From 0da4ad775309a67f2c43821eb5e5ab149967136f Mon Sep 17 00:00:00 2001 From: milesial Date: Sun, 8 Apr 2018 22:36:20 +0200 Subject: [PATCH] Deleted main.py as it is now outdated Former-commit-id: f57fa46f2d8cd4b0a13be0ee88708fa4dd4e0a88 --- main.py | 105 -------------------------------------------------------- 1 file changed, 105 deletions(-) delete mode 100644 main.py diff --git a/main.py b/main.py deleted file mode 100644 index 06ede62..0000000 --- a/main.py +++ /dev/null @@ -1,105 +0,0 @@ -#models -from unet import UNet -from myloss import * -import torch -from torch.autograd import Variable -from torch import optim - -#data manipulation -import numpy as np -import pandas as pd -import PIL - -#load files -import os - -#data visualization -from utils import * -import matplotlib.pyplot as plt - -#quit after interrupt -import sys - - - -dir = 'data' -ids = [] - -for f in os.listdir(dir + '/train'): - id = f[:-4] - ids.append([id, 0]) - ids.append([id, 1]) - -np.random.shuffle(ids) -#%% - - -net = UNet(3, 1) -net.cuda() - -def train(net): - optimizer = optim.Adam(net.parameters(), lr=1) - criterion = DiceLoss() - - epochs = 5 - for epoch in range(epochs): - print('epoch {}/{}...'.format(epoch+1, epochs)) - l = 0 - - for i, c in enumerate(ids): - id = c[0] - pos = c[1] - im = PIL.Image.open(dir + '/train/' + id + '.jpg') - im = resize_and_crop(im) - - ma = PIL.Image.open(dir + '/train_masks/' + id + '_mask.gif') - ma = resize_and_crop(ma) - - left, right = split_into_squares(np.array(im)) - left_m, right_m = split_into_squares(np.array(ma)) - - if pos == 0: - X = left - y = left_m - else: - X = right - y = right_m - - - X = np.transpose(X, axes=[2, 0, 1]) - X = torch.FloatTensor(X / 255).unsqueeze(0).cuda() - y = Variable(torch.ByteTensor(y)).cuda() - - X = Variable(X).cuda() - - optimizer.zero_grad() - - y_pred = net(X).squeeze(1) - - - loss = criterion(y_pred, y.unsqueeze(0).float()) - - l += loss.data[0] - loss.backward() - if i%10 == 0: - optimizer.step() - print('Stepped') - - print('{0:.4f}%\t\t{1:.6f}'.format(i/len(ids)*100, loss.data[0])) - - l = l / len(ids) - print('Loss : {}'.format(l)) - torch.save(net.state_dict(), 'MODEL_EPOCH{}_LOSS{}.pth'.format(epoch+1, l)) - print('Saved') - -try: - net.load_state_dict(torch.load('MODEL_INTERRUPTED.pth')) - train(net) - -except KeyboardInterrupt: - print('Interrupted') - torch.save(net.state_dict(), 'MODEL_INTERRUPTED.pth') - try: - sys.exit(0) - except SystemExit: - os._exit(0)