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BatchDatsetReader.py
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BatchDatsetReader.py
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"""
Code ideas from https://github.com/Newmu/dcgan and tensorflow mnist dataset reader
"""
import numpy as np
import scipy.misc as misc
from PIL import Image
class BatchDatset:
files = []
images = []
annotations = []
image_options = {}
batch_offset = 0
epochs_completed = 0
def __init__(self, records_list, image_options={}):
"""
Intialize a generic file reader with batching for list of files
:param records_list: list of file records to read -
sample record: {'image': f, 'annotation': annotation_file, 'filename': filename}
:param image_options: A dictionary of options for modifying the output image
Available options:
resize = True/ False
resize_size = #size of output image - does bilinear resize
color=True/False
"""
print("Initializing Batch Dataset Reader...")
print(image_options)
self.files = records_list
self.image_options = image_options
self._read_images()
def _read_images(self):
self.__channels = True
self.images = np.array([self._transform(filename['image']) for filename in self.files])
self.__channels = False
self.annotations = np.array(
[np.expand_dims(self._transform(filename['annotation'], True), axis=3) for filename in self.files])
#self.annotations = [self._transform(filename['annotation'], True) for filename in self.files]
print (self.images.shape)
print (self.annotations.shape)
def _transform(self, filename, flag = False):
if flag:
image = np.array(Image.open(filename), dtype=np.uint8)
image[image == 255] = 21
else:
image = misc.imread(filename)
if self.__channels and len(image.shape) < 3: # make sure images are of shape(h,w,3)
image = np.array([image for i in range(3)])
if self.image_options.get("resize", False) and self.image_options["resize"]:
resize_size = int(self.image_options["resize_size"])
resize_image = misc.imresize(image,
[resize_size, resize_size], interp='nearest')
else:
resize_image = image
return np.array(resize_image)
def get_records(self):
return self.images, self.annotations
def reset_batch_offset(self, offset=0):
self.batch_offset = offset
def next_batch(self, batch_size):
start = self.batch_offset
self.batch_offset += batch_size
if self.batch_offset > self.images.shape[0]:
# Finished epoch
self.epochs_completed += 1
print("****************** Epochs completed: " + str(self.epochs_completed) + "******************")
# Shuffle the data
perm = np.arange(self.images.shape[0])
np.random.shuffle(perm)
self.images = self.images[perm]
self.annotations = self.annotations[perm]
# Start next epoch
start = 0
self.batch_offset = batch_size
end = self.batch_offset
return self.images[start:end], self.annotations[start:end]
def get_random_batch(self, batch_size):
indexes = np.random.randint(0, self.images.shape[0], size=[batch_size]).tolist()
print("========= image names =========")
for ind in indexes:
print(self.files[ind]['filename'])
return self.images[indexes], self.annotations[indexes]
def get_consecutive_batch(self, batch_size):
indexes = np.arange(0, batch_size).tolist()
print("========= image names =========")
for ind in indexes:
print(self.files[ind]['filename'])
return self.images[indexes], self.annotations[indexes]