Beispiel #1
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def main(argv):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size

    with tf.Session() as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        else:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
Beispiel #2
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def main(argv):
    flags = tf.app.flags
    FLAGS = flags.FLAGS
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size

    # Cluster One setting
    clusterone_dist_env = distributed_env(config.root_path_to_local_data,
                                          config.path_to_local_logs,
                                          config.cloud_path_to_data,
                                          config.local_repo,
                                          config.cloud_user_repo, flags)

    clusterone_dist_env.get_env()

    tf.reset_default_graph()
    device, target = clusterone_dist_env.device_and_target(
    )  # getting node environment
    # end of setting

    # Using tensorflow's MonitoredTrainingSession to take care of checkpoints
    with tf.train.MonitoredTrainingSession(
            master=target,
            is_chief=(FLAGS.task_index == 0),
            checkpoint_dir=FLAGS.log_dir) as sess:

        #     with tf.Session() as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            with tf.device(device):  # define model
                model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            config.batch_size = 1
            coco, data, vocabulary = prepare_eval_data(config)
            with tf.device(device):  # define model
                model = CaptionGenerator(config)
                model.load(sess, FLAGS.model_file)
                tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        else:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            with tf.device(device):  # define model
                model = CaptionGenerator(config)
                model.load(sess, FLAGS.model_file)
                tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
Beispiel #3
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def main(argv):
    config = Config()
    config.test_file_name = flags.test_image
    config.phase = 'test'
    config.beam_size = 3

    with tf.Session() as sess:
        data, vocabulary = prepare_test_data(config)
        model = CaptionGenerator(config)
        model.load(sess, './data/289999.npy')
        tf.get_default_graph().finalize()
        model.test(sess, data, vocabulary)
Beispiel #4
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def main(argv):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size

    with tf.compat.v1.Session() as sess:
        if FLAGS.phase == 'train':
            # training phase
            config.train_image_dir = config.train_image_dir[:
                                                            -1] + "_" + FLAGS.namedir + "/"

            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            config.eval_image_dir = config.eval_image_dir[:
                                                          -1] + "_" + FLAGS.namedir + "/"
            config.eval_result_dir = config.eval_result_dir[:
                                                            -1] + "_" + FLAGS.namedir + "/"
            config.eval_result_file = config.eval_result_file[:
                                                              -5] + "_" + FLAGS.namedir + config.eval_result_file[
                                                                  -5:]  # .json

            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        else:
            # testing phase
            config.test_image_dir = config.test_image_dir[:
                                                          -1] + "_" + FLAGS.namedir + "/"
            config.test_result_dir = config.test_result_dir[:
                                                            -1] + "_" + FLAGS.namedir + "/"
            config.test_result_file = config.test_result_file[:
                                                              -4] + "_" + FLAGS.namedir + config.test_result_file[
                                                                  -4:]  # .csv

            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.compat.v1.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
Beispiel #5
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def main(argv):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size
    config.trainable_variable = FLAGS.train_cnn

    with tf.Session() as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            #load the cnn file
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        elif FLAGS.phase == 'test_loaded_cnn':
            # testing only cnn
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            imgs = tf.placeholder(tf.float32, [None, 224, 224, 3])
            probs = model.test_cnn(imgs)
            model.load_cnn(sess, FLAGS.cnn_model_file)

            img1 = imread(FLAGS.image_file, mode='RGB')
            img1 = imresize(img1, (224, 224))

            prob = sess.run(probs, feed_dict={imgs: [img1]})[0]
            preds = (np.argsort(prob)[::-1])[0:5]
            for p in preds:
                print(class_names[p], prob[p])

        else:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
Beispiel #6
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class show_and_tell_model():

    def __init__(self):
        self.cache = {}
        os.chdir('./show_attend_and_tell')
        self.config = Config()
        self.config.phase = FLAGS.phase
        self.config.train_cnn = FLAGS.train_cnn
        self.config.beam_size = FLAGS.beam_size


