| import json |
| import os |
| import time |
| import numpy as np |
| import six |
| import tensorflow as tf |
| from PIL import Image |
|
|
| import model_common_train as sketch_vector_model |
| from hyper_parameters import FLAGS, get_default_hparams_clean |
| from utils import create_summary, save_model, reset_graph, load_checkpoint |
| from dataset_utils import load_dataset_training |
|
|
| os.environ['CUDA_VISIBLE_DEVICES'] = '0, 1' |
|
|
| tf.logging.set_verbosity(tf.logging.INFO) |
|
|
|
|
| def should_save_log_img(step_): |
| if step_ % 500 == 0: |
| return True |
| else: |
| return False |
|
|
|
|
| def save_log_images(sess, model, data_set, save_root, step_num, save_num=10): |
| res_gap = (model.hps.image_size_large - model.hps.image_size_small) // (save_num - 1) |
| log_img_resolutions = [] |
| for ii in range(save_num - 1): |
| log_img_resolutions.append(model.hps.image_size_small + ii * res_gap) |
| log_img_resolutions.append(model.hps.image_size_large) |
|
|
| for res_i in range(len(log_img_resolutions)): |
| resolution = log_img_resolutions[res_i] |
|
|
| sub_save_root = os.path.join(save_root, 'res_' + str(resolution)) |
| os.makedirs(sub_save_root, exist_ok=True) |
|
|
| input_photos, target_sketches, init_cursors, image_size_rand = \ |
| data_set.get_batch_from_memory(memory_idx=res_i, vary_thickness=model.hps.vary_thickness, |
| fixed_image_size=resolution, |
| random_cursor=model.hps.random_cursor, |
| init_cursor_on_undrawn_pixel=model.hps.init_cursor_on_undrawn_pixel) |
| |
| |
| |
|
|
| if input_photos is not None: |
| input_photo_val = np.expand_dims(input_photos, axis=-1) |
| else: |
| input_photo_val = np.expand_dims(target_sketches, axis=-1) |
|
|
| init_cursor_input = [init_cursors for _ in range(model.total_loop)] |
| init_cursor_input = np.concatenate(init_cursor_input, axis=0) |
| image_size_input = [image_size_rand for _ in range(model.total_loop)] |
| image_size_input = np.stack(image_size_input, axis=0) |
|
|
| feed = { |
| model.init_cursor: init_cursor_input, |
| model.image_size: image_size_input, |
| model.init_width: [model.hps.min_width], |
| } |
| for loop_i in range(model.total_loop): |
| feed[model.input_photo_list[loop_i]] = input_photo_val |
|
|
| raster_images_pred, raster_images_pred_rgb = sess.run([model.pred_raster_imgs, model.pred_raster_imgs_rgb], |
| feed) |
| raster_images_pred = (np.array(raster_images_pred[0]) * 255.0).astype(np.uint8) |
| input_sketch = (np.array(target_sketches[0]) * 255.0).astype(np.uint8) |
| raster_images_pred_rgb = (np.array(raster_images_pred_rgb[0]) * 255.0).astype(np.uint8) |
|
|
| pred_save_path = os.path.join(sub_save_root, str(step_num) + '.png') |
| target_save_path = os.path.join(sub_save_root, 'gt.png') |
|
|
| pred_rgb_save_root = os.path.join(sub_save_root, 'rgb') |
| os.makedirs(pred_rgb_save_root, exist_ok=True) |
| pred_rgb_save_path = os.path.join(pred_rgb_save_root, str(step_num) + '.png') |
|
|
| raster_images_pred = Image.fromarray(raster_images_pred, 'L') |
| raster_images_pred.save(pred_save_path, 'PNG') |
| input_sketch = Image.fromarray(input_sketch, 'L') |
