Example #1
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def test_vae(vae):
    for part in ('train', 'val', 'test'):
        input_images = dataset.fetch_smallbatch_from_celeba('CelebA',
                                                            part=part)
        rec_images = vae.get_layer('decoder').predict(
            vae.get_layer('encoder').predict(input_images)[0])
        plot_image(img_renorm(input_images), img_renorm(rec_images))
Example #2
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def random(vae):
    z_shape = K.int_shape(vae.get_layer('encoder').outputs[0])
    z = K.random_normal(shape=(z_shape[1], ))
    z = z.eval(session=tf.Session())
    z = np.expand_dims(z, axis=0)

    modified_image = vae.get_layer('decoder').predict(z)
    plot_image(img_renorm(modified_image), img_renorm(modified_image))
Example #3
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def test_trans(translator, discriminator, image_file_name, target_gender):
    image = read_image(image_file_name)
    image = np.expand_dims(image, axis=0)
    target_gender = np.expand_dims(target_gender, axis=0)
    translated_img = translator.predict([image, target_gender])

    r_src, _, r_cls = discriminator.predict(image)
    g_src, _, g_cls = discriminator.predict(translated_img)

    plot_image(img_renorm(image), img_renorm(translated_img))
    print('input: ' + str(r_src) + " , " + str(r_cls) + ' - translated: ' +
          str(g_src) + " , " + str(g_cls))
Example #4
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def trans_attribute(vae, image_file_name, attribute_vectors_file,
                    attr_trans_dic):
    attribute_vectors = np.load(attribute_vectors_file).item()

    image = read_image(image_file_name)
    image = np.expand_dims(image, axis=0)

    z = vae.get_layer('encoder').predict(image)[0]

    for attr, trans in attr_trans_dic.items():
        z[0] += (attribute_vectors[attr] * trans)

    modified_image = vae.get_layer('decoder').predict(z)
    plot_image(img_renorm(image), img_renorm(modified_image))
Example #5
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def compute_attribute_vector(vae,
                             attrs,
                             attribute_vectors_file,
                             batch_size=32):
    sess = K.get_session()
    encoder = vae.get_layer('encoder')
    z_shape = K.int_shape(encoder.outputs[0])
    pos_vectors = np.zeros((len(attrs), z_shape[1]), np.float32)
    neg_vectors = np.zeros((len(attrs), z_shape[1]), np.float32)
    pos_nums = np.zeros((len(attrs), 1), np.int32)
    neg_nums = np.zeros((len(attrs), 1), np.int32)

    data, total_num = dataset.load_full_celeba_with_labels(
        'CelebA', batch_size, attrs)

    iterator = data.make_one_shot_iterator()
    next_element = iterator.get_next()
    while True:
        try:
            images, labels = sess.run(next_element)
            z = encoder.predict(images)[0]

            for i in range(len(attrs)):
                pos_idx = np.argwhere(labels[:, i] == 1)[:, 0]
                neg_idx = np.argwhere(labels[:, i] == -1)[:, 0]
                pos_vec = np.sum(z[pos_idx, :], 0)
                neg_vec = np.sum(z[neg_idx, :], 0)
                pos_nums[i][0] += len(pos_idx)
                neg_nums[i][0] += len(neg_idx)
                pos_vectors[i] += pos_vec
                neg_vectors[i] += neg_vec
        except tf.errors.OutOfRangeError:
            break

    pos_vectors /= pos_nums
    neg_vectors /= neg_nums

    attribute_vectors = {}
    pos_images = vae.get_layer('decoder').predict(pos_vectors)
    neg_images = vae.get_layer('decoder').predict(neg_vectors)
    for i in range(len(attrs)):
        attribute_vectors[attrs[i]] = pos_vectors[i] - neg_vectors[i]
        # draw the attribute for debugging
        print(attrs[i])
        plot_image([img_renorm(pos_images[i])], [img_renorm(neg_images[i])])

    np.save(attribute_vectors_file, attribute_vectors)
Example #6
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    def test_gan(self, epoch):
        for part in ('train', 'val', 'test'):
            ds = dataset.load_celeba('CelebA',
                                     batch_size,
                                     part=part,
                                     consumer='translator',
                                     smallbatch=10)

            element = ds.make_one_shot_iterator().get_next()
            sess = K.get_session()
            imgs, labels = sess.run(element)

            labels = 1 - labels
            print(labels)
            rec_imgs = self.generator.predict([imgs, labels])
            src_real, _, cls_real = self.discriminator.predict(imgs)
            src_fake, _, cls_fake = self.discriminator.predict(rec_imgs)
            for r, f, sr, cr, sf, cf in zip(imgs, rec_imgs, src_real, cls_real,
                                            src_fake, cls_fake):
                plot_images([img_renorm(r), img_renorm(f)])
                print('real: ' + str(sr) + ' cls ' + str(cr) + '   fake: ' +
                      str(sf) + ' cls ' + str(cf))
Example #7
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def trans_attributes(vae, image_file_name, attribute_vectors_file, attrs):
    attribute_vectors = np.load(attribute_vectors_file).item()
    image = read_image('CelebA/img_align_celeba/' + image_file_name)
    image = np.expand_dims(image, axis=0)

    z = vae.get_layer('encoder').predict(image)[0]
    z_v = [z[0] + attribute_vectors[attr] for attr in attrs]
    z_v2 = [z[0] - attribute_vectors[attr] for attr in attrs]
    z_v.extend(z_v2)
    z_v = np.asarray(z_v, dtype=np.float32)
    modified_images = vae.get_layer('decoder').predict(z_v)
    images = np.append(modified_images, image, axis=0)
    plot_images(img_renorm(images))
Example #8
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def merge_2(vae, image_file_name1, image_file_name2):

    image1 = read_image(image_file_name1)
    image1 = np.expand_dims(image1, axis=0)

    z1 = vae.get_layer('encoder').predict(image1)[0]

    image2 = read_image(image_file_name2)
    image2 = np.expand_dims(image2, axis=0)

    z2 = vae.get_layer('encoder').predict(image2)[0]
    z_v = []
    for i in range(9):
        z = (z2[0] * i + z1[0] * (8 - i)) / 8
        z_v.append(z)

    z_v = np.asarray(z_v, dtype=np.float32)
    images = vae.get_layer('decoder').predict(z_v)
    plot_images(img_renorm(images))
Example #9
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 def test_gan(self, epoch):
     for part in ('train', 'val', 'test'):
         images = dataset.fetch_smallbatch_from_celeba('CelebA', part=part)
         rec_imgs = self.generator.predict(images)
         plot_image(img_renorm(images), img_renorm(rec_imgs), epoch=epoch)