Esempio n. 1
0
class TestImageCollection(TestCase):

    pattern = [
        os.path.join(data_dir, pic) for pic in ['camera.png', 'color.png']
    ]

    pattern_matched = [
        os.path.join(data_dir, pic) for pic in ['camera.png', 'moon.png']
    ]

    def setUp(self):
        reset_plugins()
        # Generic image collection with images of different shapes.
        self.images = ImageCollection(self.pattern)
        # Image collection with images having shapes that match.
        self.images_matched = ImageCollection(self.pattern_matched)

    def test_len(self):
        assert len(self.images) == 2

    def test_getitem(self):
        num = len(self.images)
        for i in range(-num, num):
            assert isinstance(self.images[i], np.ndarray)
        assert_allclose(self.images[0], self.images[-num])

        def return_img(n):
            return self.images[n]

        with testing.raises(IndexError):
            return_img(num)
        with testing.raises(IndexError):
            return_img(-num - 1)

    def test_slicing(self):
        assert type(self.images[:]) is ImageCollection
        assert len(self.images[:]) == 2
        assert len(self.images[:1]) == 1
        assert len(self.images[1:]) == 1
        assert_allclose(self.images[0], self.images[:1][0])
        assert_allclose(self.images[1], self.images[1:][0])
        assert_allclose(self.images[1], self.images[::-1][0])
        assert_allclose(self.images[0], self.images[::-1][1])

    def test_files_property(self):
        assert isinstance(self.images.files, list)

        def set_files(f):
            self.images.files = f

        with testing.raises(AttributeError):
            set_files('newfiles')

    def test_custom_load(self):
        load_pattern = [(1, 'one'), (2, 'two')]

        def load_fn(x):
            return x

        ic = ImageCollection(load_pattern, load_func=load_fn)
        assert_equal(ic[1], (2, 'two'))

    def test_custom_load_func(self):
        def load_fn(x):
            return x

        ic = ImageCollection(os.pathsep.join(self.pattern), load_func=load_fn)
        assert_equal(ic[0], self.pattern[0])

    def test_concatenate(self):
        array = self.images_matched.concatenate()
        expected_shape = (len(self.images_matched), ) + self.images[0].shape
        assert_equal(array.shape, expected_shape)

    def test_concatentate_mismatched_image_shapes(self):
        with testing.raises(ValueError):
            self.images.concatenate()
Esempio n. 2
0
class TestImageCollection():

    pattern = [os.path.join(data_dir, pic)
               for pic in ['camera.png', 'color.png']]

    pattern_matched = [os.path.join(data_dir, pic)
                       for pic in ['camera.png', 'moon.png']]

    def setUp(self):
        reset_plugins()
        # Generic image collection with images of different shapes.
        self.images = ImageCollection(self.pattern)
        # Image collection with images having shapes that match.
        self.images_matched = ImageCollection(self.pattern_matched)

    def test_len(self):
        assert len(self.images) == 2

    def test_getitem(self):
        num = len(self.images)
        for i in range(-num, num):
            assert type(self.images[i]) is np.ndarray
        assert_allclose(self.images[0],
                                  self.images[-num])

        # assert_raises expects a callable, hence this thin wrapper function.
        def return_img(n):
            return self.images[n]
        assert_raises(IndexError, return_img, num)
        assert_raises(IndexError, return_img, -num - 1)

    def test_slicing(self):
        assert type(self.images[:]) is ImageCollection
        assert len(self.images[:]) == 2
        assert len(self.images[:1]) == 1
        assert len(self.images[1:]) == 1
        assert_allclose(self.images[0], self.images[:1][0])
        assert_allclose(self.images[1], self.images[1:][0])
        assert_allclose(self.images[1], self.images[::-1][0])
        assert_allclose(self.images[0], self.images[::-1][1])

    def test_files_property(self):
        assert isinstance(self.images.files, list)

        def set_files(f):
            self.images.files = f
        assert_raises(AttributeError, set_files, 'newfiles')

    def test_custom_load(self):
        load_pattern = [(1, 'one'), (2, 'two')]

        def load_fn(x):
            return x

        ic = ImageCollection(load_pattern, load_func=load_fn)
        assert_equal(ic[1], (2, 'two'))

    def test_custom_load_func(self):

        def load_fn(x):
            return x

        ic = ImageCollection(os.pathsep.join(self.pattern), load_func=load_fn)
        assert_equal(ic[0], self.pattern[0])

    def test_concatenate(self):
        array = self.images_matched.concatenate()
        expected_shape = (len(self.images_matched),) + self.images[0].shape
        assert_equal(array.shape, expected_shape)

    def test_concatentate_mismatched_image_shapes(self):
        assert_raises(ValueError, self.images.concatenate)
Esempio n. 3
0
class TestImageCollection(TestCase):
    pattern = [
        os.path.join(data_dir, pic) for pic in ['brick.png', 'color.png']
    ]

    pattern_matched = [
        os.path.join(data_dir, pic) for pic in ['brick.png', 'moon.png']
    ]

    def setUp(self):
        reset_plugins()
        # Generic image collection with images of different shapes.
        self.images = ImageCollection(self.pattern)
        # Image collection with images having shapes that match.
        self.images_matched = ImageCollection(self.pattern_matched)
        # Same images as a collection of frames
        self.frames_matched = MultiImage(self.pattern_matched)

    def test_len(self):
        assert len(self.images) == 2

    def test_getitem(self):
        num = len(self.images)
        for i in range(-num, num):
            assert isinstance(self.images[i], np.ndarray)
        assert_allclose(self.images[0], self.images[-num])

        def return_img(n):
            return self.images[n]

        with testing.raises(IndexError):
            return_img(num)
        with testing.raises(IndexError):
            return_img(-num - 1)

    def test_slicing(self):
        assert type(self.images[:]) is ImageCollection
        assert len(self.images[:]) == 2
        assert len(self.images[:1]) == 1
        assert len(self.images[1:]) == 1
        assert_allclose(self.images[0], self.images[:1][0])
        assert_allclose(self.images[1], self.images[1:][0])
        assert_allclose(self.images[1], self.images[::-1][0])
        assert_allclose(self.images[0], self.images[::-1][1])

    def test_files_property(self):
        assert isinstance(self.images.files, list)

        def set_files(f):
            self.images.files = f

        with testing.raises(AttributeError):
            set_files('newfiles')

    def test_custom_load_func_w_kwarg(self):
        load_pattern = os.path.join(data_dir, 'no_time_for_that_tiny.gif')

        def load_fn(f, step):
            vid = imageio.get_reader(f)
            seq = [v for v in vid.iter_data()]
            return seq[::step]

        ic = ImageCollection(load_pattern, load_func=load_fn, step=3)
        # Each file should map to one image (array).
        assert len(ic) == 1
        # GIF file has 24 frames, so 24 / 3 equals 8.
        assert len(ic[0]) == 8

    def test_custom_load_func(self):
        def load_fn(x):
            return x

        ic = ImageCollection(os.pathsep.join(self.pattern), load_func=load_fn)
        assert_equal(ic[0], self.pattern[0])

    def test_concatenate(self):
        array = self.images_matched.concatenate()
        expected_shape = (len(self.images_matched), ) + self.images[0].shape
        assert_equal(array.shape, expected_shape)

    def test_concatenate_mismatched_image_shapes(self):
        with testing.raises(ValueError):
            self.images.concatenate()

    def test_multiimage_imagecollection(self):
        assert_equal(self.images_matched[0], self.frames_matched[0])
        assert_equal(self.images_matched[1], self.frames_matched[1])