def example_gan(adversarial_optimizer, path, opt_g, opt_d, nb_epoch, generator, discriminator, latent_dim,
                targets=gan_targets, loss='binary_crossentropy'):
    csvpath = os.path.join(path, "history.csv")
    if os.path.exists(csvpath):
        print("Already exists: {}".format(csvpath))
        return

    print("Training: {}".format(csvpath))
    # gan (x - > yfake, yreal), z is gaussian generated on GPU
    # can also experiment with uniform_latent_sampling
    d_g = discriminator(0)
    d_d = discriminator(0.5)
    generator.summary()
    d_d.summary()
    gan_g = simple_gan(generator, d_g, None)
    gan_d = simple_gan(generator, d_d, None)
    x = gan_g.inputs[1]
    z = normal_latent_sampling((latent_dim,))(x)
    # eliminate z from inputs
    gan_g = Model([x], fix_names(gan_g([z, x]), gan_g.output_names))
    gan_d = Model([x], fix_names(gan_d([z, x]), gan_d.output_names))

    # build adversarial model
    model = AdversarialModel(player_models=[gan_g, gan_d],
                             player_params=[generator.trainable_weights, d_d.trainable_weights],
                             player_names=["generator", "discriminator"])
    model.adversarial_compile(adversarial_optimizer=adversarial_optimizer,
                              player_optimizers=[opt_g, opt_d],
                              loss=loss)

    # create callback to generate images
    zsamples = np.random.normal(size=(10 * 10, latent_dim))

    def generator_sampler():
        xpred = dim_ordering_unfix(generator.predict(zsamples)).transpose((0, 2, 3, 1))
        return xpred.reshape((10, 10) + xpred.shape[1:])

    generator_cb = ImageGridCallback(os.path.join(path, "epoch-{:03d}.png"), generator_sampler, cmap=None)

    # train model
    xtrain, xtest = cifar10_data()
    y = targets(xtrain.shape[0])
    ytest = targets(xtest.shape[0])
    callbacks = [generator_cb]
    if K.backend() == "tensorflow":
        callbacks.append(
            TensorBoard(log_dir=os.path.join(path, 'logs'), histogram_freq=0, write_graph=True, write_images=True))
    history = model.fit(x=dim_ordering_fix(xtrain), y=y, validation_data=(dim_ordering_fix(xtest), ytest),
                        callbacks=callbacks, nb_epoch=nb_epoch,
                        batch_size=32)

    # save history to CSV
    df = pd.DataFrame(history.history)
    df.to_csv(csvpath)

    # save models
    generator.save(os.path.join(path, "generator.h5"))
    d_d.save(os.path.join(path, "discriminator.h5"))
Exemple #2
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def example_gan(adversarial_optimizer, path, opt_g, opt_d, nb_epoch, generator, discriminator, latent_dim,
                targets=gan_targets, loss='binary_crossentropy'):
    csvpath = os.path.join(path, "history.csv")
    if os.path.exists(csvpath):
        print("Already exists: {}".format(csvpath))
        return

    print("Training: {}".format(csvpath))
    # gan (x - > yfake, yreal), z is gaussian generated on GPU
    # can also experiment with uniform_latent_sampling
    generator.summary()
    discriminator.summary()
    gan = simple_gan(generator=generator,
                     discriminator=discriminator,
                     latent_sampling=normal_latent_sampling((latent_dim,)))

    # 적대적 모델 정의
    model = AdversarialModel(base_model=gan,
                             player_params=[generator.trainable_weights, discriminator.trainable_weights],
                             player_names=["generator", "discriminator"])
    model.adversarial_compile(adversarial_optimizer=adversarial_optimizer,
                              player_optimizers=[opt_g, opt_d],
                              loss=loss)

    # 이미지 생성을 위한 콜백 생성
    zsamples = np.random.normal(size=(10 * 10, latent_dim))

    def generator_sampler():
        xpred = dim_ordering_unfix(generator.predict(zsamples)).transpose((0, 2, 3, 1))
        return xpred.reshape((10, 10) + xpred.shape[1:])

    generator_cb = ImageGridCallback(os.path.join(path, "epoch-{:03d}.png"), generator_sampler, cmap=None)

