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tune34_cls.py
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tune34_cls.py
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import os
os.environ["MKL_NUM_THREADS"] = "2"
os.environ["NUMEXPR_NUM_THREADS"] = "2"
os.environ["OMP_NUM_THREADS"] = "2"
from os import path, makedirs, listdir
import sys
import numpy as np
np.random.seed(1)
import random
random.seed(1)
import torch
from torch import nn
from torch.backends import cudnn
from torch.utils.data import Dataset
from torch.utils.data import DataLoader
import torch.optim.lr_scheduler as lr_scheduler
from apex import amp
from adamw import AdamW
from losses import dice_round, ComboLoss
import pandas as pd
from tqdm import tqdm
import timeit
import cv2
from zoo.models import Res34_Unet_Double
from imgaug import augmenters as iaa
from utils import *
from skimage.morphology import square, dilation
from sklearn.model_selection import train_test_split
from sklearn.metrics import accuracy_score
import gc
cv2.setNumThreads(0)
cv2.ocl.setUseOpenCL(False)
train_dirs = ['train', 'tier3']
models_folder = 'weights'
loc_folder = 'pred_loc_val'
input_shape = (608, 608)
all_files = []
for d in train_dirs:
for f in sorted(listdir(path.join(d, 'images'))):
if '_pre_disaster.png' in f:
all_files.append(path.join(d, 'images', f))
train_len = len(all_files)
class TrainData(Dataset):
def __init__(self, train_idxs):
super().__init__()
self.train_idxs = train_idxs
self.elastic = iaa.ElasticTransformation(alpha=(0.25, 1.2), sigma=0.2)
def __len__(self):
return len(self.train_idxs)
def __getitem__(self, idx):
_idx = self.train_idxs[idx]
fn = all_files[_idx]
img = cv2.imread(fn, cv2.IMREAD_COLOR)
img2 = cv2.imread(fn.replace('_pre_', '_post_'), cv2.IMREAD_COLOR)
msk0 = cv2.imread(fn.replace('/images/', '/masks/'), cv2.IMREAD_UNCHANGED)
lbl_msk1 = cv2.imread(fn.replace('/images/', '/masks/').replace('_pre_disaster', '_post_disaster'), cv2.IMREAD_UNCHANGED)
msk1 = np.zeros_like(lbl_msk1)
msk2 = np.zeros_like(lbl_msk1)
msk3 = np.zeros_like(lbl_msk1)
msk4 = np.zeros_like(lbl_msk1)
msk2[lbl_msk1 == 2] = 255
msk3[lbl_msk1 == 3] = 255
msk4[lbl_msk1 == 4] = 255
msk1[lbl_msk1 == 1] = 255
if random.random() > 0.7:
img = img[::-1, ...]
img2 = img2[::-1, ...]
msk0 = msk0[::-1, ...]
msk1 = msk1[::-1, ...]
msk2 = msk2[::-1, ...]
msk3 = msk3[::-1, ...]
msk4 = msk4[::-1, ...]