        # testing phase
        self.model = CaptionGenerator(self.config)
        self.model.load(sess, FLAGS.model_file)
        tf.get_default_graph().finalize()

    def run_model(self):
        data, vocabulary = prepare_test_data(self.config)
        self.model.test(sess, data, vocabulary)

    def process_list(self, img_list):
        for img in img_list:
            if img.split('/')[-1] in self.cache:
                continue
            self.download_image(img)
        self.run_model()
        self.update_cache()
        self.clear_results()

    def download_image(self, url):
        img_data = requests.get(url).content
        with open('./test/images/' + url.split('/')[-1] + '.jpg', 'wb') as handler:
            handler.write(img_data)

    def get_result(self, url):
        return self.cache.get(url, None)

    def update_cache(self):
        # os.chdir('./show_attend_and_tell')
        with open('./test/results.csv') as csvf:
            rr = csv.reader(csvf)
            results = list(rr)
            for result in results:
                self.cache[result[2].split('/')[-1].split('.jpg')[0]] = result[1] 
        print(self.cache)

    def clear_results(self):
        for file in os.listdir('./test/images/'):
            os.remove('./test/images/' + file)
        os.remove('./test/results.csv')
Beispiel #7
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def main(argv=None):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size

    with tf.Session() as sess:
        #         if FLAGS.phase == 'train':
        #             # training phase
        #             data = prepare_train_data(config)
        #             model = CaptionGenerator(config)
        #             sess.run(tf.global_variables_initializer())
        #             if FLAGS.load:
        #                 model.load(sess, FLAGS.model_file)
        #             if FLAGS.load_cnn:
        #                 model.load_cnn(sess, FLAGS.cnn_model_file)
        #             tf.get_default_graph().finalize()
        #             model.train(sess, data)

        #         elif FLAGS.phase == 'eval':
        #             # evaluation phase
        #             coco, data, vocabulary = prepare_eval_data(config)
        #             model = CaptionGenerator(config)
        #             model.load(sess, FLAGS.model_file)
        #             tf.get_default_graph().finalize()
        #             model.eval(sess, coco, data, vocabulary)

        #         else:
        # testing phase
        data, vocabulary = prepare_test_data(config)
        model = CaptionGenerator(config)
        model.load(sess, FLAGS.model_file)
        tf.get_default_graph().finalize()
        results, img_results = model.test(sess, data, vocabulary)
        return results, img_results
Beispiel #8
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def main(argv):
    os.system("ls /tinysrc")
    os.system("python tinysrc/download_flickr8k.py")
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.joint_train = FLAGS.joint_train
    config.beam_size = FLAGS.beam_size
    config.attention_mechanism = FLAGS.attention
    config.faster_rcnn_frozen = FLAGS.faster_rcnn_frozen

    with tf.Session() as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_faster_rcnn_feature_extractor(
                    sess, FLAGS.faster_rcnn_ckpt)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        else:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)

    os.system("rm -rf /output/Flickr8k_Dataset/")
    os.system("rm -rf /output/Flickr8k_text/")
Beispiel #9
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def main(argv):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size
    checkpoint_dir = config.checkpoint_dir
    save_checkpoint_secs = config.save_checkpoint_secs
    save_checkpoint_steps = config.save_checkpoint_steps

    global_step = tf.train.get_or_create_global_step()
    checkpoint_step = tf.assign_add(global_step, 1)

    model = CaptionGenerator(config)

    # with tf.Session() as sess:
    with tf.train.MonitoredTrainingSession(
            checkpoint_dir=checkpoint_dir,
            save_checkpoint_steps=save_checkpoint_steps,
    ) as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            # WIP modify load part
            # if FLAGS.load:
            #     model.load(sess, FLAGS.model_file)
            # if FLAGS.load_cnn:
            #     model.load_cnn(sess, FLAGS.cnn_model_file)
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        else:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
Beispiel #10
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def cpp_caption():
    config = Config()

    config.test_image_dir = '../buffer/'
    config.train_cnn = False
    config.phase = 'test'
    config.beam_size = 3

    data, vocabulary = prepare_test_data(config)
    model = CaptionGenerator(config)
    model.load(sess, FLAGS.model_file)
    tf.get_default_graph().finalize()
    caption = model.test(sess, data, vocabulary)

    return caption
Beispiel #11
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def main(argv):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size
    gpu_options = tf.GPUOptions(per_process_gpu_memory_fraction=0.9)

    with tf.Session(config=tf.ConfigProto(log_device_placement=False,
                                          gpu_options=gpu_options)) as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        else:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
Beispiel #12
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def main(_):
    config = Config()
    config.mode = FLAGS.mode
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size
    tf_config = tf.ConfigProto()
    tf_config.gpu_options.allow_growth = True
    # 设置按需分配GPU
    with tf.Session(config=tf_config) as sess:
        if FLAGS.mode == 'train':
            # training mode
            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.mode == 'eval':
            # evaluation mode
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        else:
            # testing mode
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
Beispiel #13
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def main(argv):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size

    with tf.Session() as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)
        else:
            # testing phase
            cap = cv2.VideoCapture(0)
            #cap = cv2.VideoCapture('./video3.mp4')
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            i = 1
            vocabulary = prepare_test_data(config)
            while True:
                ret, frame = cap.read()
                if not ret:
                    break
                if i == 1 or i % 4 == 0:
                    caption = model.test(sess, frame, vocabulary)