    # 모델 학습
    xtrain, xtest = cifar10_data()
    y = targets(xtrain.shape[0])
    ytest = targets(xtest.shape[0])
    callbacks = [generator_cb]
    K.set_image_dim_ordering('tf')
    if K.backend() == "tensorflow":
        os.makedirs(path + '/logs',exist_ok=True)
        callbacks.append(
            TensorBoard(log_dir=os.path.join(path, 'logs'), histogram_freq=0, write_graph=True, write_images=True))

    history = fit(model, x=xtrain, y=y, validation_data=(xtest, ytest),
                  callbacks=callbacks, nb_epoch=nb_epoch,
                  batch_size=32)


    # 히스토리를 CSV에 저장
    df = pd.DataFrame(history.history)
    df.to_csv(csvpath)

    # 모델 저장
    generator.save(os.path.join(path, "generator.h5"))
    discriminator.save(os.path.join(path, "discriminator.h5"))
def example_gan(adversarial_optimizer, path, opt_g, opt_d, nb_epoch, generator, discriminator, latent_dim,
                targets=gan_targets, loss='binary_crossentropy'):
    csvpath = os.path.join(path, "history.csv")
    if os.path.exists(csvpath):
        print("Already exists: {}".format(csvpath))
        return

    print("Training: {}".format(csvpath))
    # gan (x - > yfake, yreal), z is gaussian generated on GPU
    # can also experiment with uniform_latent_sampling
    generator.summary()
    discriminator.summary()
    gan = simple_gan(generator=generator,
                     discriminator=discriminator,
                     latent_sampling=normal_latent_sampling((latent_dim,)))

    # build adversarial model
    model = AdversarialModel(base_model=gan,
                             player_params=[generator.trainable_weights, discriminator.trainable_weights],
                             player_names=["generator", "discriminator"])
    model.adversarial_compile(adversarial_optimizer=adversarial_optimizer,
                              player_optimizers=[opt_g, opt_d],
                              loss=loss)

    # create callback to generate images
    zsamples = np.random.normal(size=(10 * 10, latent_dim))

    def generator_sampler():
        xpred = dim_ordering_unfix(generator.predict(zsamples)).transpose((0, 2, 3, 1))
        return xpred.reshape((10, 10) + xpred.shape[1:])

    generator_cb = ImageGridCallback(os.path.join(path, "epoch-{:03d}.png"), generator_sampler, cmap=None)

    # train model
    xtrain, xtest = cifar10_data()
    y = targets(xtrain.shape[0])
    ytest = targets(xtest.shape[0])
    callbacks = [generator_cb]
    if K.backend() == "tensorflow":
        callbacks.append(
            TensorBoard(log_dir=os.path.join(path, 'logs'), histogram_freq=0, write_graph=True, write_images=True))
    history = fit(model, x=xtrain, y=y, validation_data=(xtest, ytest),
                  callbacks=callbacks, nb_epoch=nb_epoch,
                  batch_size=32)

    # save history to CSV
    df = pd.DataFrame(history.history)
    df.to_csv(csvpath)

    # save models
    generator.save(os.path.join(path, "generator.h5"))
    discriminator.save(os.path.join(path, "discriminator.h5"))
Exemple #4
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def gen_sample(batch_size, latent_dim, test):
    xtrain, xtest = cifar10_data()
    if test:
        data = xtest
        limit = xtest.shape[0]
    else:
        data = xtrain
        limit = xtrain.shape[0]

    while True:
        noise = np.random.randn(batch_size, latent_dim)
        #    noise = 1/(1+np.exp(-noise))
        yield [data[random.sample(range(limit), batch_size)], noise], [
            noise,
            np.ones((batch_size, 1)),
            np.zeros((batch_size, 1)), noise,
            np.zeros((batch_size, 1)),
            np.ones((batch_size, 1))
        ]
def example_aae(path, adversarial_optimizer):
    # z \in R^100
    latent_dim = 256
    units = 512
    # x \in R^{28x28}
    input_shape = dim_ordering_shape((3, 32, 32))

    # generator (z -> x)
    generator = model_generator(latent_dim, units=units)
    # encoder (x ->z)
    encoder = model_encoder(latent_dim, input_shape, units=units)
    # autoencoder (x -> x')
    autoencoder = Model(encoder.inputs, generator(encoder(encoder.inputs)))
    # discriminator (z -> y)
    discriminator = model_discriminator(latent_dim, units=units)