if random.random() > 0.3:
rot = random.randrange(4)
if rot > 0:
img = np.rot90(img, k=rot)
img2 = np.rot90(img2, k=rot)
msk0 = np.rot90(msk0, k=rot)
msk1 = np.rot90(msk1, k=rot)
msk2 = np.rot90(msk2, k=rot)
msk3 = np.rot90(msk3, k=rot)
msk4 = np.rot90(msk4, k=rot)
if random.random() > 0.99:
shift_pnt = (random.randint(-320, 320), random.randint(-320, 320))
img = shift_image(img, shift_pnt)
img2 = shift_image(img2, shift_pnt)
msk0 = shift_image(msk0, shift_pnt)
msk1 = shift_image(msk1, shift_pnt)
msk2 = shift_image(msk2, shift_pnt)
msk3 = shift_image(msk3, shift_pnt)
msk4 = shift_image(msk4, shift_pnt)
if random.random() > 0.5:
rot_pnt = (img.shape[0] // 2 + random.randint(-320, 320), img.shape[1] // 2 + random.randint(-320, 320))
scale = 0.9 + random.random() * 0.2
angle = random.randint(0, 20) - 10
if (angle != 0) or (scale != 1):
img = rotate_image(img, angle, scale, rot_pnt)
img2 = rotate_image(img2, angle, scale, rot_pnt)
msk0 = rotate_image(msk0, angle, scale, rot_pnt)
msk1 = rotate_image(msk1, angle, scale, rot_pnt)
msk2 = rotate_image(msk2, angle, scale, rot_pnt)
msk3 = rotate_image(msk3, angle, scale, rot_pnt)
msk4 = rotate_image(msk4, angle, scale, rot_pnt)
crop_size = input_shape[0]
if random.random() > 0.5:
crop_size = random.randint(int(input_shape[0] / 1.1), int(input_shape[0] / 0.9))
bst_x0 = random.randint(0, img.shape[1] - crop_size)
bst_y0 = random.randint(0, img.shape[0] - crop_size)
bst_sc = -1
try_cnt = random.randint(1, 10)
for i in range(try_cnt):
x0 = random.randint(0, img.shape[1] - crop_size)
y0 = random.randint(0, img.shape[0] - crop_size)
_sc = msk2[y0:y0+crop_size, x0:x0+crop_size].sum() * 5 + msk3[y0:y0+crop_size, x0:x0+crop_size].sum() * 5 + msk4[y0:y0+crop_size, x0:x0+crop_size].sum() * 2 + msk1[y0:y0+crop_size, x0:x0+crop_size].sum()
if _sc > bst_sc:
bst_sc = _sc
bst_x0 = x0
bst_y0 = y0
x0 = bst_x0
y0 = bst_y0
img = img[y0:y0+crop_size, x0:x0+crop_size, :]
img2 = img2[y0:y0+crop_size, x0:x0+crop_size, :]
msk0 = msk0[y0:y0+crop_size, x0:x0+crop_size]
msk1 = msk1[y0:y0+crop_size, x0:x0+crop_size]
msk2 = msk2[y0:y0+crop_size, x0:x0+crop_size]
msk3 = msk3[y0:y0+crop_size, x0:x0+crop_size]
msk4 = msk4[y0:y0+crop_size, x0:x0+crop_size]
if crop_size != input_shape[0]:
img = cv2.resize(img, input_shape, interpolation=cv2.INTER_LINEAR)
img2 = cv2.resize(img2, input_shape, interpolation=cv2.INTER_LINEAR)
msk0 = cv2.resize(msk0, input_shape, interpolation=cv2.INTER_LINEAR)
msk1 = cv2.resize(msk1, input_shape, interpolation=cv2.INTER_LINEAR)
msk2 = cv2.resize(msk2, input_shape, interpolation=cv2.INTER_LINEAR)
msk3 = cv2.resize(msk3, input_shape, interpolation=cv2.INTER_LINEAR)
msk4 = cv2.resize(msk4, input_shape, interpolation=cv2.INTER_LINEAR)
if random.random() > 0.99:
img = shift_channels(img, random.randint(-5, 5), random.randint(-5, 5), random.randint(-5, 5))
elif random.random() > 0.99:
img2 = shift_channels(img2, random.randint(-5, 5), random.randint(-5, 5), random.randint(-5, 5))
if random.random() > 0.99:
img = change_hsv(img, random.randint(-5, 5), random.randint(-5, 5), random.randint(-5, 5))
elif random.random() > 0.99:
img2 = change_hsv(img2, random.randint(-5, 5), random.randint(-5, 5), random.randint(-5, 5))
if random.random() > 0.99:
if random.random() > 0.99:
img = clahe(img)
elif random.random() > 0.99:
img = gauss_noise(img)
elif random.random() > 0.99:
img = cv2.blur(img, (3, 3))
elif random.random() > 0.99:
if random.random() > 0.99:
img = saturation(img, 0.9 + random.random() * 0.2)
elif random.random() > 0.99:
img = brightness(img, 0.9 + random.random() * 0.2)