                i += 1
                word_and_img = np.concatenate((np.zeros(
                    (50, np.shape(frame)[1], 3), np.uint8), frame),
                                              axis=0)
                cv2.putText(word_and_img, caption, (15, 30),
                            cv2.FONT_HERSHEY_TRIPLEX, 0.5, (18, 87, 220), 1)
                cv2.imshow('VideoShow', word_and_img)
                cv2.waitKey(5)
Beispiel #14
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def main(argv):

    start_time = time.time()
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size
    config.distributed = FLAGS.distributed
    config.test_image_dir = os.path.join(FLAGS.node_root, 'images')
    config.test_result_dir = os.path.join(FLAGS.node_root, 'results')
    config.test_result_file = os.path.join(FLAGS.node_root, 'results.cvs')
    config.replicas = len(FLAGS.worker_hosts.split(","))
    if FLAGS.task_index == '':
        config.task_index = 0
    else:
        config.task_index = int(FLAGS.task_index)

    if FLAGS.phase == 'train':
        # training phase

        if FLAGS.distributed:
            config.train_image_dir = FLAGS.input_path

            ps_hosts = FLAGS.ps_hosts.split(",")

            worker_hosts = FLAGS.worker_hosts.split(",")

            # Create a cluster from the parameter server and worker hosts.
            cluster = tf.train.ClusterSpec({
                "ps": ps_hosts,
                "worker": worker_hosts
            })

            # Create and start a server for the local task.
            server = tf.train.Server(cluster,
                                     job_name=FLAGS.job_name,
                                     task_index=config.task_index)

            #with tf.device(tf.train.replica_device_setter(cluster=cluster)):
            #                global_step = tf.Variable(0)

            #with tf.device("/job:ps/task:0"):
            #	global_step = tf.Variable(0, name="global_step")

            if FLAGS.job_name == "ps":
                server.join()
            elif FLAGS.job_name == "worker":
                with tf.device(
                        tf.train.replica_device_setter(
                            worker_device="/job:worker/task:%d" %
                            config.task_index,
                            cluster=cluster)):

                    model = CaptionGenerator(config)
                    data = prepare_train_data(config)

                    init_op = tf.initialize_all_variables()
                    print "Variables Initialized ..."

                begin = time.time()
                #The StopAtStepHook handles stopping after running given steps.
                hooks = [tf.train.StopAtStepHook(num_steps=1200000)]

                # The MonitoredTrainingSession takes care of session initialization,
                # restoring from a checkpoint, saving to a checkpoint, and closing when done
                # or an error occurs.
                with tf.train.MonitoredTrainingSession(
                        master=server.target,
                        is_chief=(config.task_index == 0),
                        checkpoint_dir=
                        "/home/mauro.emc/image_captioning/models",
                        hooks=hooks) as mon_sess:

                    if not os.path.exists(config.summary_dir):
                        os.mkdir(config.summary_dir)

                    train_writer = tf.summary.FileWriter(
                        config.summary_dir, mon_sess.graph)

                    print "Start the model training"

                    #while not mon_sess.should_stop():
                    model.train(mon_sess, data, train_writer,
                                config.task_index)

                    train_writer.close()
                    print "Model stopped train"

            print("Train completed")
            print("Total Time in secs: " + str(time.time() - begin))

        else:
            with tf.Session() as sess:
                data = prepare_train_data(config)
                model = CaptionGenerator(config)
                sess.run(tf.global_variables_initializer())
                if FLAGS.load:
                    model.load(sess, FLAGS.model_file)
                if FLAGS.load_cnn:
                    model.load_cnn(sess, FLAGS.cnn_model_file)
                tf.get_default_graph().finalize()
                model.train(sess, data)

    elif FLAGS.phase == 'eval':
        with tf.Session() as sess:
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

    else:
        with tf.Session() as sess:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
    print 'Total time in seconds :   ' + str(time.time() - start_time)
Beispiel #15
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def main(argv):
    start_time = time.time()
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size
    config.distributed = FLAGS.distributed
    config.test_image_dir = os.path.join(FLAGS.node_root, 'images')
    config.test_result_dir = os.path.join(FLAGS.node_root, 'results')
    config.test_result_file = os.path.join(FLAGS.node_root, 'results.cvs')
    config.replicas = len(FLAGS.worker_hosts.split(","))
    config.task_index = FLAGS.task_index

    if FLAGS.phase == 'train':
        # training phase

        if FLAGS.distributed:
            config.train_image_dir = FLAGS.input_path
            print config.train_image_dir

            ps_hosts = FLAGS.ps_hosts.split(",")
            worker_hosts = FLAGS.worker_hosts.split(",")

