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test.py
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test.py
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import tensorflow as tf
import keras
from keras.preprocessing.image import ImageDataGenerator,array_to_img
from keras.models import *
from keras.layers import *
from keras.layers import Activation, Dropout, Flatten, Dense
from keras import backend as K
import h5py
from model import *
import numpy as np
from keras.callbacks import ModelCheckpoint, LearningRateScheduler
def load():
#f = h5py.File('data_lfsd_224x224.h5','r')
f = h5py.File('test_nlpr_224x224.h5','r')
#f = h5py.File('test_nju500_224x224.h5','r')
f.keys()
X = f['x'][:]
#y = f['y'][:]
f.close()
return X
images = load()
image = images[:,:,:,0:3]
print image.shape
deep = images[:,:,:,3:4]
print deep.shape
# dimensions of our images.
img_width, img_height = 224,224
#mask_width, mask_height = 120, 120
################################################################################
#TN=keras.initializers.TruncatedNormal(mean=0.0, stddev=0.05, seed=None)
#model = get_model(img_width,img_height)
model = vgg16_deep_fuse_model(img_width,img_height)
#model = vgg161_model(img_width,img_height)
model.load_weights('checkpoints/vgg16_deep_fuse_512_no_prior.0.158.hdf5',by_name=False)
#model.load_weights('checkpoints/msra_96x96_weight.0.19.hdf5',by_name=False)
#model.load_weights('checkpoints/new_fine_msra_96x96_weight.0.165.hdf5',by_name=False)
#model.load_weights('checkpoints/new2_vgg_msra_192x192x2_weight.0.184.hdf5',by_name=False)
#img_pre=model.predict([image,deep],batch_size=2, verbose=1)
img_pre=model.predict([image,deep],batch_size=8, verbose=1)
for i in range(img_pre.shape[0]):
#if i>200:
#break
img = img_pre[i]
img = array_to_img(img)
img.save("results/%04d.png"%(1+i))