elif random.random() > 0.99:
img = contrast(img, 0.9 + random.random() * 0.2)
if random.random() > 0.99:
if random.random() > 0.99:
img2 = clahe(img2)
elif random.random() > 0.99:
img2 = gauss_noise(img2)
elif random.random() > 0.99:
img2 = cv2.blur(img2, (3, 3))
elif random.random() > 0.99:
if random.random() > 0.99:
img2 = saturation(img2, 0.9 + random.random() * 0.2)
elif random.random() > 0.99:
img2 = brightness(img2, 0.9 + random.random() * 0.2)
elif random.random() > 0.99:
img2 = contrast(img2, 0.9 + random.random() * 0.2)
if random.random() > 0.99:
el_det = self.elastic.to_deterministic()
img = el_det.augment_image(img)
if random.random() > 0.99:
el_det = self.elastic.to_deterministic()
img2 = el_det.augment_image(img2)
msk0 = msk0[..., np.newaxis]
msk1 = msk1[..., np.newaxis]
msk2 = msk2[..., np.newaxis]
msk3 = msk3[..., np.newaxis]
msk4 = msk4[..., np.newaxis]
msk = np.concatenate([msk0, msk1, msk2, msk3, msk4], axis=2)
msk = (msk > 127)
msk[..., 0] = False
msk[..., 1] = dilation(msk[..., 1], square(5))
msk[..., 2] = dilation(msk[..., 2], square(5))
msk[..., 3] = dilation(msk[..., 3], square(5))
msk[..., 4] = dilation(msk[..., 4], square(5))
msk[..., 1][msk[..., 2:].max(axis=2)] = False
msk[..., 3][msk[..., 2]] = False
msk[..., 4][msk[..., 2]] = False
msk[..., 4][msk[..., 3]] = False
msk[..., 0][msk[..., 1:].max(axis=2)] = True
msk = msk * 1
lbl_msk = msk.argmax(axis=2)
img = np.concatenate([img, img2], axis=2)
img = preprocess_inputs(img)
img = torch.from_numpy(img.transpose((2, 0, 1))).float()
msk = torch.from_numpy(msk.transpose((2, 0, 1))).long()
sample = {'img': img, 'msk': msk, 'lbl_msk': lbl_msk, 'fn': fn}
return sample
class ValData(Dataset):
def __init__(self, image_idxs):
super().__init__()
self.image_idxs = image_idxs
def __len__(self):
return len(self.image_idxs)
def __getitem__(self, idx):
_idx = self.image_idxs[idx]
fn = all_files[_idx]
img = cv2.imread(fn, cv2.IMREAD_COLOR)
img2 = cv2.imread(fn.replace('_pre_', '_post_'), cv2.IMREAD_COLOR)
msk0 = cv2.imread(fn.replace('/images/', '/masks/'), cv2.IMREAD_UNCHANGED)
lbl_msk1 = cv2.imread(fn.replace('/images/', '/masks/').replace('_pre_disaster', '_post_disaster'), cv2.IMREAD_UNCHANGED)
msk_loc = cv2.imread(path.join(loc_folder, '{0}.png'.format(fn.split('/')[-1].replace('.png', '_part1.png'))), cv2.IMREAD_UNCHANGED) > (0.3*255)
msk1 = np.zeros_like(lbl_msk1)
msk2 = np.zeros_like(lbl_msk1)
msk3 = np.zeros_like(lbl_msk1)
msk4 = np.zeros_like(lbl_msk1)
msk1[lbl_msk1 == 1] = 255
msk2[lbl_msk1 == 2] = 255
msk3[lbl_msk1 == 3] = 255
msk4[lbl_msk1 == 4] = 255
msk0 = msk0[..., np.newaxis]
msk1 = msk1[..., np.newaxis]
msk2 = msk2[..., np.newaxis]
msk3 = msk3[..., np.newaxis]
msk4 = msk4[..., np.newaxis]
msk = np.concatenate([msk0, msk1, msk2, msk3, msk4], axis=2)
msk = (msk > 127)
msk = msk * 1
lbl_msk = msk[..., 1:].argmax(axis=2)
img = np.concatenate([img, img2], axis=2)
img = preprocess_inputs(img)
img = torch.from_numpy(img.transpose((2, 0, 1))).float()
msk = torch.from_numpy(msk.transpose((2, 0, 1))).long()
sample = {'img': img, 'msk': msk, 'lbl_msk': lbl_msk, 'fn': fn, 'msk_loc': msk_loc}
return sample
def validate(net, data_loader):
dices0 = []
tp = np.zeros((4,))
fp = np.zeros((4,))
fn = np.zeros((4,))
_thr = 0.3
with torch.no_grad():
for i, sample in enumerate(tqdm(data_loader)):
msks = sample["msk"].numpy()
lbl_msk = sample["lbl_msk"].numpy()
imgs = sample["img"].cuda(non_blocking=True)
msk_loc = sample["msk_loc"].numpy() * 1
out = model(imgs)
msk_pred = msk_loc
msk_damage_pred = torch.sigmoid(out).cpu().numpy()[:, 1:, ...]