| input_sketch.save(target_save_path, 'PNG') |
| raster_images_pred_rgb = Image.fromarray(raster_images_pred_rgb, 'RGB') |
| raster_images_pred_rgb.save(pred_rgb_save_path, 'PNG') |
|
|
|
|
| def train(sess, train_model, eval_sample_model, train_set, val_set, sub_log_root, sub_snapshot_root, sub_log_img_root): |
| |
| summary_writer = tf.summary.FileWriter(sub_log_root) |
|
|
| print('-' * 100) |
|
|
| |
| t_vars = tf.trainable_variables() |
| count_t_vars = 0 |
| for var in t_vars: |
| num_param = np.prod(var.get_shape().as_list()) |
| count_t_vars += num_param |
| print('%s | shape: %s | num_param: %i' % (var.name, str(var.get_shape()), num_param)) |
| print('Total trainable variables %i.' % count_t_vars) |
| print('-' * 100) |
|
|
| |
|
|
| hps = train_model.hps |
| start = time.time() |
|
|
| |
| snapshot_save_vars = [var for var in tf.global_variables() |
| if 'raster_unit' not in var.op.name and 'VGG16' not in var.op.name] |
| saver = tf.train.Saver(var_list=snapshot_save_vars, max_to_keep=20) |
|
|
| start_step = 1 |
| print('start_step', start_step) |
|
|
| mean_perc_relu_losses = [0.0 for _ in range(len(hps.perc_loss_layers))] |
|
|
| for _ in range(start_step, hps.num_steps + 1): |
| step = sess.run(train_model.global_step) |
|
|
| count_step = min(step, hps.num_steps) |
| curr_learning_rate = ((hps.learning_rate - hps.min_learning_rate) * |
| (1 - count_step / hps.num_steps) ** hps.decay_power + hps.min_learning_rate) |
|
|
| if hps.sn_loss_type == 'decreasing': |
| assert hps.decrease_stop_steps <= hps.num_steps |
| assert hps.stroke_num_loss_weight_end <= hps.stroke_num_loss_weight |
| curr_sn_k = (hps.stroke_num_loss_weight - hps.stroke_num_loss_weight_end) / float(hps.decrease_stop_steps) |
| curr_stroke_num_loss_weight = hps.stroke_num_loss_weight - count_step * curr_sn_k |
| curr_stroke_num_loss_weight = max(curr_stroke_num_loss_weight, hps.stroke_num_loss_weight_end) |
| elif hps.sn_loss_type == 'fixed': |
| curr_stroke_num_loss_weight = hps.stroke_num_loss_weight |
| elif hps.sn_loss_type == 'increasing': |
| curr_sn_k = hps.stroke_num_loss_weight / float(hps.num_steps - hps.increase_start_steps) |
| curr_stroke_num_loss_weight = max(count_step - hps.increase_start_steps, 0) * curr_sn_k |
| else: |
| raise Exception('Unknown sn_loss_type', hps.sn_loss_type) |
|
|
| if hps.early_pen_loss_type == 'head': |
| curr_early_pen_k = (hps.max_seq_len - hps.early_pen_length) / float(hps.num_steps) |
| curr_early_pen_loss_len = count_step * curr_early_pen_k + hps.early_pen_length |
|
|
| curr_early_pen_loss_start = 1 |
| curr_early_pen_loss_end = curr_early_pen_loss_len |
| elif hps.early_pen_loss_type == 'tail': |
| curr_early_pen_k = (hps.max_seq_len // 2 - 1) / float(hps.num_steps) |
| curr_early_pen_loss_len = count_step * curr_early_pen_k + hps.max_seq_len // 2 |
|
|
| curr_early_pen_loss_end = hps.max_seq_len |
| curr_early_pen_loss_start = curr_early_pen_loss_end - curr_early_pen_loss_len |
| elif hps.early_pen_loss_type == 'move': |
| curr_early_pen_k = (hps.max_seq_len // 2 - 1) / float(hps.num_steps) |