    # build AAE
    x = encoder.inputs[0]
    z = encoder(x)
    xpred = generator(z)
    zreal = normal_latent_sampling((latent_dim, ))(x)
    yreal = discriminator(zreal)
    yfake = discriminator(z)
    aae = Model(x, fix_names([xpred, yfake, yreal],
                             ["xpred", "yfake", "yreal"]))

    # print summary of models
    generator.summary()
    encoder.summary()
    discriminator.summary()
    autoencoder.summary()

    # build adversarial model
    generative_params = generator.trainable_weights + encoder.trainable_weights
    model = AdversarialModel(
        base_model=aae,
        player_params=[generative_params, discriminator.trainable_weights],
        player_names=["generator", "discriminator"])
    model.adversarial_compile(
        adversarial_optimizer=adversarial_optimizer,
        player_optimizers=[Adam(3e-4, decay=1e-4),
                           Adam(1e-3, decay=1e-4)],
        loss={
            "yfake": "binary_crossentropy",
            "yreal": "binary_crossentropy",
            "xpred": "mean_squared_error"
        },
        player_compile_kwargs=[{
            "loss_weights": {
                "yfake": 1e-1,
                "yreal": 1e-1,
                "xpred": 1e2
            }
        }] * 2)

    # load mnist data
    xtrain, xtest = cifar10_data()

    # callback for image grid of generated samples
    def generator_sampler():
        zsamples = np.random.normal(size=(10 * 10, latent_dim))
        return dim_ordering_unfix(generator.predict(zsamples)).transpose(
            (0, 2, 3, 1)).reshape((10, 10, 32, 32, 3))

    generator_cb = ImageGridCallback(
        os.path.join(path, "generated-epoch-{:03d}.png"), generator_sampler)

    # callback for image grid of autoencoded samples
    def autoencoder_sampler():
        xsamples = n_choice(xtest, 10)
        xrep = np.repeat(xsamples, 9, axis=0)
        xgen = dim_ordering_unfix(autoencoder.predict(xrep)).reshape(
            (10, 9, 3, 32, 32))
        xsamples = dim_ordering_unfix(xsamples).reshape((10, 1, 3, 32, 32))
        samples = np.concatenate((xsamples, xgen), axis=1)
        samples = samples.transpose((0, 1, 3, 4, 2))
        return samples

    autoencoder_cb = ImageGridCallback(os.path.join(
        path, "autoencoded-epoch-{:03d}.png"),
                                       autoencoder_sampler,
                                       cmap=None)

    # train network
    # generator, discriminator; pred, yfake, yreal
    n = xtrain.shape[0]
    y = [
        xtrain,
        np.ones((n, 1)),
        np.zeros((n, 1)), xtrain,
        np.zeros((n, 1)),
        np.ones((n, 1))
    ]
    ntest = xtest.shape[0]
    ytest = [
        xtest,
        np.ones((ntest, 1)),
        np.zeros((ntest, 1)), xtest,
        np.zeros((ntest, 1)),
        np.ones((ntest, 1))
    ]
    history = fit(model,
                  x=xtrain,
                  y=y,
                  validation_data=(xtest, ytest),
                  callbacks=[generator_cb, autoencoder_cb],
                  nb_epoch=100,
                  batch_size=32)

    # save history
    df = pd.DataFrame(history.history)
    df.to_csv(os.path.join(path, "history.csv"))

    # save model
    encoder.save(os.path.join(path, "encoder.h5"))
    generator.save(os.path.join(path, "generator.h5"))
    discriminator.save(os.path.join(path, "discriminator.h5"))
def example_aae(path, adversarial_optimizer):
    # z \in R^100
    latent_dim = 256
    units = 512
    # x \in R^{28x28}
    input_shape = dim_ordering_shape((3, 32, 32))

    # generator (z -> x)
    generator = model_generator(latent_dim, units=units)
    # encoder (x ->z)
    encoder = model_encoder(latent_dim, input_shape, units=units)
    # autoencoder (x -> x')
    autoencoder = Model(encoder.inputs, generator(encoder(encoder.inputs)))
    # discriminator (z -> y)
    discriminator = model_discriminator(latent_dim, units=units)