for j in range(msks.shape[0]):
dices0.append(dice(msks[j, 0], msk_pred[j] > _thr))
targ = lbl_msk[j][msks[j, 0] > 0]
pred = msk_damage_pred[j].argmax(axis=0)
pred = pred * (msk_pred[j] > _thr)
pred = pred[msks[j, 0] > 0]
for c in range(4):
tp[c] += np.logical_and(pred == c, targ == c).sum()
fn[c] += np.logical_and(pred != c, targ == c).sum()
fp[c] += np.logical_and(pred == c, targ != c).sum()
d0 = np.mean(dices0)
f1_sc = np.zeros((4,))
for c in range(4):
f1_sc[c] = 2 * tp[c] / (2 * tp[c] + fp[c] + fn[c])
f1 = 4 / np.sum(1.0 / (f1_sc + 1e-6))
sc = 0.3 * d0 + 0.7 * f1
print("Val Score: {}, Dice: {}, F1: {}, F1_0: {}, F1_1: {}, F1_2: {}, F1_3: {}".format(sc, d0, f1, f1_sc[0], f1_sc[1], f1_sc[2], f1_sc[3]))
return sc
def evaluate_val(data_val, best_score, model, snapshot_name, current_epoch):
model = model.eval()
d = validate(model, data_loader=data_val)
if d > best_score:
torch.save({
'epoch': current_epoch + 1,
'state_dict': model.state_dict(),
'best_score': d,
}, path.join(models_folder, snapshot_name + '_best'))
best_score = d
print("score: {}\tscore_best: {}".format(d, best_score))
return best_score
def train_epoch(current_epoch, seg_loss, ce_loss, model, optimizer, scheduler, train_data_loader):
losses = AverageMeter()
losses1 = AverageMeter()
dices = AverageMeter()
iterator = tqdm(train_data_loader)
model.train()
for i, sample in enumerate(iterator):
imgs = sample["img"].cuda(non_blocking=True)
msks = sample["msk"].cuda(non_blocking=True)
out = model(imgs)
loss0 = seg_loss(out[:, 0, ...], msks[:, 0, ...])
loss1 = seg_loss(out[:, 1, ...], msks[:, 1, ...])
loss2 = seg_loss(out[:, 2, ...], msks[:, 2, ...])
loss3 = seg_loss(out[:, 3, ...], msks[:, 3, ...])
loss4 = seg_loss(out[:, 4, ...], msks[:, 4, ...])
loss = 0.05 * loss0 + 0.2 * loss1 + 0.8 * loss2 + 0.7 * loss3 + 0.4 * loss4
with torch.no_grad():
_probs = torch.sigmoid(out[:, 0, ...])
dice_sc = 1 - dice_round(_probs, msks[:, 0, ...])
