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evaluate.py
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evaluate.py
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import sys
sys.path.insert(0, 'src')
import transform, numpy as np, vgg, pdb, os
import tensorflow as tf
from utils import save_img, get_img, exists, list_files
from argparse import ArgumentParser
from collections import defaultdict
import time
import json
import subprocess
import numpy
from moviepy.video.io.VideoFileClip import VideoFileClip
import moviepy.video.io.ffmpeg_writer as ffmpeg_writer
import random
BATCH_SIZE = 4
DEVICE = '/gpu:0'
def ffwd_video(path_in, path_out, checkpoint_dir, device_t='/gpu:0', batch_size=4):
video_clip = VideoFileClip(path_in, audio=False)
video_writer = ffmpeg_writer.FFMPEG_VideoWriter(path_out, video_clip.size, video_clip.fps, codec="libx264",
preset="medium", bitrate="2000k",
audiofile=path_in, threads=None,
ffmpeg_params=None)
g = tf.Graph()
soft_config = tf.compat.v1.ConfigProto(allow_soft_placement=True)
soft_config.gpu_options.allow_growth = True
with g.as_default(), g.device(device_t), \
tf.compat.v1.Session(config=soft_config) as sess:
batch_shape = (batch_size, video_clip.size[1], video_clip.size[0], 3)
img_placeholder = tf.compat.v1.placeholder(tf.float32, shape=batch_shape,
name='img_placeholder')
preds = transform.net(img_placeholder)
saver = tf.compat.v1.train.Saver()
if os.path.isdir(checkpoint_dir):
ckpt = tf.train.get_checkpoint_state(checkpoint_dir)
if ckpt and ckpt.model_checkpoint_path:
saver.restore(sess, ckpt.model_checkpoint_path)
else:
raise Exception("No checkpoint found...")
else:
saver.restore(sess, checkpoint_dir)
X = np.zeros(batch_shape, dtype=np.float32)
def style_and_write(count):
for i in range(count, batch_size):
X[i] = X[count - 1] # Use last frame to fill X
_preds = sess.run(preds, feed_dict={img_placeholder: X})
for i in range(0, count):
video_writer.write_frame(np.clip(_preds[i], 0, 255).astype(np.uint8))
frame_count = 0 # The frame count that written to X
for frame in video_clip.iter_frames():
X[frame_count] = frame
frame_count += 1
if frame_count == batch_size:
style_and_write(frame_count)
frame_count = 0
if frame_count != 0:
style_and_write(frame_count)
video_writer.close()
# get img_shape
def ffwd(data_in, paths_out, checkpoint_dir, device_t='/gpu:0', batch_size=4):
assert len(paths_out) > 0
is_paths = type(data_in[0]) == str
if is_paths:
assert len(data_in) == len(paths_out)
img_shape = get_img(data_in[0]).shape
else:
assert data_in.size[0] == len(paths_out)
img_shape = X[0].shape
g = tf.Graph()
batch_size = min(len(paths_out), batch_size)
curr_num = 0
soft_config = tf.compat.v1.ConfigProto(allow_soft_placement=True)
soft_config.gpu_options.allow_growth = True
with g.as_default(), g.device(device_t), \
tf.compat.v1.Session(config=soft_config) as sess:
batch_shape = (batch_size,) + img_shape
img_placeholder = tf.compat.v1.placeholder(tf.float32, shape=batch_shape,
name='img_placeholder')
preds = transform.net(img_placeholder)
saver = tf.compat.v1.train.Saver()
if os.path.isdir(checkpoint_dir):
ckpt = tf.train.get_checkpoint_state(checkpoint_dir)
if ckpt and ckpt.model_checkpoint_path:
saver.restore(sess, ckpt.model_checkpoint_path)
else:
raise Exception("No checkpoint found...")
else:
saver.restore(sess, checkpoint_dir)
num_iters = int(len(paths_out)/batch_size)
for i in range(num_iters):
pos = i * batch_size
curr_batch_out = paths_out[pos:pos+batch_size]
if is_paths:
curr_batch_in = data_in[pos:pos+batch_size]
X = np.zeros(batch_shape, dtype=np.float32)
for j, path_in in enumerate(curr_batch_in):
img = get_img(path_in)
assert img.shape == img_shape, \
'Images have different dimensions. ' + \
'Resize images or use --allow-different-dimensions.'
