, n_classes)
# Use as many GPUs as we can
model = torch.nn.DataParallel(
model, device_ids=range(torch.cuda.device_count()))
model = model.to(device) # Send to GPU
# PYTROCH NOTE: ALWAYS CONSTRUCT OPTIMIZERS AFTER MODEL IS PUSHED TO GPU/CPU,
# Check if model has custom optimizer / loss
if hasattr(model.module, 'optimizer'):
print('Using custom optimizer')
optimizer = model.module.optimizer
else:
# optimizer = torch.optim.Adadelta(model.parameters())
optimizer = torch.optim.Adam(model.parameters(), amsgrad=True)
loss_fn = core.loss.cross_entropy
if args.class_weights:
# weights are inversely proportional to the frequency of the classes in the training set
class_weights = torch.tensor(
[0.7151, 0.8811, 0.5156, 0.9346, 0.9683, 0.9852], device=device, requires_grad=False)
else:
class_weights = None
best_iou = -100.0
class_names = ['upper_ns', 'middle_ns', 'lower_ns',
'rijnland_chalk', 'scruff', 'zechstein']
for arg in vars(args):
text = arg + ': ' + str(getattr(args, arg))
writer.add_text('Parameters/', text)
# training
for epoch in range(args.n_epoch):
# Training Mode:
model.train()
loss_train, total_iteration = 0, 0
for i, (images, labels) in enumerate(trainloader):
image_original, labels_original = images, labels
images, labels = images.to(device), labels.to(device)
optimizer.zero_grad()
outputs = model(images)
pred = outputs.detach().max(1)[1].cpu().numpy()
gt = labels.detach().cpu().numpy()
running_metrics.update(gt, pred)
loss = loss_fn(input=outputs, target=labels, weight=class_weights)
loss_train += loss.item()
loss.backward()
# gradient clipping
if args.clip != 0:
torch.nn.utils.clip_grad_norm(model.parameters(), args.clip)
optimizer.step()
total_iteration = total_iteration + 1
if (i) % 20 == 0:
print("Epoch [%d/%d] training Loss: %.4f" %
(epoch + 1, args.n_epoch, loss.item()))
numbers = [0]
if i in numbers:
# number 0 image in the batch
tb_original_image = vutils.make_grid(
image_original[0][0], normalize=True, scale_each=True)
writer.add_image('train/original_image',
tb_original_image, epoch + 1)
labels_original = labels_original.numpy()[0]
correct_label_decoded = train_set.decode_segmap(np.squeeze(labels_original))
writer.add_image('train/original_label',np_to_tb(correct_label_decoded), epoch + 1)
out = F.softmax(outputs, dim=1)
# this returns the max. channel number:
prediction = out.max(1)[1].cpu().numpy()[0]
# this returns the confidence:
confidence = out.max(1)[0].cpu().detach()[0]
tb_confidence = vutils.make_grid(
confidence, normalize=True, scale_each=True)
decoded = train_set.decode_segmap(np.squeeze(prediction))
writer.add_image('train/predicted', np_to_tb(decoded), epoch + 1)
writer.add_image('train/confidence', tb_confidence, epoch + 1)
unary = outputs.cpu().detach()
unary_max = torch.max(unary)
unary_min = torch.min(unary)
unary = unary.add((-1*unary_min))
unary = unary/(unary_max - unary_min)
for channel in range(0, len(class_names)):
decoded_channel = unary[0][channel]
tb_channel = vutils.make_grid(
decoded_channel, normalize=True, scale_each=True)
writer.add_image(f'train_classes/_{class_names[channel]}', tb_channel, epoch + 1)
# Average metrics, and save in writer()
loss_train /= total_iteration
score, class_iou = running_metrics.get_scores()
writer.add_scalar('train/Pixel Acc', score['Pixel Acc: '], epoch+1)
writer.add_scalar('train/Mean Class Acc',
score['Mean Class Acc: '], epoch+1)
writer.add_scalar('train/Freq Weighted IoU',
score['Freq Weighted IoU: '], epoch+1)
writer.add_scalar('train/Mean_IoU', score['Mean IoU: '], epoch+1)
running_metrics.reset()
writer.add_scalar('train/loss', loss_train, epoch+1)
if args.per_val != 0:
with torch.no_grad(): # operations inside don't track history
# Validation Mode:
model.eval()
loss_val, total_iteration_val = 0, 0
for i_val, (images_val, labels_val) in tqdm(enumerate(valloader)):
image_original, labels_original = images_val, labels_val
images_val, labels_val = images_val.to(
device), labels_val.to(device)
outputs_val = model(images_val)