            # Create a cluster from the parameter server and worker hosts.
            cluster = tf.train.ClusterSpec({
                "ps": ps_hosts,
                "worker": worker_hosts
            })

            # Create and start a server for the local task.
            server = tf.train.Server(cluster,
                                     job_name=FLAGS.job_name,
                                     task_index=FLAGS.task_index)

            if FLAGS.job_name == "ps":
                server.join()
            elif FLAGS.job_name == "worker":
                with tf.device(
                        tf.train.replica_device_setter(
                            worker_device="/job:worker/task:%d" %
                            FLAGS.task_index,
                            cluster=cluster)):

                    tf.reset_default_graph()

                    global_step = tf.get_variable(
                        'global_step', [],
                        initializer=tf.constant_initializer(0),
                        trainable=False,
                        dtype=tf.int32)

                    data = prepare_train_data(config)
                    model = CaptionGenerator(config)

                    init_op = tf.initialize_all_variables()

                is_chief = (FLAGS.task_index == 0)
                # Create a "supervisor", which oversees the training process.
                sv = tf.train.Supervisor(
                    is_chief=is_chief,
                    logdir="/home/mauro.emc/image_captioning/tmp/logs",
                    init_op=init_op,
                    global_step=global_step,
                    save_model_secs=600)
                with sv.prepare_or_wait_for_session(server.target) as sess:
                    if is_chief:
                        sv.start_queue_runners(sess, [chief_queue_runner])
                        # Insert initial tokens to the queue.
                        sess.run(init_token_op)
                    sess.run(tf.global_variables_initializer())
                    model.train(sess, data)
                sv.stop()
        else:
            with tf.Session() as sess:
                data = prepare_train_data(config)
                model = CaptionGenerator(config)
                sess.run(tf.global_variables_initializer())
                if FLAGS.load:
                    model.load(sess, FLAGS.model_file)
                if FLAGS.load_cnn:
                    model.load_cnn(sess, FLAGS.cnn_model_file)
                tf.get_default_graph().finalize()
                model.train(sess, data)

    elif FLAGS.phase == 'eval':
        with tf.Session() as sess:
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

    else:
        with tf.Session() as sess:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)
    print 'Total time in seconds :   ' + str(time.time() - start_time)
Beispiel #16
0
def main(argv):
    config = Config()
    config.phase = FLAGS.phase
    config.train_cnn = FLAGS.train_cnn
    config.beam_size = FLAGS.beam_size

    with tf.Session() as sess:
        if FLAGS.phase == 'train':
            # training phase
            data = prepare_train_data(config)
            model = CaptionGenerator(config)
            sess.run(tf.global_variables_initializer())
            if FLAGS.load:
                model.load(sess, FLAGS.model_file)
            if FLAGS.load_cnn:
                model.load_cnn(sess, FLAGS.cnn_model_file)
            tf.get_default_graph().finalize()
            model.train(sess, data)

        elif FLAGS.phase == 'eval':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval(sess, coco, data, vocabulary)

        elif FLAGS.phase == 'test_new_data':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_new_data(
                config.eval_caption_file_unsplash, config.eval_image_unsplash,
                config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval_new_data(sess, coco, data, vocabulary,
                                config.eval_result_dir_unsplash,
                                config.eval_result_file_unsplash)

        elif FLAGS.phase == 'test_new_data_vizwiz':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_new_data(
                config.eval_caption_file_vizwiz_train,
                config.eval_image_vizwiz_train, config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval_new_data(sess, coco, data, vocabulary,
                                config.eval_result_dir_vizwiz_train,
                                config.eval_result_file_vizwiz_train)

        elif FLAGS.phase == 'test_new_data_insta':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_new_data(
                config.eval_caption_file_insta, config.eval_image_insta,
                config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval_new_data(sess, coco, data, vocabulary,
                                config.eval_result_dir_insta,
                                config.eval_result_file_insta)

        elif FLAGS.phase == 'test_new_data_google_top_n':
            # evaluation phase
            coco, data, vocabulary = prepare_eval_new_data(
                config.eval_caption_file_topN, config.eval_image_topN, config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.eval_new_data(sess, coco, data, vocabulary,
                                config.eval_result_dir_topN,
                                config.eval_result_file_topN)

        else:
            # testing phase
            data, vocabulary = prepare_test_data(config)
            model = CaptionGenerator(config)
            model.load(sess, FLAGS.model_file)
            tf.get_default_graph().finalize()
            model.test(sess, data, vocabulary)