X[j] = img
else:
X = data_in[pos:pos+batch_size]
_preds = sess.run(preds, feed_dict={img_placeholder:X})
for j, path_out in enumerate(curr_batch_out):
save_img(path_out, _preds[j])
remaining_in = data_in[num_iters*batch_size:]
remaining_out = paths_out[num_iters*batch_size:]
if len(remaining_in) > 0:
ffwd(remaining_in, remaining_out, checkpoint_dir,
device_t=device_t, batch_size=1)
def ffwd_to_img(in_path, out_path, checkpoint_dir, device='/cpu:0'):
paths_in, paths_out = [in_path], [out_path]
ffwd(paths_in, paths_out, checkpoint_dir, batch_size=1, device_t=device)
def ffwd_different_dimensions(in_path, out_path, checkpoint_dir,
device_t=DEVICE, batch_size=4):
in_path_of_shape = defaultdict(list)
out_path_of_shape = defaultdict(list)
for i in range(len(in_path)):
in_image = in_path[i]
out_image = out_path[i]
shape = "%dx%dx%d" % get_img(in_image).shape
in_path_of_shape[shape].append(in_image)
out_path_of_shape[shape].append(out_image)
for shape in in_path_of_shape:
print('Processing images of shape %s' % shape)
ffwd(in_path_of_shape[shape], out_path_of_shape[shape],
checkpoint_dir, device_t, batch_size)
def build_parser():
parser = ArgumentParser()
model = random.choice(('la_muse','rain_princess', 'scream', 'udnie', 'wave', 'wreck'))
parser.add_argument('--checkpoint', type=str,
dest='checkpoint_dir',
help='dir or .ckpt file to load checkpoint from',
metavar='CHECKPOINT', default='models/{model1}.ckpt'.format(model1=model))
parser.add_argument('--in-path', type=str,
dest='in_path',help='dir or file to transform',
metavar='IN_PATH',default=ins)
help_out = 'destination (dir or file) of transformed file or files'
parser.add_argument('--out-path', type=str,
dest='out_path', help=help_out, metavar='OUT_PATH', default=outs)
parser.add_argument('--device', type=str,
dest='device',help='device to perform compute on',
metavar='DEVICE', default=DEVICE)
parser.add_argument('--batch-size', type=int,
dest='batch_size',help='batch size for feedforwarding',
metavar='BATCH_SIZE', default=BATCH_SIZE)
parser.add_argument('--allow-different-dimensions', action='store_true',
dest='allow_different_dimensions',
help='allow different image dimensions', default=' ')
return parser
def check_opts(opts):
exists(opts.checkpoint_dir, 'Checkpoint not found!')
exists(opts.in_path, 'In path not found!')
if os.path.isdir(opts.out_path):
exists(opts.out_path, 'out dir not found!')
assert opts.batch_size > 0
def main():
parser = build_parser()
opts = parser.parse_args()
check_opts(opts)
if not os.path.isdir(opts.in_path):
if os.path.exists(opts.out_path) and os.path.isdir(opts.out_path):
out_path = \
os.path.join(opts.out_path,os.path.basename(opts.in_path))
else:
out_path = opts.out_path
ffwd_to_img(opts.in_path, out_path, opts.checkpoint_dir,
device=opts.device)
else:
files = list_files(opts.in_path)
full_in = [os.path.join(opts.in_path,x) for x in files]
full_out = [os.path.join(opts.out_path,x) for x in files]
if opts.allow_different_dimensions:
ffwd_different_dimensions(full_in, full_out, opts.checkpoint_dir,
device_t=opts.device, batch_size=opts.batch_size)
else:
ffwd(full_in, full_out, opts.checkpoint_dir, device_t=opts.device,
batch_size=opts.batch_size)
if __name__=='__main__':
main()