pred = outputs_val.detach().max(1)[1].cpu().numpy()
gt = labels_val.detach().cpu().numpy()
running_metrics_val.update(gt, pred)
loss = loss_fn(input=outputs_val, target=labels_val)
total_iteration_val = total_iteration_val + 1
if (i_val) % 20 == 0:
print("Epoch [%d/%d] validation Loss: %.4f" %
(epoch, args.n_epoch, loss.item()))
numbers = [0]
if i_val in numbers:
# number 0 image in the batch
tb_original_image = vutils.make_grid(
image_original[0][0], normalize=True, scale_each=True)
writer.add_image('val/original_image',
tb_original_image, epoch)
labels_original = labels_original.numpy()[0]
correct_label_decoded = train_set.decode_segmap(
np.squeeze(labels_original))
writer.add_image('val/original_label',
np_to_tb(correct_label_decoded), epoch + 1)
out = F.softmax(outputs_val, dim=1)
# this returns the max. channel number:
prediction = out.max(1)[1].cpu().detach().numpy()[0]
# this returns the confidence:
confidence = out.max(1)[0].cpu().detach()[0]
tb_confidence = vutils.make_grid(
confidence, normalize=True, scale_each=True)
decoded = train_set.decode_segmap(
np.squeeze(prediction))
writer.add_image('val/predicted', np_to_tb(decoded), epoch + 1)
writer.add_image('val/confidence',
tb_confidence, epoch + 1)
unary = outputs.cpu().detach()
unary_max, unary_min = torch.max(
unary), torch.min(unary)
unary = unary.add((-1*unary_min))
unary = unary/(unary_max - unary_min)
for channel in range(0, len(class_names)):
tb_channel = vutils.make_grid(
unary[0][channel], normalize=True, scale_each=True)
writer.add_image(
f'val_classes/_{class_names[channel]}', tb_channel, epoch + 1)
score, class_iou = running_metrics_val.get_scores()
for k, v in score.items():
print(k, v)
writer.add_scalar(
'val/Pixel Acc', score['Pixel Acc: '], epoch+1)
writer.add_scalar('val/Mean IoU', score['Mean IoU: '], epoch+1)
writer.add_scalar('val/Mean Class Acc',
score['Mean Class Acc: '], epoch+1)
writer.add_scalar('val/Freq Weighted IoU',
score['Freq Weighted IoU: '], epoch+1)
writer.add_scalar('val/loss', loss.item(), epoch+1)
running_metrics_val.reset()
if score['Mean IoU: '] >= best_iou:
best_iou = score['Mean IoU: ']
model_dir = os.path.join(
log_dir, f"{args.arch}_model.pkl")
torch.save(model, model_dir)
else: # validation is turned off:
# just save the latest model:
if (epoch+1) % 5 == 0:
model_dir = os.path.join(
log_dir, f"{args.arch}_ep{epoch+1}_model.pkl")
torch.save(model, model_dir)
writer.close()
if __name__ == '__main__':
parser = argparse.ArgumentParser(description='Hyperparams')
parser.add_argument('--arch', nargs='?', type=str, default='patch_deconvnet',
help='Architecture to use [\'patch_deconvnet, path_deconvnet_skip, section_deconvnet, section_deconvnet_skip\']')
parser.add_argument('--n_epoch', nargs='?', type=int, default=101,
help='# of the epochs')
parser.add_argument('--batch_size', nargs='?', type=int, default=64,
help='Batch Size')
parser.add_argument('--resume', nargs='?', type=str, default=None,
help='Path to previous saved model to restart from')
parser.add_argument('--clip', nargs='?', type=float, default=0.1,
help='Max norm of the gradients if clipping. Set to zero to disable. ')
parser.add_argument('--per_val', nargs='?', type=float, default=0.2,
help='percentage of the training data for validation')
parser.add_argument('--stride', nargs='?', type=int, default=50,
help='The vertical and horizontal stride when we are sampling patches from the volume.' +
'The smaller the better, but the slower the training is.')
parser.add_argument('--patch_size', nargs='?', type=int, default=99,
help='The size of each patch')
parser.add_argument('--pretrained', nargs='?', type=bool, default=False,
help='Pretrained models not supported. Keep as False for now.')
parser.add_argument('--aug', nargs='?', type=bool, default=False,
help='Whether to use data augmentation.')
parser.add_argument('--class_weights', nargs='?', type=bool, default=False,
help='Whether to use class weights to reduce the effect of class imbalance')
args = parser.parse_args()
train(args)