| curr_early_pen_loss_len = count_step * curr_early_pen_k + hps.max_seq_len // 2 |
|
|
| curr_early_pen_loss_start = hps.max_seq_len - curr_early_pen_loss_len |
| curr_early_pen_loss_end = curr_early_pen_loss_start + hps.max_seq_len // 2 |
| else: |
| raise Exception('Unknown early_pen_loss_type', hps.early_pen_loss_type) |
| curr_early_pen_loss_start = int(round(curr_early_pen_loss_start)) |
| curr_early_pen_loss_end = int(round(curr_early_pen_loss_end)) |
|
|
| input_photos, target_sketches, init_cursors, image_sizes = \ |
| train_set.get_batch_multi_res(loop_num=train_model.total_loop, vary_thickness=hps.vary_thickness, |
| random_cursor=hps.random_cursor, |
| init_cursor_on_undrawn_pixel=hps.init_cursor_on_undrawn_pixel) |
| |
| |
| |
|
|
| init_cursors_input = np.concatenate(init_cursors, axis=0) |
| image_size_input = np.stack(image_sizes, axis=0) |
|
|
| feed = { |
| train_model.init_cursor: init_cursors_input, |
| train_model.image_size: image_size_input, |
| train_model.init_width: [hps.min_width], |
|
|
| train_model.lr: curr_learning_rate, |
| train_model.stroke_num_loss_weight: curr_stroke_num_loss_weight, |
| train_model.early_pen_loss_start_idx: curr_early_pen_loss_start, |
| train_model.early_pen_loss_end_idx: curr_early_pen_loss_end, |
|
|
| train_model.last_step_num: float(step), |
| } |
| for layer_i in range(len(hps.perc_loss_layers)): |
| feed[train_model.perc_loss_mean_list[layer_i]] = mean_perc_relu_losses[layer_i] |
|
|
| for loop_i in range(train_model.total_loop): |
| if input_photos is not None: |
| input_photo_val = np.expand_dims(input_photos[loop_i], axis=-1) |
| else: |
| input_photo_val = np.expand_dims(target_sketches[loop_i], axis=-1) |
| feed[train_model.input_photo_list[loop_i]] = input_photo_val |
|
|
| (train_cost, raster_cost, perc_relu_costs_raw, perc_relu_costs_norm, |
| stroke_num_cost, early_pen_states_cost, |
| pos_outside_cost, win_size_outside_cost, |
| train_step) = sess.run([ |
| train_model.cost, train_model.raster_cost, |
| train_model.perc_relu_losses_raw, train_model.perc_relu_losses_norm, |
| train_model.stroke_num_cost, |
| train_model.early_pen_states_cost, |
| train_model.pos_outside_cost, train_model.win_size_outside_cost, |
| train_model.global_step |
| ], feed) |
|
|
| |
| for layer_i in range(len(hps.perc_loss_layers)): |
| perc_relu_cost_raw = perc_relu_costs_raw[layer_i] |
| mean_perc_relu_loss = mean_perc_relu_losses[layer_i] |
| mean_perc_relu_loss = (mean_perc_relu_loss * step + perc_relu_cost_raw) / float(step + 1) |
| mean_perc_relu_losses[layer_i] = mean_perc_relu_loss |
|
|
| _ = sess.run(train_model.train_op, feed) |
|
|
| if step % 20 == 0 and step > 0: |
| end = time.time() |
| time_taken = end - start |
|
|
| train_summary_map = { |
| 'Train_Cost': train_cost, |
| 'Train_raster_Cost': raster_cost, |
| 'Train_stroke_num_Cost': stroke_num_cost, |
| 'Train_early_pen_states_cost': early_pen_states_cost, |
| 'Train_pos_outside_Cost': pos_outside_cost, |
| 'Train_win_size_outside_Cost': win_size_outside_cost, |
| 'Learning_Rate': curr_learning_rate, |
| 'Time_Taken_Train': time_taken |
| } |
| for layer_i in range(len(hps.perc_loss_layers)): |