    # build AAE
    x = encoder.inputs[0]
    z = encoder(x)
    xpred = generator(z)
    zreal = normal_latent_sampling((latent_dim,))(x)
    yreal = discriminator(zreal)
    yfake = discriminator(z)
    aae = Model(x, fix_names([xpred, yfake, yreal], ["xpred", "yfake", "yreal"]))

    # print summary of models
    generator.summary()
    encoder.summary()
    discriminator.summary()
    autoencoder.summary()

    # build adversarial model
    generative_params = generator.trainable_weights + encoder.trainable_weights
    model = AdversarialModel(base_model=aae,
                             player_params=[generative_params, discriminator.trainable_weights],
                             player_names=["generator", "discriminator"])
    model.adversarial_compile(adversarial_optimizer=adversarial_optimizer,
                              player_optimizers=[Adam(3e-4, decay=1e-4), Adam(1e-3, decay=1e-4)],
                              loss={"yfake": "binary_crossentropy", "yreal": "binary_crossentropy",
                                    "xpred": "mean_squared_error"},
                              compile_kwargs={"loss_weights": {"yfake": 1e-1, "yreal": 1e-1, "xpred": 1e2}})

    # load mnist data
    xtrain, xtest = cifar10_data()

    # callback for image grid of generated samples
    def generator_sampler():
        zsamples = np.random.normal(size=(10 * 10, latent_dim))
        return dim_ordering_unfix(generator.predict(zsamples)).transpose((0, 2, 3, 1)).reshape((10, 10, 32, 32, 3))

    generator_cb = ImageGridCallback(os.path.join(path, "generated-epoch-{:03d}.png"), generator_sampler)

    # callback for image grid of autoencoded samples
    def autoencoder_sampler():
        xsamples = n_choice(xtest, 10)
        xrep = np.repeat(xsamples, 9, axis=0)
        xgen = dim_ordering_unfix(autoencoder.predict(xrep)).reshape((10, 9, 3, 32, 32))
        xsamples = dim_ordering_unfix(xsamples).reshape((10, 1, 3, 32, 32))
        samples = np.concatenate((xsamples, xgen), axis=1)
        samples = samples.transpose((0, 1, 3, 4, 2))
        return samples

    autoencoder_cb = ImageGridCallback(os.path.join(path, "autoencoded-epoch-{:03d}.png"), autoencoder_sampler,
                                       cmap=None)

    # train network
    # generator, discriminator; pred, yfake, yreal
    n = xtrain.shape[0]
    y = [xtrain, np.ones((n, 1)), np.zeros((n, 1)), xtrain, np.zeros((n, 1)), np.ones((n, 1))]
    ntest = xtest.shape[0]
    ytest = [xtest, np.ones((ntest, 1)), np.zeros((ntest, 1)), xtest, np.zeros((ntest, 1)), np.ones((ntest, 1))]
    history = fit(model, x=xtrain, y=y, validation_data=(xtest, ytest),
                  callbacks=[generator_cb, autoencoder_cb],
                  nb_epoch=100, batch_size=32)

    # save history
    df = pd.DataFrame(history.history)
    df.to_csv(os.path.join(path, "history.csv"))

    # save model
    encoder.save(os.path.join(path, "encoder.h5"))
    generator.save(os.path.join(path, "generator.h5"))
    discriminator.save(os.path.join(path, "discriminator.h5"))
Exemple #7
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def example_faae(path, adversarial_optimizer):

    latent_dim = 256
    units = 512

    input_shape = dim_ordering_shape((3, 32, 32))

    # generator (z -> x)
    generator = model_generator(latent_dim, units=units)
    # encoder (x ->z)
    encoder = model_encoder(latent_dim, input_shape, units=units)
    # autoencoder (x -> x')
    autoencoder = Model(encoder.inputs, generator(encoder(encoder.inputs)))
    # discriminator (z -> y)
    discriminator = model_discriminator()

    # build FAAE
    zreal = discriminator.inputs[0]
    x = generator.inputs[0]
    z = generator(x)
    xpred = encoder(z)
    yreal = discriminator(zreal)
    yfake = discriminator(z)
    aae = Model([zreal, x],
                fix_names([xpred, yfake, yreal], ["xpred", "yfake", "yreal"]))

