Esempio n. 1
0
 def test_slice(self):
     img = trios.Imageset([('a', 'b', None), ('c', 'b', None),
                           ('d', 'b', None), ('e', 'b', None)])
     img2 = img[:2]
     self.assertEqual(type(img2), trios.Imageset)
     self.assertEqual(img2.input_preffix, img.input_preffix)
     self.assertEqual(img2.output_preffix, img.output_preffix)
     self.assertEqual(img2.mask_preffix, img.mask_preffix)
Esempio n. 2
0
    def test_write_read(self):
        img = trios.Imageset([('a', 'b', None), ('c', 'b', 'er')])
        img.write('test-imageset.txt')
        img2 = trios.Imageset.read('test-imageset.txt')

        self.assertEqual(len(img), len(img2))
        self.assertEqual(img[0], img2[0])
        self.assertEqual(img[1], img2[1])
Esempio n. 3
0
    def test_append(self):
        img = trios.Imageset()
        with self.assertRaises(TypeError) as context:
            img.append('image_name')
        with self.assertRaises(TypeError) as context:
            img.append(('image_name', ))

        with self.assertRaises(TypeError) as context:
            img.append(('image_name', 'out_name'))

        img.append(('image_name', 'out_name', 'mask_name'))
        self.assertEqual(img.image_list[-1],
                         ('image_name', 'out_name', 'mask_name'))
        self.assertEqual(img[-1], ('image_name', 'out_name', 'mask_name'))
Esempio n. 4
0
from trios.classifiers import SKClassifier
from sklearn.tree import DecisionTreeClassifier
from trios.contrib.features.sobel import SobelExtractor
import trios
import numpy as np

import trios.shortcuts.persistence as p

drive_location = 'datasets/drive'
training = trios.Imageset([
    ('%s/training/images/%2d_training.tif'%(drive_location, i),
    '%s/training/1st_manual/%2d_manual1.gif'%(drive_location, i),
    '%s/training/mask/%2d_training_mask.gif'%(drive_location, i))
    for i in range(21, 41)])

testset = trios.Imageset([
    ('%s/test/images/%02d_test.tif'%(drive_location, i),
    '%s/test/1st_manual/%02d_manual1.gif'%(drive_location, i),
    '%s/test/mask/%02d_test_mask.gif'%(drive_location, i))
    for i in range(1, 21)])

if __name__ == '__main__':
    win = np.ones((9,9), np.uint8)
    sobel = SobelExtractor(window=win)
    op = trios.WOperator(win, SKClassifier(DecisionTreeClassifier()), sobel)
    print('Training')
    op.train(training)
    print('Evaluating')
    print('Accuracy:', 1 - op.eval(testset))
Esempio n. 5
0
 def test_creation_empty(self):
     img = trios.Imageset()
     self.assertEqual(img.image_list, [])
     self.assertEqual(img.input_preffix, '')
     self.assertEqual(img.output_preffix, '')
     self.assertEqual(img.mask_preffix, '')
Esempio n. 6
0
 def test_len(self):
     imgset = trios.Imageset()
     self.assertEqual(len(imgset), 0)
     imgset.append(('asdl', '1sdf', 'ldkasl'))
     self.assertEqual(len(imgset), 1)
Esempio n. 7
0
 def test_indexing(self):
     img = trios.Imageset([('a', 'b', None), ('c', 'b', None),
                           ('d', 'b', None), ('e', 'b', None)])
     self.assertEqual(img[0], ('a', 'b', None))
     self.assertEqual(img[-1], ('e', 'b', None))
Esempio n. 8
0
from trios.classifiers import SKClassifier
from sklearn.tree import DecisionTreeClassifier
from trios.feature_extractors import Aperture
import trios
import numpy as np

import trios.shortcuts.persistence as p

if __name__ == '__main__':
    images = trios.Imageset([('images_gl/einstein-noise.png',
                              'images_gl/einstein-original.png', None)])
    win = np.ones((7, 7), np.uint8)

    # use Decision Tree Classifier and raw pixels as features.
    ap = Aperture(win, 10, mul=0.5)
    op = trios.WOperator(win, SKClassifier(DecisionTreeClassifier()), ap)
    print('Training...')
    op.train(images)

    # save trained operator
    p.save_gzip(op, 'ap-einstein.op')
    # and load it later
    op2 = p.load_gzip('ap-einstein.op')

    # load image and apply operator. Second argument is application mask.
    img = p.load_image('images_gl/einstein-noise.png')
    print('Applying to image images_gl/einstein-noise.png')
    out = op.apply(img, img)
    p.save_image(out, 'out-ap-einstein.png')
Esempio n. 9
0
import trios
import trios.shortcuts.persistence as p

if __name__ == '__main__':
    # Imageset can be defined directly in code, like below
    images = trios.Imageset([('input.png', 'output.png', None),
                             ('input2.png', 'output2.png', 'mask.png')])
    # Definitions in code can be put in a module and imported like regular
    # Python code.

    # It can also be saved to a gziped file using the persistence
    p.save_gzip(images, 'imageset.gz')

    # And loaded back
    images2 = p.load_gzip('imageset.gz')
    assert images[0] == images2[0]
    assert images[1] == images2[1]
    assert len(images) == len(images2)

    # Or saved to a text-only format using the read and write methods.
    images.write('imageset-text.txt')

    images3 = trios.Imageset.read('imageset-text.txt')
    assert images[0] == images3[0]
    assert images[1] == images3[1]
    assert len(images) == len(images3)