losses.update(loss.item(), imgs.size(0))
losses1.update(loss2.item(), imgs.size(0)) #loss5
dices.update(dice_sc, imgs.size(0))
iterator.set_description(
"epoch: {}; lr {:.7f}; Loss {loss.val:.4f} ({loss.avg:.4f}); loss2 {loss1.val:.4f} ({loss1.avg:.4f}); Dice {dice.val:.4f} ({dice.avg:.4f})".format(
current_epoch, scheduler.get_lr()[-1], loss=losses, loss1=losses1, dice=dices))
optimizer.zero_grad()
with amp.scale_loss(loss, optimizer) as scaled_loss:
scaled_loss.backward()
torch.nn.utils.clip_grad_norm_(amp.master_params(optimizer), 0.999)
optimizer.step()
scheduler.step(current_epoch)
print("epoch: {}; lr {:.7f}; Loss {loss.avg:.4f}; loss2 {loss1.avg:.4f}; Dice {dice.avg:.4f}".format(
current_epoch, scheduler.get_lr()[-1], loss=losses, loss1=losses1, dice=dices))
if __name__ == '__main__':
t0 = timeit.default_timer()
makedirs(models_folder, exist_ok=True)
seed = int(sys.argv[1])
# vis_dev = sys.argv[2]
# os.environ['CUDA_DEVICE_ORDER'] = 'PCI_BUS_ID'
# os.environ["CUDA_VISIBLE_DEVICES"] = vis_dev
cudnn.benchmark = True
batch_size = 16
val_batch_size = 8
snapshot_name = 'res34_cls2_{}_tuned'.format(seed)
file_classes = []
for fn in tqdm(all_files):
fl = np.zeros((4,), dtype=bool)
msk1 = cv2.imread(fn.replace('/images/', '/masks/').replace('_pre_disaster', '_post_disaster'), cv2.IMREAD_UNCHANGED)
for c in range(1, 5):
fl[c-1] = c in msk1
file_classes.append(fl)
file_classes = np.asarray(file_classes)
_, val_idxs = train_test_split(np.arange(train_len), test_size=0.1, random_state=seed)
np.random.seed(seed + 357)
random.seed(seed + 357)
train_idxs = []
for i in np.arange(len(all_files)):
train_idxs.append(i)
if file_classes[i, 1:].max():
train_idxs.append(i)
train_idxs = np.asarray(train_idxs)
steps_per_epoch = len(train_idxs) // batch_size
validation_steps = len(val_idxs) // val_batch_size
print('steps_per_epoch', steps_per_epoch, 'validation_steps', validation_steps)
data_train = TrainData(train_idxs)
val_train = ValData(val_idxs)
train_data_loader = DataLoader(data_train, batch_size=batch_size, num_workers=6, shuffle=True, pin_memory=False, drop_last=True)
val_data_loader = DataLoader(val_train, batch_size=val_batch_size, num_workers=6, shuffle=False, pin_memory=False)
model = Res34_Unet_Double().cuda()
params = model.parameters()
optimizer = AdamW(params, lr=0.000008, weight_decay=1e-6)
model, optimizer = amp.initialize(model, optimizer, opt_level="O1")
scheduler = lr_scheduler.MultiStepLR(optimizer, milestones=[1, 2, 3, 4, 5, 7, 9, 11, 17, 23, 29, 33, 47, 50, 60, 70, 90, 110, 130, 150, 170, 180, 190], gamma=0.5)
model = nn.DataParallel(model).cuda()
snap_to_load = 'res34_cls2_{}_0_best'.format(seed)
print("=> loading checkpoint '{}'".format(snap_to_load))
checkpoint = torch.load(path.join(models_folder, snap_to_load), map_location='cpu')
loaded_dict = checkpoint['state_dict']
sd = model.state_dict()
for k in model.state_dict():
if k in loaded_dict and sd[k].size() == loaded_dict[k].size():
sd[k] = loaded_dict[k]
loaded_dict = sd
model.load_state_dict(loaded_dict)
print("loaded checkpoint '{}' (epoch {}, best_score {})"
.format(snap_to_load, checkpoint['epoch'], checkpoint['best_score']))
del loaded_dict
del sd
del checkpoint
gc.collect()
torch.cuda.empty_cache()
seg_loss = ComboLoss({'dice': 1.0, 'focal': 12.0}, per_image=False).cuda()
ce_loss = nn.CrossEntropyLoss().cuda()
best_score = 0
torch.cuda.empty_cache()
for epoch in range(3):
train_epoch(epoch, seg_loss, ce_loss, model, optimizer, scheduler, train_data_loader)
torch.cuda.empty_cache()
best_score = evaluate_val(val_data_loader, best_score, model, snapshot_name, epoch)
elapsed = timeit.default_timer() - t0
print('Time: {:.3f} min'.format(elapsed / 60))