    # print summary of models
    generator.summary()
    encoder.summary()
    discriminator.summary()

    #encoder.load_weights(os.path.join(path, "encoder.h5"))
    #generator.load_weights(os.path.join(path, "generator.h5"))
    #discriminator.load_weights(os.path.join(path, "discriminator.h5"))

    # build adversarial model
    generative_params = generator.trainable_weights + encoder.trainable_weights
    model = AdversarialModel(
        base_model=aae,
        player_params=[generative_params, discriminator.trainable_weights],
        player_names=["generator", "discriminator"])
    model.adversarial_compile(
        adversarial_optimizer=adversarial_optimizer,
        player_optimizers=[Adam(3e-4, decay=1e-4),
                           Adam(1e-3, decay=1e-4)],
        loss={
            "yfake": "binary_crossentropy",
            "yreal": "binary_crossentropy",
            "xpred": "mean_squared_error"
        },
        player_compile_kwargs=[{
            "loss_weights": {
                "yfake": 1,
                "yreal": 1,
                "xpred": 8
            }
        }] * 2)

    xtrain, xtest = cifar10_data()

    def generator_sampler():
        zsamples = np.random.randn(10 * 10, latent_dim)
        return dim_ordering_unfix(generator.predict(zsamples)).transpose(
            (0, 2, 3, 1)).reshape((10, 10, 32, 32, 3))

    generator_cb = ImageGridCallback(
        os.path.join(path, "generated-epoch-{:03d}.png"), generator_sampler)

    def autoencoder_sampler():
        xsamples = n_choice(xtest, 10)
        xrep = np.repeat(xsamples, 9, axis=0)
        xgen = dim_ordering_unfix(autoencoder.predict(xrep)).reshape(
            (10, 9, 3, 32, 32))
        xsamples = dim_ordering_unfix(xsamples).reshape((10, 1, 3, 32, 32))
        samples = np.concatenate((xsamples, xgen), axis=1)
        samples = samples.transpose((0, 1, 3, 4, 2))
        return samples

    autoencoder_cb = ImageGridCallback(os.path.join(
        path, "autoencoded-epoch-{:03d}.png"),
                                       autoencoder_sampler,
                                       cmap=None)

    train_datagen = gen_sample(128, 256, False)
    test_datagen = gen_sample(32, 256, True)
    history = model.fit_generator(train_datagen,
                                  epochs=200,
                                  steps_per_epoch=1000,
                                  validation_data=test_datagen,
                                  validation_steps=100,
                                  callbacks=[generator_cb, autoencoder_cb])

    # save history
    df = pd.DataFrame(history.history)
    df.to_csv(os.path.join(path, "history.csv"))

    # save model
    encoder.save(os.path.join(path, "encoder.h5"))
    generator.save(os.path.join(path, "generator.h5"))
    discriminator.save(os.path.join(path, "discriminator.h5"))
player_params=[generator.trainable_weights, d_d.trainable_weights],
player_names=["generator", "discriminator"])
model.adversarial_compile(adversarial_optimizer=adversarial_optimizer,
player_optimizers=[opt_g, opt_d], loss=loss)


# create callback to generate images
zsamples = np.random.normal(size=(10 * 10, latent_dim))
def generator_sampler():
	xpred = dim_ordering_unfix(generator.predict(zsamples)).transpose((0, 2, 3, 1))
	return xpred.reshape((10, 10) + xpred.shape[1:])
generator_cb = ImageGridCallback(os.path.join(path, "epoch-{:03d}.png"),
generator_sampler, cmap=None)

# train model
xtrain, xtest = cifar10_data()
y = targets(xtrain.shape[0])
ytest = targets(xtest.shape[0])
callbacks = [generator_cb]
if K.backend() == "tensorflow":
	callbacks.append(TensorBoard(log_dir=os.path.join(path, 'logs'),
	histogram_freq=0, write_graph=True, write_images=True))
history = model.fit(x=dim_ordering_fix(xtrain),y=y,
validation_data=(dim_ordering_fix(xtest), ytest),
callbacks=callbacks, nb_epoch=nb_epoch,
batch_size=32)
# save history to CSV
df = pd.DataFrame(history.history)
df.to_csv(csvpath)
# save models
generator.save(os.path.join(path, "generator.h5"))