示例#1
0
def test_keras_model(num_classes):

    bounds = (0, 255)
    channels = num_classes

    model = Sequential()
    model.add(
        GlobalAveragePooling2D(data_format='channels_last',
                               input_shape=(5, 5, channels)))

    model = KerasModel(model, bounds=bounds, predicts='logits')

    test_images = np.random.rand(2, 5, 5, channels).astype(np.float32)
    test_label = 7

    assert model.batch_predictions(test_images).shape \
        == (2, num_classes)

    test_logits = model.predictions(test_images[0])
    assert test_logits.shape == (num_classes, )

    test_gradient = model.gradient(test_images[0], test_label)
    assert test_gradient.shape == test_images[0].shape

    np.testing.assert_almost_equal(
        model.predictions_and_gradient(test_images[0], test_label)[0],
        test_logits)
    np.testing.assert_almost_equal(
        model.predictions_and_gradient(test_images[0], test_label)[1],
        test_gradient)

    assert model.num_classes() == num_classes
示例#2
0
def test_keras_model(num_classes):

    bounds = (0, 255)
    channels = num_classes

    model = Sequential()
    with warnings.catch_warnings():
        warnings.filterwarnings("ignore", category=DeprecationWarning)
        model.add(GlobalAveragePooling2D(
            data_format='channels_last', input_shape=(5, 5, channels)))

        model = KerasModel(
            model,
            bounds=bounds,
            predicts='logits')

    test_images = np.random.rand(2, 5, 5, channels).astype(np.float32)
    test_label = 7

    assert model.batch_predictions(test_images).shape \
        == (2, num_classes)

    test_logits = model.predictions(test_images[0])
    assert test_logits.shape == (num_classes,)

    test_gradient = model.gradient(test_images[0], test_label)
    assert test_gradient.shape == test_images[0].shape

    np.testing.assert_almost_equal(
        model.predictions_and_gradient(test_images[0], test_label)[0],
        test_logits)
    np.testing.assert_almost_equal(
        model.predictions_and_gradient(test_images[0], test_label)[1],
        test_gradient)

    assert model.num_classes() == num_classes