| layer_name = hps.perc_loss_layers[layer_i] |
| train_summary_map['Train_raster_Cost_' + layer_name] = perc_relu_costs_raw[layer_i] |
|
|
| create_summary(summary_writer, train_summary_map, train_step) |
|
|
| output_format = ('step: %d, lr: %.6f, ' |
| 'snw: %.3f, ' |
| 'cost: %.4f, ' |
| 'ras: %.4f, stroke_num: %.4f, early_pen: %.4f, ' |
| 'pos_outside: %.4f, win_outside: %.4f, ' |
| 'train_time_taken: %.1f') |
| output_values = (step, curr_learning_rate, |
| curr_stroke_num_loss_weight, |
| train_cost, |
| raster_cost, stroke_num_cost, early_pen_states_cost, |
| pos_outside_cost, win_size_outside_cost, |
| time_taken) |
| output_log = output_format % output_values |
| |
| tf.logging.info(output_log) |
| start = time.time() |
|
|
| if should_save_log_img(step) and step > 0: |
| save_log_images(sess, eval_sample_model, val_set, sub_log_img_root, step) |
|
|
| if step % hps.save_every == 0 and step > 0: |
| save_model(sess, saver, sub_snapshot_root, step) |
|
|
|
|
| def trainer(model_params): |
| np.set_printoptions(precision=8, edgeitems=6, linewidth=200, suppress=True) |
|
|
| print('Hyperparams:') |
| for key, val in six.iteritems(model_params.values()): |
| print('%s = %s' % (key, str(val))) |
| print('Loading data files.') |
| print('-' * 100) |
|
|
| datasets = load_dataset_training(FLAGS.dataset_dir, model_params) |
|
|
| sub_snapshot_root = os.path.join(FLAGS.snapshot_root, model_params.program_name) |
| sub_log_root = os.path.join(FLAGS.log_root, model_params.program_name) |
| sub_log_img_root = os.path.join(FLAGS.log_img_root, model_params.program_name) |
|
|
| train_set = datasets[0] |
| val_set = datasets[1] |
| train_model_params = datasets[2] |
| eval_sample_model_params = datasets[3] |
|
|
| eval_sample_model_params.loop_per_gpu = 1 |
| eval_sample_model_params.batch_size = len(eval_sample_model_params.gpus) * eval_sample_model_params.loop_per_gpu |
|
|
| reset_graph() |
| train_model = sketch_vector_model.VirtualSketchingModel(train_model_params) |
| eval_sample_model = sketch_vector_model.VirtualSketchingModel(eval_sample_model_params, reuse=True) |
|
|
| tfconfig = tf.ConfigProto(allow_soft_placement=True) |
| tfconfig.gpu_options.allow_growth = True |
| sess = tf.InteractiveSession(config=tfconfig) |
| sess.run(tf.global_variables_initializer()) |
|
|
| load_checkpoint(sess, FLAGS.neural_renderer_path, ras_only=True) |
| if train_model_params.raster_loss_base_type == 'perceptual': |
| load_checkpoint(sess, FLAGS.perceptual_model_root, perceptual_only=True) |
|
|
| |
| os.makedirs(sub_log_root, exist_ok=True) |
| os.makedirs(sub_log_img_root, exist_ok=True) |
| os.makedirs(sub_snapshot_root, exist_ok=True) |
| with tf.gfile.Open(os.path.join(sub_snapshot_root, 'model_config.json'), 'w') as f: |
| json.dump(train_model_params.values(), f, indent=True) |
|
|
| train(sess, train_model, eval_sample_model, train_set, val_set, |
| sub_log_root, sub_snapshot_root, sub_log_img_root) |
|
|
|
|
| def main(): |
| model_params = get_default_hparams_clean() |
| trainer(model_params) |
|
|
|
|
| if __name__ == '__main__': |
| main() |
|
|